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Title:
BIOMARKERS
Document Type and Number:
WIPO Patent Application WO/2014/188202
Kind Code:
A1
Abstract:
in one aspect., the present Invention provides a method of determining cardiovascular disease (CVD) risk in a subject comprising (a) determining fatty acid composition of lipids In a sample obtained from the subject, wherein the lipids are selected from the group consisting of: (I) triacylgiycerols (TAGs); and cholesterol esters (CEs); and (b) comparing the fatty acid composition of the lipids in the sample from the subject to a control; wherein a decrease in mean fatty acid chain length in the lipids in the sample from the subject compared to the control indicates an. increased risk of CVD in the subject; and wherein the. CVD is associated with atherosclerotic plaque rupture or thrombosis., and/or the CVD Is an acute ischemic event selected from myocardial infarction, ischemic stroke or sudden cardiac death.

Inventors:
MAYR MANUEL (GB)
Application Number:
PCT/GB2014/051578
Publication Date:
November 27, 2014
Filing Date:
May 22, 2014
Export Citation:
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Assignee:
KING S COLLEGE LONDON (GB)
International Classes:
G01N33/68; G01N33/92
Domestic Patent References:
WO2011063470A12011-06-03
WO2006031963A22006-03-23
WO2012166798A22012-12-06
WO2012151039A22012-11-08
Foreign References:
EP1385003A12004-01-28
Other References:
GOTTO A M: "HIGH-DENSITY LIPOPROTEIN CHOLESTEROL AND TRIGLYCERIDES AS THERAPEUTIC TARGETS FOR PREVENTING AND TREATING CORONARY ARTERY DISEASE", AMERICAN HEART JOURNAL, MOSBY- YEAR BOOK INC, US, vol. 144, no. 6, SUPPL, 1 December 2002 (2002-12-01), pages S33 - S42, XP008027531, ISSN: 0002-8703, DOI: 10.1067/MHJ.2002.130301
M. J. CHAPMAN ET AL: "Triglyceride-rich lipoproteins and high-density lipoprotein cholesterol in patients at high risk of cardiovascular disease: evidence and guidance for management", EUROPEAN HEART JOURNAL, vol. 32, no. 11, 29 April 2011 (2011-04-29), pages 1345 - 1361, XP055133273, ISSN: 0195-668X, DOI: 10.1093/eurheartj/ehr112
CECILE CHAMBRIER ET AL: "Medium-and Long-Chain Triacylglycerols in Postoperative Patients: Structured Lipids Versus a Physical Mixture", NUTRITION, vol. 15, no. 4, 1 January 1999 (1999-01-01), pages 274 - 277, XP055116198, ISSN: 0899-9007
CAZITA P M ET AL: "Reversible flow of cholesteryl ester between high-density lipoproteins and triacylglycerol-rich particles is modulated by the fatty acid composition and concentration of triacylglycerols.", BRAZILIAN JOURNAL OF MEDICAL AND BIOLOGICAL RESEARCH = REVISTA BRASILEIRA DE PESQUISAS MÉDICAS E BIOLÓGICAS / SOCIEDADE BRASILEIRA DE BIOFÍSICA ... [ET AL.] DEC 2010, vol. 43, no. 12, December 2010 (2010-12-01), pages 1135 - 1142, XP002728203, ISSN: 1414-431X
STEGEMANN CHRISTIN ET AL: "Lipidomics profiling and risk of cardiovascular disease in the prospective population-based Bruneck study.", CIRCULATION 6 MAY 2014, vol. 129, no. 18, 6 May 2014 (2014-05-06), pages 1821 - 1831, XP002728153, ISSN: 1524-4539
Attorney, Agent or Firm:
DEMPSTER, Robert (120 HolbornLondon, EC1N 2DY, GB)
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Claims:
CLAIMS

1. A method of determining cardiovascular disease (CVD) risk in a subject, comprising:

(a) determining fatty acid composition of lipids in a sample obtained from the subject, wherein the lipids are selected from the group consisting of:

(i) triacylglycerols (TAGs); and

(ii) cholesterol esters (CEs); and

(b) comparing the fatty acid composition of the lipids in the sample from the subject to a control; wherein a decrease in mean fatty acid chain length in the lipids in the sample from the subject compared to the control indicates an increased risk of CVD in the subject; and wherein the CVD is associated with atherosclerotic plaque rupture or thrombosis, and/or the CVD is an acute ischemic event selected from myocardial infarction, ischemic stroke or sudden cardiac death.

2. A method according to claim 1, wherein the decrease in mean fatty acid chain length comprises an increase in shorter chain fatty acid residues and/or a decrease in longer chain fatty acid residues in the sample from the subject compared to the control.

3. A method according to claim 2, wherein the shorter chain fatty acid residues are comprised in TAGs comprising a total of 54 or fewer carbon atoms in the fatty acid residues of the molecule, and/or the longer chain fatty acid residues are comprised in TAGs comprising a total of 56 or more carbon atoms in the fatty acid residues of the molecule.

4. A method according to claim 2, wherein the shorter chain fatty acid residues are comprised in CEs comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule, and/or the longer chain fatty acid residues are comprised in CEs comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule.

5. A method according to any of claims 1 to 4, further comprising determining fatty acid composition of lipids in the sample obtained from the subject, wherein the lipids are selected from the group consisting of: (iii) phosphatidylethanolamines (PEs) and

(iv) phosphatidylcholines (PCs); wherein a decrease in mean fatty acid chain length in the lipids in the sample from the subject compared to the control indicates an increased risk of CVD in the subject.

6. A method according to claim 5, wherein the decrease in mean fatty acid chain length comprises an increase in PEs comprising a total of 38 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PEs comprising a total of 40 or more carbon atoms in the fatty acid portions of the molecule.

7. A method according to claim 5, wherein the decrease in mean fatty acid chain length comprises an increase in PCs comprising a total of 40 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PCs comprising a total of 42 or more carbon atoms in the fatty acid portions of the molecule.

8. A method according to any of claims 1 to 7, further comprising determining fatty acid composition of lysophosphatidylcholines (LPCs) in the sample obtained from the subject, wherein an increase in mean fatty acid chain length in the LPCs in the sample from the subject compared to the control indicates a decreased risk of CVD in the subject.

9. A method according to claim 8, wherein the increase in mean fatty acid chain length in the LPCs comprises an increase in LPCs comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule, and/or a decrease in LPCs comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule.

10. A method according to any of claims 1 to 9, wherein a decrease in the mean number of double bonds in the fatty acid portions of the lipids in the sample compared to the control indicates an increased risk of CVD in the subject.

11. A method according to claim 10, wherein the decrease in the mean number of double bonds in the fatty acid portions of the lipids comprises (i) an increase in saturated and/or mono-unsaturated fatty acid residues; and/or (ii) a decrease in fatty acid residues comprising two or more double bonds; in the sample from the subject compared to the control.

12. A method according to claim 10 or 11, comprising (i) an increase in TAGs comprising a total of 5 or fewer double bonds in the fatty acid residues of the molecule and/or (ii) a decrease in TAGs comprising a total of 6 or more double bonds in the fatty acid portions of the molecule.

13. A method according to claim 10 or 11, comprising (i) an increase in CEs comprising no double bonds or one double bond in the fatty acid residue of the molecule and/or (ii) a decrease in CEs comprising two or more double bonds in the fatty acid portion of the molecule.

14. A method of determining cardiovascular disease (CVD) risk in a subject, comprising:

(a) determining levels of lipids in a sample obtained from the subject, wherein the lipids com rise:

(i) a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5);

(ii) a cholesterol ester (CE) from CE(14:0) to CE(16:1); and

(iii) a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6); and

(b) comparing the levels of the lipid in the sample from the subject to control values; wherein increased levels of the lipids in the sample from the subject compared to the control values indicate an increased risk of CVD in the subject; and wherein the CVD is associated with atherosclerotic plaque rupture or thrombosis, and/or the CVD is an acute ischemic event selected from myocardial infarction, ischemic stroke or sudden cardiac death.

15. A method according to claim 14, wherein increased levels of the lipids in the sample from the subject compared to the control values are indicative of long-term CVD risk in the subject, the long-term CVD risk comprising the risk of an acute ischemic event occurring in the subject within a period of up to 10 years from when the sample was obtained.

16. A method according to claim 14 or claim 15, wherein the triacylglycerol is selected from the group consisting of TAG(50:1), TAG(50:2), TAG(50:3), TAG(52:2), TAG(52:3), TAG(52:4), TAG(52:5), TAG(54:2) and TAG(54:3).

17. A method according to claim 16, wherein the triacylglycerol is TAG(54:2).

18. A method according to any of claims 14 to 17, wherein the cholesterol ester is selected from the group consisting of CE(14:0), CE(16:0) and CE(16:1).

19. A method according to claim 18, wherein the cholesterol ester is CE(16:1).

20. A method according to any of claims 14 to 19, wherein the phosphatidylethanolamine is selected from the group consisting of PE(34:1), PE(34:2), PE(36:2), PE(36:3), PE(36:4), PE(36:5), PE(38:3), PE(38:4), PE(38:5) and PE(38:6).

21. A method according to claim 20, wherein the phosphatidylethanolamine is PE(36:5).

22. A method according to any of claims 14 to 21, wherein the method comprises determining a level of TAG(54:2), CE(16:1) and PE(36:5).

23. A method according to any of claims 14 to 22, further comprising determining a level of a phosphatidylcholine from PC 32:0 to PC 40:4 in the sample from the subject, and comparing the level to a control value, wherein an increased level of the phosphatidylcholine in the sample from the subject compared to the control value indicates an increased risk of CVD in the subject.

24. A method according to claim 23, wherein the phosphatidylcholine is selected from the group consisting of PC(32:0), PC(32:1), PC(34:1), PC(34:3), PC(36:1), PC(36:3), PC(38:2), PC(38:3), PC(38:4), PC(40:2), PC(40:3) and PC(40:4).

25. A method according to any of claims 14 to 24, wherein the sample comprises serum or plasma obtained from the subject.

26. A method according to any of claims 14 to 25, wherein the control values are based on mean levels of the lipids in a control population of subjects.

27. A method according to any of claims 14 to 26, wherein the lipid levels are determined by mass spectrometry.

28. A method for preventing or treating cardiovascular disease in a subject, comprising: (a) determining CVD risk in the subject by a method as defined in any of claims 1 to 27; and (b) administering an anti-CVD therapeutic and/or nutritional agent to the subject if the subject shows an increased risk of developing CVD.

29. A method according to claim 28, wherein the anti-CVD therapeutic agent is an H G CoA reductase inhibitor.

30. A method according to claim 28 or claim 29, further comprising (c) repeating step (a) after administration of the anti-CVD therapeutic and/or nutritional agent.

31. A method according to claim 30, wherein if the risk of developing CVD in the subject determined in step (c) is not significantly reduced compared to the risk determined in step (a), the method further comprises a step (d) comprising administering an alternative anti- CVD agent to the subject, the alternative anti-CVD agent differing from the anti-CVD therapeutic and/or nutritional agent administered in step (b).

32. A kit for determining CVD risk in a subject, the kit comprising one or more control samples comprising predetermined levels of (i) a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5), (ii) a cholesterol ester (CE) from CE(14:0) to CE(16:1) or (iii) a phosphatidylethanola mine (PE) from PE(34:1) to PE(38:6), and instructions for use of the kit for determining CVD risk in a subject by comparing the predetermined levels in the control sample to levels of lipids in a test sample obtained from the subject.

Description:
BIOMARKERS

FIELD OF THE INVENTION

The present invention relates in general to the field of biomarkers indicative of cardiovascular disease (CVD) risk. In particular, the present invention relates to a method of determining CVD risk by measuring the levels of such biomarkers, and to associated methods of treatments and kits.

BACKGROUND OF THE INVENTION

Cardiovascular disease (CVD) is a major cause of mortality and morbidity throughout the world, and represents one of the most significant challenges to healthcare systems particularly in industrialized countries. The term CVD covers numerous conditions that affect the heart and vasculature of the body, including coronary artery disease and stroke. A common mechanism underlying many types of CVD is atherosclerosis, the thickening of the walls of arterial blood vessels due to the deposition of lipid-containing plaques. Plasma lipids such as cholesterol and triglyceride are thought to play a key role in the development of atherosclerosis.

Since alterations in plasma lipid profiles may be linked to atherosclerosis, the measurement and management of plasma or serum lipid concentrations has been used in the prevention and treatment of patients thought to be at risk of CVD. Typically concentrations of triglycerides, total cholesterol, LDL-cholesterol or HDL-cholesterol in plasma may be used for CVD risk prediction. Current treatment strategies tend to focus on reducing LDL-cholesterol concentrations (mainly by statin treatment) or raising HDL-cholesterol (e.g. using CETP- inhibitors).

However, such measurements do not always correlate well with the risk of a subject experiencing an acute ischemic event such as a heart attack or stroke. Many patients who experience an acute myocardial infarction have cholesterol, triglyceride and/or LDL- cholesterol levels within a normal range. Moreover, there is a substantial residual risk of myocardial infarction in statin-treated patients despite a reduction in LDL-cholesterol levels. Recent studies have suggested that the type of LDL particle (i.e. its size and lipid content) may be a more relevant indicator of CVD risk than overall LDL cholesterol levels. Thus the existing strategies for managing CVD risk may fail to accurately identify all patients at high risk, potentially resulting in lack of preventative therapy and avoidable mortality, while others are wrongly classified as high risk and receive unnecessary treatment. More refined strategies for the prediction and management of CVD are therefore required.

In this context, there is a particular need for new biomarkers which can more accurately predict CVD risk. In particular, there is a need for a method of determining the risk of experiencing an acute ischemic event such as myocardial infarction or stroke. Such a method would enable the early, targeted initiation of prophylactic therapy to prevent the development of potentially fatal conditions, and would be of great benefit in reducing mortality and morbidity in patients suffering from CVD.

One potential reason for the lack of specificity of existing methods is that the plasma lipid measurements which are currently used fail to take into account the significantly varying roles of individual lipids in the development of atherosclerosis. Atherosclerotic plaques are complex molecular formations that contain numerous individual lipid species. Moreover, acute ischemic events such as myocardial infarction and stroke typically result from plaque destabilization and rupture, as well as thrombosis on surface of plaques, rather than the development of plaques per se.

There is therefore a need for biomarkers which are more indicative of the tendency of atherosclerotic plaques to rupture and/or to result in thrombosis, leading in arterial occlusion and potentially fatal events. Such biomarkers would be more accurate predictors of CVD risk, particularly in the long term, e.g. over a period of up to ten years. They would thus be highly useful for stratifying patients according to CVD risk and for improving intervention strategies based on therapeutic treatment, as well as nutritional and lifestyle changes which may benefit the patient over an extended period of time.

SUM MARY OF THE INVENTION

Accordingly, in one aspect the present invention provides a method of determining cardiovascular disease (CVD) risk in a subject, comprising (a) determining fatty acid composition of lipids in a sample obtained from the subject, wherein the lipids are selected from the group consisting of (i) triacylglycerols (TAGs); and (ii) cholesterol esters (CEs); and (b) comparing the fatty acid composition of the lipids in the sample from the subject to a control; wherein a decrease in mean fatty acid chain length in the lipids in the sample from the subject compared to the control indicates an increased risk of CVD in the subject; and wherein the CVD is associated with atherosclerotic plaque rupture or thrombosis, and/or the CVD is an acute ischemic event selected from myocardial infarction, ischemic stroke or sudden cardiac death.

In one embodiment, the decrease in mean fatty acid chain length comprises an increase in shorter chain fatty acid residues and/or a decrease in longer chain fatty acid residues in the sample from the subject compared to the control. For instance, in one embodiment the shorter chain fatty acid residues are comprised in TAGs comprising a total of 54 or fewer carbon atoms in the fatty acid residues of the molecule, and/or the longer chain fatty acid residues are comprised in TAGs comprising a total of 56 or more carbon atoms in the fatty acid residues of the molecule. In another embodiment, the shorter chain fatty acid residues are comprised in CEs comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule, and/or the longer chain fatty acid residues are comprised in CEs comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule.

In one embodiment, the method further comprises determining fatty acid composition of lipids in the sample obtained from the subject, wherein the lipids are selected from the group consisting of (iii) phosphatidylethanolamines (PEs) and (iv) phosphatidylcholines (PCs); wherein a decrease in mean fatty acid chain length in the lipids in the sample from the subject compared to the control indicates an increased risk of CVD in the subject.

In one embodiment, the decrease in mean fatty acid chain length comprises an increase in PEs comprising a total of 38 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PEs comprising a total of 40 or more carbon atoms in the fatty acid portions of the molecule.

In another embodiment, the decrease in mean fatty acid chain length comprises an increase in PCs comprising a total of 40 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PCs comprising a total of 42 or more carbon atoms in the fatty acid portions of the molecule. In one embodiment, the method further comprises determining fatty acid composition of lysophosphatidylcholines (LPCs) in the sample obtained from the subject, wherein an increase in mean fatty acid chain length in the LPCs in the sample from the subject compared to the control indicates a decreased risk of CVD in the subject.

In one embodiment, the increase in mean fatty acid chain length in the LPCs comprises an increase in LPCs comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule, and/or a decrease in LPCs comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule.

In one embodiment, a decrease in the mean number of double bonds in the fatty acid portions of the lipids in the sample compared to the control indicates a further increased risk of CVD in the subject. For instance, the decrease in the mean number of double bonds in the fatty acid portions of the lipids may comprise (i) an increase in saturated and/or mono-unsaturated fatty acid residues (i.e. fatty acid residues comprising no double bonds or only one double bond); and/or (ii) a decrease in fatty acid residues comprising two or more double bonds; in the sample from the subject compared to the control.

In one embodiment, the lipid is a TAG and the decrease in the mean number of double bonds comprises (i) an increase in TAGs comprising a total of 5 or fewer double bonds in the fatty acid residues of the molecule and/or (ii) a decrease in TAGs comprising a total of 6 or more double bonds in the fatty acid portions of the molecule.

In another embodiment, the lipid is a CE and the decrease in the mean number of double bonds comprises (i) an increase in CEs comprising no double bonds or one double bond in the fatty acid residue of the molecule and/or (ii) a decrease in CEs comprising two or more double bonds in the fatty acid portion of the molecule.

In another aspect, the present invention provides a method of determining cardiovascular disease (CVD) risk in a subject, comprising (a) determining levels of lipids in a sample obtained from the subject, wherein the lipids comprise (i) a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5); (ii) a cholesterol ester (CE) from CE(14:0) to CE(16:1); and (iii) a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6); and (b) comparing the levels of the lipids in the sample from the subject to control values; wherein increased levels of the lipids in the sample from the subject compared to the control values indicate an increased risk of CVD in the subject; and wherein the CVD is associated with atherosclerotic plaque rupture or thrombosis, and/or the CVD is an acute ischemic event selected from myocardial infarction, ischemic stroke or sudden cardiac death.

In one embodiment, an increased level of the lipid in the sample from the subject compared to the control value is indicative of long-term CVD risk in the subject, the long-term CVD risk comprising the risk of an acute ischemic event occurring in the subject within a period of up to 10 years from when the sample was obtained.

Preferably the triacylglycerol is selected from the group consisting of TAG(50:1), TAG(50:2), TAG(50:3), TAG(52:2), TAG(52:3), TAG(52:4), TAG(52:5), TAG(54:2) and TAG(54:3). More preferably the triacylglycerol is TAG(54:2).

In some embodiments, the cholesterol ester is selected from the group consisting of CE(14:0), CE(16:0) and CE(16:1). Preferably the cholesterol ester is CE(16:1).

In some embodiments the phosphatidylethanolamine is selected from the group consisting of PE(34:1), PE(34:2), PE(36:2), PE(36:3), PE(36:4), PE(36:5), PE(38:3), PE(38:4), PE(38:5) and PE(38:6). Preferably the phosphatidylethanolamine is PE(36:5).

In a preferred embodiment the method comprises determining a level of TAG(54:2), CE(16:1) and PE(36:5).

In some embodiments, the method further comprises determining a level of a phosphatidylcholine from PC 32:0 to PC 40:4 in the sample from the subject, and comparing the level to a control value, wherein an increased level of the phosphatidylcholine in the sample from the subject compared to the control value indicates an increased risk of CVD in the subject. Preferably the phosphatidylcholine is selected from the group consisting of PC(32:0), PC(32:1), PC(34:1), PC(34:3), PC(36:1), PC(36:3), PC(38:2), PC(38:3), PC(38:4), PC(40:2), PC(40:3) and PC(40:4).

In one embodiment the sample comprises serum or plasma obtained from the subject. In another embodiment, the control values are based on mean levels of the lipids in a control population of subjects. Preferably the lipid levels are determined by mass spectrometry.

In a further aspect, the present invention provides a method for preventing or treating cardiovascular disease in a subject, comprising (a) determining CVD risk in the subject by a method as defined above; and (b) administering an anti-CVD therapeutic and/or nutritional agent to the subject if the subject shows an increased risk of developing CVD.

Preferably the anti-CVD therapeutic agent is an HMG CoA reductase inhibitor, e.g. a statin.

In one embodiment, the method further comprises (c) repeating step (a) after administration of the anti-CVD therapeutic and/or nutritional agent. In another embodiment, if the risk of developing CVD in the subject determined in step (c) is not significantly reduced compared to the risk determined in step (a), the method further comprises a step (d) comprising administering an alternative anti-CVD agent to the subject, the alternative anti-CVD agent differing from the anti-CVD therapeutic and/or nutritional agent administered in step (b).

In a further aspect, the present invention provides a kit for determining CVD risk in a subject, the kit comprising one or more control samples comprising predetermined levels of (i) a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5), (ii) a cholesterol ester (CE) from CE(14:0) to CE(16:1) or (iii) a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6), and instructions for use of the kit for determining CVD risk in a subject by comparing the predetermined levels in the control sample to levels of lipids in a test sample obtained from the subject.

BRIEF DESCRIPTION OF THE DRAWINGS

Figure 1: Manhattan plot depicting significance levels (logarithmic y-axis) for the association of individual lipid species and lipid groups with incident CVD. The composite CVD endpoint considers myocardial infarction, ischemic stroke, and sudden cardiac death (Bruneck Study 2000-2010, 90 events). Individual lipids are visualized as dots and lipid groups as bars ("First PC" corresponds to the first principal component; "Sum" denotes the sum of all lipids within a group). Lipid classes are shown in separate panels. P values were derived from Cox proportional hazards models including the respective lipid species, age, sex, and statin therapy. Lipids maintaining significance after adjustment for multiple testing by the Benjamini-Hochberg procedure, controlling the false-discovery rate at the 0.05 level, are marked with black dots. CE, cholesteryl ester; LPC, lysophosphatidylcholine; LPE, lysophosphatidylethanolamine; PC, phosphatidylcholine; PE, phosphatidylethanolamine; PS, phosphatidylserine; SM, sphingomyelin; TAG, triacylglycerol.

Figure 2: Associations of 135 lipid species with incident CVD. The composite CVD endpoint considers myocardial infarction, ischemic stroke and sudden cardiac death (Bruneck Study 2000-2010, n=90 events). Individual lipid species are depicted by filled circles and arranged by lipid class in eight panels according to the number of total carbon atoms (x-axes) and number of double bonds (y-axes). Circle shade indicates the magnitude of hazard ratio (HR) and circle size corresponds to the significance level (see legend). HRs were calculated for a 1-SD unit higher lipid concentration and derived from Cox proportional hazards models, adjusting for age, sex, and statin therapy. Lipids with the same number of carbon atoms and double bonds are pulled apart vertically to increase their visibility. The distinguishing feature in this case is the presence of an alkyl ether linkage, signified in the formula as e.g. PC(0- 38:3). Lipids possessing such a linkage are pulled upwards, their alkyl-ether free counterparts downwards. CE, cholesteryl ester; LPC, lysophosphatidylcholine; LPE, lysophosphatidylethanolamine; PC, phosphatidylcholine; PE, phosphatidylethanolamine; PS, phosphatidylserine; SM, sphingomyelin; TAG, triacylglycerol.

Figure 3: Identification of the best-fitting lipid species according to LI- regularized Cox regression analysis. The graph shows the LASSO (Least absolute shrinkage and selection operator method) regularization path and visualizes regression coefficients of the individual lipid species (y-axis) with varying degree of regularization (x-axis). Coefficients were derived from an Ll-regularized Cox proportional hazards model with age, sex, and statin medication treated as unpenalized and the 135 individual lipid species as penalized explanatory variables. The optimal lambda was determined by ten-fold partial likelihood cross- validation. Estimation of optimal lambda was repeated one thousand times and the percentiles (0th, 1st, 2nd, 3rd, 4th, ... , 99th, 100th) of the resulting distribution of lambdas are shown as dashed grey vertical lines. The mean optimal lambda is shown as a solid black vertical line. Variables selected are summarized in Table 1. Figure 4: Multivariable effect estimates and confidence intervals for the three lipid species most consistently associated with incident CVD. The composite CVD endpoint considers myocardial infarction, stroke and sudden cardiac death (Bruneck Study, n=90). HRs (95%CI) were derived from standard Cox regression models with progressive adjustment and calculated for a 1-SD higher lipid levels. HR, hazard ratio; CI, confidence interval; TAG, triacylglycerol; CE, cholesteryl ester; PE, phosphatidylethanolamine; HDL-C, high-density lipoprotein cholesterol; RR(sy), systolic blood pressure; DM, diabetes mellitus.

Figure 5: Lipid network analysis. The lipid correlation network, thresholded at an adjacency of 0.02 (akin weighted correlation of 0.8), is shown. The shades indicate the modules detected by Topological Overlap Measure (TOM). While many of the lipid species within the same class belong to the same module, there are modules, which contain more than one lipid class. The direct neighbors of three lipid species - CE(16:1), TAG(54:2) and PE(36:5) - are shown in the boxed area. Lipid species associated with CVD in the Bruneck study (after multiple testing corrections) are depicted as shaded nodes. Lipid molecules directly connected to either CE(16:1) and TAG(54:2) or PE(36:5) and TAG(54:2) are highlighted by shaded edges.

Figure 6: Lipidomics to improve CVD risk discrimination and classification into 10-year risk categories. Reclassification metrics of 10-year CVD risk were calculated across risk categories <5%, 5-10%, 10-20% and >20%. Conventional risk factors are the classic Framingham Risk Score components age, sex, diabetes, smoking status, systolic blood pressure, total cholesterol and HDL cholesterol. The number of cases and non-cases that contributed to the calculation of 10-year risk NRIs was: 90 and 498 for the analysis "overall cohort"; and 74 and 483 for the analysis that excluded participants with CVD at baseline. HDL-C, high-density lipoprotein cholesterol; T-C, total cholesterol.

Figure 7: Association of fatty acid chain length to CVD risk for different lipid classes. Circle shade indicates the magnitude of hazard ratio (HR) and circle size corresponds to the significance level (see legend). HRs are aggregated by carbon number for each lipid class, i.e. species comprising alkyl ether linkages are not separately analysed for each carbon number. Figure 8: Association of fatty acid chain length to CVD risk for different lipid classes, distinguished based on presence of alkyl ether linkages. Circle shade indicates the magnitude of hazard ratio (H ) and circle size corresponds to the significance level (see legend). HRs are aggregated by carbon number for each lipid class, and then further classified according to whether an alkyl ether linkage (0) is present.

Figure 9: Replication in the TwinsUK Cohort. A) FA composition of lipid species associated with CVD in the Bruneck Study from the CE, SM and TAG classes, which accounted for more than 80% of plasma lipids and thus dominated the FA pool in circulation. This figure depicts the most abundant FA in the respective groups considering the quantity of the individual lipid species. FA composition in TAGs was estimated by a simulation analysis considering all combinations of long chain FA that resulted in the correct carbon and double bond number. B) Associations of plasma FA with CVD in the TwinsUK Cohort (n=1453, 45 cases) with adjustment for age and sex only (left panel) or multivariate adjustment for age, sex, total cholesterol, HDL cholesterol, body-mass index, current smoking (ascertained by cotidine levels), and diabetes (right panel). The key selection of FA in the Bruneck Study is highlighted. Bold numbers are the lipid species with the highest concentration.

DETAILED DESCRIPTION OF TH E INVENTION

Determining cardiovascular disease risk

The present invention relates in one aspect to a method of determining cardiovascular disease (CVD) risk in a subject. For instance, the method may be used to predict the likelihood of CVD developing in the subject in the future, or to assess the current extent of CVD progression in the subject. The method may also be used to assess the efficacy of an anti-CVD intervention, for instance to monitor the effectiveness of a therapeutic treatment for CVD. Preferably the method is used to predict the long-term risk of CVD, for instance in a period of up to 10 years from when the sample was obtained.

The CVD is preferably associated with atherosclerosis. The CVD may be, for example, coronary artery disease, angina pectoris, congestive heart failure, hypertension, cerebrovascular disease, stroke, myocardial infarction, deep vein thrombosis, peripheral artery disease, cardiomyopathy, cardiac arrhythmia, aortic stenosis or aneurysm. In a more preferred embodiment, the CVD is associated with thrombosis resulting from or rupture of atherosclerotic plaques. For instance, the method is used to predict the risk of an acute ischemic event occurring in the subject. The acute ischemic event may be, for example, an acute myocardial infarction or an ischemic stroke, or sudden cardiac death. The method may be used to indicate long-term risk of the occurrence of such ischemic events. For instance, in one embodiment the method provides an indication of the risk of an acute ischemic event occurring within a period of up to 10 years (e.g. 6 months to 10 years, 1 year to 10 years, or 5 years to 10 years after the date of the sample).

Subject

The present method may be carried out on any subject, including non-human or human subjects. In one embodiment, the subject is a mammal, preferably a human. The subject may alternatively be a non-human mammal, including for example a dog, cat, horse, cow, sheep or pig.

In one embodiment, the subject may be suspected of suffering from CVD, or may already be known to have developed CVD. For instance, the subject may be known to be suffering from a condition which may be associated with elevated CVD risk, such as diabetes mellitus. In such embodiments, the method may be performed to assess the extent or severity of CVD and/or to monitor the effectiveness of therapy. Alternatively, the subject may be otherwise healthy and have no known history of or predetermined susceptibility to CVD. For instance, normal individuals may be screened for CVD risk using the method as part of a routine check-up or examination.

The subject may be of any age, including children, young adults and elderly individuals. Preferably the subject is in the age range 30 to 100 years, more preferably 40 to 80 years. The subject may be male or female.

Sample

The present method comprises a step of determining the level of one or more lipids in a sample obtained from a subject. Thus the present method is typically practiced outside of the human or animal body, e.g. on a body fluid sample that was previously obtained from the subject to be tested. Preferably the sample is derived from blood, i.e. the sample comprises whole blood or a blood fraction. Most preferably the sample comprises blood plasma or serum.

Techniques for collecting blood samples and separating blood fractions are well known in the art. For instance, vena blood samples can be collected from patients using a needle and deposited into plastic tubes. The collection tubes may, for example, contain spray-coated silica and a polymer gel for serum separation. Serum can be separated by centrifugation at 1300 RCF for 10 min at room temperature and stored in small plastic tubes at -80°C.

Determining lipid levels in the sample

The levels of individual lipid species in the sample may be determined by any suitable method. For example, nuclear magnetic resonance spectroscopy ^H-NMR) or mass spectroscopy (MS) may be used. Other spectroscopic methods, chromatographic methods, labeling techniques, or quantitative chemical methods may be used in alternative embodiments. Most preferably, the lipid levels in the sample are determined by mass spectroscopy. Typically the lipid level in the sample and the reference value are determined using the same analytical method.

Lipids

The present method involves determining the levels of one or more lipids selected from triacylglycerols (TAGs), cholesterol esters (CEs) and phosphatidylethanolamines (PEs). In some embodiments, the level of one or more phosphatidylcholines (PCs) may be determined in the sample. The present inventors have surprising found that compared to measurements of overall TAG, CE, PE or PC levels, specific individual lipid species within these groups are much more accurate predictors of CVD risk, especially the long-term risk of experiencing an acute ischemic event.

Triacylglycerols

In one embodiment, a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5) is determined. In the nomenclature (X:Y), X refers to the total number of carbon atoms in the fatty acid portions of the molecule, and Y defines the total number of double bonds in the fatty acid portions of the molecule. Thus a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5) refers to a TAG comprising 50 to 54 carbon atoms in the fatty acid chains and 1 to 5 double bonds in the fatty acid chains. The present method involves determining the level of one or more such individual species of TAG.

In a preferred embodiment, the TAG comprises 50, 52 or 54 carbon atoms in the fatty acid chains. In this embodiment, the TAG preferably comprises a total of 2 double bonds in the fatty acid portions of the molecule. For instance, a triacylglycerol from TAG(50:2) to TAG(54:2) may be determined.

In another embodiment, the TAG comprises 50 carbon atoms in the fatty acid chains, and preferably 1 to 3 double bonds in the fatty acid portions. For instance, levels of a triacylglycerol from TAG(50:1) to TAG(50:3) may be determined.

In another embodiment, the TAG comprises 52 carbon atoms in the fatty acid chains, and preferably 2 to 5 double bonds in the fatty acid portions. For instance, levels of a triacylglycerol from TAG(52:2) to TAG(52:5) may be determined.

In another embodiment, the TAG comprises 54 carbon atoms in the fatty acid chains, and preferably 2 to 4 double bonds in the fatty acid portions. For instance, levels of a triacylglycerol from TAG(54:2) to TAG(54:4) may be determined.

Preferred individual triacylglycerol species include TAG(50:1), TAG(50:2), TAG(50:3), TAG(52:2), TAG(52:3), TAG(52:4), TAG(52:5), TAG(54:2) and TAG(54:3). More preferably the triacylglycerol is selected from TAG(50:1), TAG(50:2), TAG(52:2) and TAG(54:2). Most preferably the triacylglycerol is TAG(54:2).

Cholesterol esters

In one embodiment, a cholesterol ester (CE) from CE(14:0) to CE(16:1) is determined (using the nomenclature (X:Y) as defined above). Thus a cholesterol ester (CE) from CE(14:0) to CE(16:1) refers to a CE comprising 14 to 16 carbon atoms in the fatty acid chain and 0 or 1 double bonds in the fatty acid chain. The present method involves determining the level of one or more such individual species of CE. In a preferred embodiment, the CE comprises 14 carbon atoms in the fatty acid portion of the molecule, and preferably 1 double bond in the fatty acid portion. For instance, levels of CE(14:0) may be determined.

In another embodiment, the CE comprises 16 carbon atoms in the fatty acid chain, and preferably 0 or 1 double bond in the fatty acid portion. For instance, levels of CE(16:0) or CE(16:1) may be determined.

Thus the most preferred individual cholesterol ester species include CE(14:0), CE(16:0) and CE(16:1). Most preferably the cholesterol ester is CE(16:1).

Phosphatidylethanolamines

In one embodiment, a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6) is determined (using the nomenclature (X:Y) as defined above). Thus a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6) refers to a PE comprising 34 to 38 carbon atoms in the fatty acid chains and 1 to 6 double bonds in the fatty acid chains. The present method involves determining the level of one or more such individual species of PE.

In one embodiment, the PE comprises 34 carbon atoms in the fatty acid chains, and preferably 1 or 2 double bonds in the fatty acid portions. For instance, levels of PE(34:1) or PE(34:2) may be determined.

In another embodiment, the PE comprises 36 carbon atoms in the fatty acid chains, and preferably 2 to 5 double bonds in the fatty acid portions. For instance, levels of a phosphatidylethanolamine from PE(36:2) to PE(36:5) may be determined.

In another embodiment, the PE comprises 38 carbon atoms in the fatty acid chains, and preferably 3 to 6 double bonds in the fatty acid portions. For instance, levels of a phosphatidylethanolamine from PE(38:3) to PE(38:6) may be determined.

Preferred individual phosphatidylethanolamine species include PE(34:1), PE(34:2), PE(36:2), PE(36:3), PE(36:4), PE(36:5), PE(38:3), PE(38:4), PE(38:5) and PE(38:6). More preferably the phosphatidylethanolamine is PE(36:5).

Phosphatidylcholines In one embodiment, a phosphatidylcholine (PC) from PC(32:0) to PC(40:4) is determined (using the nomenclature (X:Y) as defined above). Thus a phosphatidylcholine (PC) from PC(32:0) to PC(40:4) refers to a PC comprising 32 to 40 carbon atoms in the fatty acid chains and 0 to 4 double bonds in the fatty acid chains. The present method involves determining the level of one or more such individual species of PC.

In one embodiment, the PC comprises 32 carbon atoms in the fatty acid chains, and preferably 0 or 1 double bond in the fatty acid portions. For instance, levels of PC(32:0) or PC(32:1) may be determined.

In another embodiment, the PC comprises 34 carbon atoms in the fatty acid chains, and preferably 1 to 3 double bonds in the fatty acid portions. For instance, levels of a phosphatidylcholine from PC(34:1) to PC(34:3) may be determined.

In another embodiment, the PC comprises 36 carbon atoms in the fatty acid chains, and preferably 1 to 3 double bonds in the fatty acid portions. For instance, levels of a phosphatidylcholine from PC(36:1) to PC(36:3) may be determined.

In another embodiment, the PC comprises 38 carbon atoms in the fatty acid chains, and preferably 2 to 4 double bonds in the fatty acid portions. For instance, levels of a phosphatidylcholine from PC(38:2) to PC(38:4) may be determined.

In another embodiment, the PC comprises 40 carbon atoms in the fatty acid chains, and preferably 2 to 4 double bonds in the fatty acid portions. For instance, levels of a phosphatidylcholine from PC(40:2) to PC(40:4) may be determined.

Preferred individual phosphatidylcholine species include PC(32:0), PC(32:1), PC(34:1), PC(34:3), PC(36:1), PC(36:3), PC(38:2), PC(38:3), PC(38:4), PC(40:2), PC(40:3) and PC(40:4).

Combinations of biomarkers

In general the method of the present invention may involve determining the level of any combination of two or more of the above lipid species in the sample. For instance, the method may comprise determining levels of 2, 3, 4, 5 or 10 or more lipid species as described above. The following combinations of lipid species are particularly preferred. In one embodiment, the method comprises determining levels of a triacylglycerol from TAG(50:1) to TAG(54:5) and a cholesterol ester from CE(14:0) to CE(16:1), and optionally a phosphatidylcholine from PC 32:0 to PC 40:4.

In another embodiment, the method comprises determining levels of a triacylglycerol from TAG(50:1) to TAG(54:5) and a phosphatidylethanolamine from PE(34:1) to PE(3S:6), and optionally a phosphatidylcholine from PC 32:0 to PC 40:4.

In one embodiment, the method comprises determining levels of a cholesterol ester from CE(14:0) to CE(16:1) and a phosphatidylethanolamine from PE(34:1) to PE(38:6), and optionally a phosphatidylcholine from PC 32:0 to PC 40:4.

In one embodiment, the method comprises determining levels of a triacylglycerol from TAG(50:1) to TAG(54:5), a cholesterol ester from CE(14:0) to CE(16:1) and a phosphatidylethanolamine from PE(34:1) to PE(38:6), and optionally a phosphatidylcholine from PC 32:0 to PC 40:4.

In a particularly preferred embodiment, the method comprises determining a level of TAG(54:2), CE(16:1) and PE(36:5), and optionally a phosphatidylcholine from PC 32:0 to PC 40:4.

Comparison to control

The present method further comprises a step of comparing the level of the individual lipid species in the test sample to one or more control values. Typically a specific control value for each individual lipid species determined in the method is used. The control value may be a normal level of that lipid species, e.g. a level of the lipid in the same sample type (e.g. serum or plasma) in a subject who is not suffering from CVD. The control value may, for example, be based on a mean or median level of the lipid species in a control population of subjects, e.g. 5, 10, 100, 1000 or more healthy subjects (who may either be age- and/or gender-matched or unmatched to the test subject) who show no symptoms of CVD. Preferably the level of the lipid in the test sample is increased by at least 1%, 5%, at least 10%, at least 20%, at least 30%, or at least 50% compared to the control value. The control value may be determined using corresponding methods to the determination of lipid levels in the test sample, e.g. using one or more samples taken from normal (healthy) subjects. For instance, in some embodiments lipid levels in control samples may be determined in parallel assays to the test samples. Alternatively, in some embodiments control values for the levels of individual lipid species in a particular sample type (e.g. serum or plasma) may already be available, for instance from published studies. Thus in some embodiments, the control value may have been previously determined, or may be calculated or extrapolated, without having to perform a corresponding determination on a control sample with respect to each test sample obtained.

Association of lipid levels to CVD risk

In general, an increased level of any of the above lipid species in the test sample compared to the control value is indicative of an increased risk of CVD, particularly an increased long- term risk of atherosclerotic plaque rupture and/or associated thrombosis, which may result in an acute ischemic event such as myocardial infarction or stroke. The overall risk of CVD may be assessed by determining a number of different lipid biomarkers as discussed above, and combining the results. For instance, subjects may be stratified into low, medium, high and/or very high risk groups according to the number of individual lipid species which are elevated relative to control and/or the degree to which they are elevated.

Methods of treatment

In one aspect, the present invention provides a method for preventing or treating cardiovascular disease in a subject. In particular, the method may be used to prevent the occurrence of acute ischemic events such as myocardial infarction and ischemic stroke, for instance by reducing the likelihood of atherosclerotic plaque rupture or associated thrombosis. By preventing or treating CVD, it is intended to encompass reducing the risk of CVD, reducing the severity of CVD and/or reducing mortality resulting from CVD.

The method for preventing or treating CVD typically comprises a first step of determining CVD risk in the subject by a method as described above. Following the determination of CVD risk, an appropriate intervention (e.g. prophylactic and/or therapeutic treatment) strategy may be selected for the subject, based on assessed risk level. Typically if the subject shows a low level of CVD risk, no intervention may be necessary. For instance, if the subject's risk level is at or below a threshold level, no pharmaceutical or nutritional therapy may be required. The threshold level may correspond, for example, to a normal or mean level of risk in the general population.

Alternatively, if the subject shows an elevated risk of CVD, e.g. an elevated risk of experiencing an acute ischemic event such as myocardial infarction or stroke, the method may comprise a further step of administering an anti-CVD therapy to the subject. The anti- CVD therapy may comprise any prophylactic, therapeutic, pharmaceutical or nutritional agent which is effective in reducing CVD risk. Preferably, the therapy comprises an anti- atherosclerotic therapy (i.e. a therapy which reduces of prevents the development of atherosclerosis), an anticoagulant (e.g. a coumarin or vitamin K antagonist such as warfarin, low-dose aspirin or heparin) or a thrombolytic therapy (e.g. streptokinase or tissue plasminogen activator).

In a preferred embodiment, the anti-CVD therapy comprises an agent which is capable of reducing levels of one or more of the lipid species which are increased in the subject. For instance, the agent may be a statin or another HMG CoA reductase inhibitor. Suitable statins include atorvastatin, cerivastatin, fluvastatin, fluvastatin XL, lovastatin, pitavastatin, pravastatin, rosuvastatin or simvastatin. In another preferred embodiment, the drug is niacin (nicotinic acid); a cholesterol absorption inhibitor, such as ezetimibe or SCH-48461; a cholesteryl ester transfer protein (CETP) inhibitor, such as torcetrapib, anacetrapib or JTT- 705; a bile acids sequestrant, such as colesevelam, cholestyramine and colestipol; or a fibrate, such as fenofibrate, gemfibrozil, clofibrate, and bezafibrate. In another embodiment, the anti-CVD therapy comprises a phytosterol or phytostanol.

An advantage of the present invention is that an anti-CVD therapy can be selected which is effective in reducing levels of the specific lipid species associated with CVD risk which are elevated in an individual subject. Typically, different anti-CVD therapies (e.g. individual statins) may have differing effects on the profiles of individual lipid species. For instance, some statins may be more effective at reducing levels of CE(14:0) to CE(16:1), whereas other statins may be more effective at reducing levels of cholesterol esters comprising longer chain and/or more unsaturated fatty acid residues. Moreover, individual patients may respond better (in terms of a reduction of CVD-risk associated lipid species) to different statins due to various factors such as genetic variability and lifestyle.

Thus in embodiments of the present invention, anti-CVD therapy may be personalized to the subject, such that CVD-risk associated lipid levels are monitored in conjunction with a specific therapy targeted to reducing those individual lipid species in the subject. For instance, the method may comprise a further step of (re-)determining lipid levels in the subject (i.e. after the initial administration of an anti-CVD therapy), in order to assess the effectiveness of the therapy in reducing CVD risk. If the subject shows a reduction in CVD risk after the initial treatment phase, the therapy may be continued to maintain the CVD risk at reduced levels.

However, if the subject fails to respond adequately to the initial treatment (e.g. shows no significant reduction in specific lipid levels and/or CVD risk), the subject may be switched to an alternative treatment. For example, if a subject responds poorly to an initial statin-based treatment regime, an alternative statin may be administered to the subject. This process may be repeated, including selecting different dosages of individual agents, until a reduction in CVD-risk associated lipid levels is achieved. Typically, the subject may be maintained on a particular therapy (e.g. a pharmaceutical agent such as a statin) for at least 1 week, 2 weeks, 1 month or 3 months before the determination of lipid levels is repeated. The method may also be used to monitor the effects of lifestyle changes (such as changes in diet, exercise levels, smoking, alcohol consumption and so on) on CVD-risk associated lipid levels, and to identify an combination of factors which is effective in reducing the risk of disease.

In a further aspect, the present invention provides an anti-CVD agent as defined above, for use in preventing or treating CVD in a subject, wherein CVD risk in the subject has been determined by a method as described above and wherein the subject shows an increased risk of CVD.

In a further aspect, the present invention provides use of an anti-CVD agent as defined above, for the manufacture of a medicament for preventing or treating CVD in a subject, wherein CVD risk in the subject has been determined by a method as described above and wherein the subject shows an increased risk of CVD. Kits

In a further aspect, the present invention provides a kit for determining CVD risk in a subject. The kit may, for example, comprise one or more reagents, standards and/or control samples for use in the methods described herein. For instance, in one embodiment the kit comprises one or more control samples comprising predetermined levels of (i) a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5), (ii) a cholesterol ester (CE) from CE(14:0) to CE(16:1) or (iii) a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6), and instructions for use of the kit for determining CVD risk in a subject by comparing the predetermined levels in the control sample to levels of lipids in a sample obtained from the subject. The kit may comprise control samples suitable for use with any combination of preferred lipid species defined above.

Further methods for determining CVD risk based on fatty acid chain length

As demonstrated in the Examples below, in subjects with elevated CVD risk there is a general shift from longer to shorter chain fatty acid residues in certain plasma lipid species, particularly TAGs and CEs and to a lesser extent PEs and PCs, compared to normal control subjects (see Fig.s 7 and 8). Accordingly, in one embodiment of the present invention, CVD risk may be determined by analysing the chain length of such lipid classes.

For instance, the fatty acid composition of lipids from the test sample may be compared with that of a control sample, and the mean fatty acid chain length determined. Determining the mean fatty acid chain length may include determining the total number of carbon atoms in fatty acid residues in the relevant lipid species. In general, a decrease in mean fatty acid chain length (i.e. a shift from longer chain fatty acid residues to shorter chain fatty acid residues) in lipids in the test sample compared to the control is indicative of increase CVD risk. In some cases, the ratio of longer to shorter chain fatty acid residues in the relevant lipid species may be determined.

In particular embodiments the lipids are triacylglycerols (TAGs) or cholesterol esters (CEs). In the case of TAGs, species comprising a total of 54 or fewer carbon atoms in the fatty acid residues of the molecule (i.e. TAGs comprising shorter chain fatty acid residues) are typically increased in subjects having increased CVD risk, and/or species comprising a total of 56 or more carbon atoms in the fatty acid residues of the molecule (i.e. TAGs comprising longer chain fatty acid residues) are typically decreased in subjects having increased CVD risk. In the case of CEs, species comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule may be increased, and/or species comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule may be decreased in subjects with elevated CVD risk compared to the control.

In the case of phosphatidylethanolamines (PEs), a decrease in mean fatty acid chain length (e.g. an increase in PEs comprising a total of 38 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PEs comprising a total of 40 or more carbon atoms in the fatty acid portions of the molecule) is indicative of increased CVD risk.

Where phosphatidylcholines (PCs) are analysed, a decrease in mean fatty acid chain length (e.g. an increase in PCs comprising a total of 40 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PCs comprising a total of 42 or more carbon atoms in the fatty acid portions of the molecule) is indicative of increased CVD risk.

In the case of !ysophosphatidylcholines (LPCs) a shift from shorter to longer chain fatty acid chain lengths is associated with decreased CVD risk. Thus in embodiments where LPCs are analysed, an increase in mean fatty acid chain length in the LPCs in the sample from the subject compared to the control indicates a decreased risk of CVD in the subject. For instance, an increase in LPCs comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule, and/or a decrease in LPCs comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule, may be indicative of decreased CVD risk.

In general, the method for determining CVD risk based on fatty acid chain length may be performed in combination with the methods described above involving the determination of the levels of particular lipid species. For instance, each method may be performed using similar techniques (e.g. mass spectrometry), using similar samples and controls. Moreover, the methods are both predictive of the risk of the same conditions (e.g. myocardial infarction and/or ischemic stroke) and may be used in combination with the same methods for preventing or treating disease. Whether the method involves detecting elevated levels of particular lipid species or detecting a shift from longer chain to shorter chain fatty acid residues, each of the methods described herein relies on changes in fatty acid composition in particular plasma lipid species which are associated with increased CVD risk.

The invention will now be described by way of example only with respect to the following specific embodiments.

EXAMPLES Example 1

There is a clear need for new biomarkers capable of identifying patients at risk of plaque destabilization and rupture 1 . Among various pathological features of atherosclerotic plaques that define their propensity to rupture, the content and composition of plaque lipids deserve special consideration 2 . Altered lipid metabolism and dyslipidemia in the context of inflammation and oxidative stress are driving forces in the transition of stable to unstable plaques. We have recently performed comparative lipidomics profiling of carotid endarterectomy specimens from symptomatic versus asymptomatic patients 3 and highlighted the existence of a characteristic lipid signature within unstable human plaques. The present study further investigates molecular lipid profiles in the circulation.

While nuclear magnetic resonance spectroscopy is fast and cheap 4 , its possibilities to resolve individual lipid species are limited due to peak overlap 5 . In contrast, shotgun lipidomics using mass spectrometry (MS) can screen and simultaneously analyze hundreds of lipid species in non-separated lipid extracts 5 . Thus, MS is the preferred method for in- depth studies on lipid-related pathomechanisms in the manifestation of cardiovascular disease (CVD). Recent advances in MS allow the application of this technology to epidemiological cohorts 7,8 . In this study, we performed lipidomics profiling in the prospective population-based Bruneck Study and analyzed the association of 135 distinct lipid species with CVD risk over a 10-year observation period.

METHODS

Study Subjects and Examination The Bruneck Study is a prospective, population-based survey on the epidemiology and pathogenesis of atherosclerosis and cardiovascular disease 9 12 . At the 1990 baseline evaluation, the study population comprised an age- and sex- stratified random sample of all inhabitants of Bruneck (125 men and 125 women from each of the fifth through eighth decades of age, all Caucasian). In 2000, 702 subjects were still alive and participated in the second quinquennial follow-up. Plasma samples for lipidomics analyses were available for 685 individuals (97.6%). During the follow-up between 2000 and 2010, detailed information about fatal and nonfatal new-onset CVD was carefully collected (follow-up, 100% complete). The study protocol was approved by the ethics committees of Bolzano and Verona, and conformed to the Declaration of Helsinki, and all study subjects gave their written informed consent. Risk factors were assessed by means of validated standard procedures as described previously 9"13 .

The composite CVD endpoint included incident fatal and non-fatal myocardial infarction, ischemic stroke, as well as sudden cardiac death. Presence of myocardial infarction was assessed by World Health Organization criteria 14 while ischemic stroke was classified according to the criteria of the National Survey of Stroke 15 . Ascertainment of events did not rely on hospital discharge codes or the patient's self-report but on a careful review of medical records provided by the general practitioners, death certificates and Bruneck Hospital files. A major advantage of the Bruneck Study is that virtually all inhabitants of Bruneck are referred to the local hospital, which closely works together with the general practitioners. This allows retrieval of full medical information.

Laboratory Methods

As part of the 2000 follow-up, citrate plasma samples were drawn after an overnight fast and 12 hours of abstinence from smoking. Plasma samples were aliquoted and immediately stored at -80°C. Total cholesterol, high-density lipoprotein (HDL) cholesterol and triglyceride content were measured by standard procedures. Low-density lipoprotein (LDL) was calculated by the Friedewald formula 16 , except in patients with triglycerides higher than 400 mg/dL, in whom LDL was also measured directly.

Lipid Extraction Lipid extraction and analysis was done in batches of 24 samples including one quality control in random order. 10 pL plasma was mixed in glass vials with 10 μί 0.15 M NaCI, 100 μί CHCI3/MeOH 2:1 and 10 μί internal standard containing 75.2 pmol LPC(19:0), 500.7 pmol PC(17:0/17:0), 75.3 pmol SM(dl8:l/12:0), 1.0 pmol LPE(17:1), 3.8 pmol ΡΕ(15.Ό/15. ), 18.3 pmol PS(17:0/17:0), 10.0 pmol LPS(17:1), 257.6 pmol CE(17:0) (all from Avanti Polar Lipids) and 102.1 pmol TAG(17:0/17:0/17:0) (from Sigma) per μί plasma in CHCI3/MeOH 2:1. After incubation at room temperature for 30 minutes, samples were centrifuged at 10 000 rpm for 3 minutes and an aliquot of 50 μί of the lower layer was transferred into a new glass vial.

Mass Spectrometry (MS)

For MS analysis 3 , 10 μί of lipid extract was diluted with 90 pL CHCI3/MeOH/lsopropanol 1:2:4 containing 7.5 mM NH40Ac and 10 μΜ LiOH. Just before MS analysis, samples were centrifuged at 12 000 rpm for 2 minutes and 25μί were transferred into a Twintec plate (Eppendorf). 10 pL extract was analyzed by direct infusion with a QqQ-MS (TSQ. Vantage, Thermo Fisher Scientific) equipped with a TriVersa NanoMate (Advion Biosciences) and controlled by Chipsoft software version 8.1.0.928 (Advion Biosciences). An ionization voltage of 0.95 to 1.40 kV and a gas pressure of 1.25 psi were used (1). Spectra were automatically acquired with rolling scan events by a sequence subroutine operated under Xcalibur software version 2.0.7 (Thermo Fisher Scientific). Within the first minute, full MS spectra were acquired in positive mode followed by 4 minutes of rolling scan events with different lipid class specific neutral loss (NL) and precursor ion (PI) scans 3. For NL and PI scans argon with a pressure of 1.0 mTorr was used as a collision gas (NL 141.0@25 for LPE/PE, NL 185.0@22 for LPS/PS, NL213.0@52 for SM, PI 184.1@35 for LPC/PC, PI 369.3(5 ) 20 for CE (2-4). A total of 18 PI scans and NL scans for different lipid classes plus additional scans for fatty acids resulted in the detection of 138 lipid species attributable to the eight different lipid classes. Of these, the three lipid species PC(22:0), PC(24:0) and PC(24:1) were excluded because of very low concentrations (more than 95% zero values) leaving 135 for the main analysis. To calculate the amount of the different lipid species, authentic standards were spiked into the samples before extraction. Results for the various lipid species are expressed as pmol per pL plasma. Statistical Analysis

Cox proportional hazards models were built to assess the association of each individual lipid species with CVD risk. The proportional hazards assumption was tested by computing the significance level of the correlation coefficient between Kaplan-Meier-transformed survival time and scaled Schoenfeld residuals for all variables in all models. Adjustment for multiple testing was performed by means of the Benjamini-Hochberg procedure which is more appropriate in an "-omics" setting than the Bonferroni correction 19 . Results were very similar after log-transforming the concentrations of lipid species. For ease of interpretation, only results derived from untransformed data are presented. Potential undue influence of outliers was examined by re-running analyses after exclusion of cases with lipid concentrations more than three standard deviations higher or lower than the mean. This approach again produced almost identical results. For comparison purposes we calculated the sum of all individual lipid species within each lipid class and the respective first principal components.

In the network inference analysis, neighborhoods of interconnected lipids were defined using Topological Overlap Measure (TOM 20 ) - a mathematical metric of putative functional similarity. TOM is proportional to the number of neighbors that a pair of lipids has in common and two nodes having a higher topological overlap are more likely to belong to the same functional class 21 . The lipid species were clustered using a weighted co-expression network to determine modules of highly interconnected lipids 22 . The modules are described by the first principal component of the species present in the module and were correlated with age, sex, HDL cholesterol, LDL cholesterol, total cholesterol, and triglyceride levels.

For variable selection in the setting of high data dimensionality and extensive inter- correlations, Ll-regularized Cox regression was used, which implements the least absolute shrinkage and selection operator (LASSO) algorithm 23 . This model considered all lipid species simultaneously and age, sex and statin use were included as unpenalized explanatory variables. The optimal hyper-parameter λ was chosen as the one maximizing the partial likelihood as determined by ten-fold cross-validation. To account for the potentially large variance of cross-validation, this process was repeated 1000 times with different data partitions. Two analyses with alternative selection procedures were run for validation purposes. Multivariate effect sizes and confidence intervals for the final LASSO selection of lipid species were calculated by conventional unpenalized Cox regression to facilitate traditional formal inference.

The incremental predictive value of selected lipid species for CVD risk prediction was assessed by measures of risk discrimination (changes in Harrell's C- index 24 ) and risk reclassification (categorical 25 ), continuous and prospective net reclassification indices 26 [NRI] and integrated discrimination improvement 25 [IDI]).

The categorical NRIs were calculated based on 10-year risk categories <5%, 5-10%, 10-20%, and >20%. We evaluated the improvement in CVD risk prediction when selected lipid species were used (1) in addition to conventional risk factors (age, sex, diabetes, smoking status, systolic blood pressure, total cholesterol and HDL cholesterol) and (2) in replacement of standard lipid components in the Framingham Risk Score. Analyses were performed using R 2.15.1 and STATA 12; graphics were created with the ggplot2 package 27 .

RESULTS

Molecular Lipid Profiling in the Bruneck Study

Over a follow-up period of 10 years (5902 person-years), 90 participants experienced a CVD event, corresponding to an incidence rate of 15.2 (95% confidence interval (CI), 12.4 to 18.7) per 1000 person-years. Shotgun lipidomics detected 135 lipid species attributable to eight different lipid classes: phosphatidylcholine (PC), lysophosphatidylcholine (LPC), cholesterol ester (CE), sphingomyelin (SM), phosphatidylserine (PS), phosphatidylethanolamine (PE), lysophosphatidyl-ethanolamine (LPE), and triacylglycerol (TAG). Figure 1 shows significance levels for the associations of individual lipid species (dots) and two lipid class summary measures (bars) with incident CVD (logarithmic y-axis). A number of individual lipid species within the classes of TAG, CE, LPC, and PC outperformed the respective summary measures.

Associations of Lipid Species with Cardiovascular Risk

Considering each lipid species separately, 50 members of TAGs, CEs, PEs, PCs, LPCs, and SMs were significantly associated with CVD risk (Table 1). When controlling for multiple comparisons, 28 lipids maintained significance. In Figure 2, all 135 lipid species are plotted as circles with their position in the two-dimensional lipid class graphs determined by the total acyl chain carbon numbers (x-axis) and double bond content (y-axis). The shade of each circle depicts the strength and direction (positive or negative) of given associations. The size of the circle indicates the level of statistical significance. Of note, associations were most pronounced for TAGs and CEs of lower carbon number and double bond content (i.e. saturated and mono-unsaturated fatty acids) and the risk profile was complemented by PE/PCs, SMs (both positive) and LPCs (negative). Subgroup analyses were performed in men and women and age strata. These analyses did not yield evidence of differential effects (the number of interaction terms with a P value <0.05 was lower than that expected by chance: 2 and 3 versus 7) and justify pooled analysis of sexes and of the entire age range. As expected, statin therapy had some effect on the association patterns. Thus, analyses were adjusted for statin use and key computations were repeated after exclusion of participants on statins.

Lipidomics Signature for Cardiovascular RiskTo identify a lipidomics signature of CVD risk, we applied LASSO and two alternative selection algorithms and network inference as backup methods. In Ll-regularized Cox regression analysis, the three lipid species TAG(54:2), CE(16:1), and PE(36:5) were most consistently related to incident CVD (Figure 3). Details on inclusion fractions in 1000 runs are provided in Table 1 and compared with models employing backward selection and best subset algorithms. Multivariable effect sizes and confidence intervals for the LASSO selection of lipid species are shown in Figure 4. After exclusion of 65 subjects taking statins, LASSO still selected TAG(54:2) and CE(16:1) but gave preference to PC(32:1) over PE(36:5) within the PE/PC cluster.

Lipid Network Analysis

Differences in these three lipid species - TAG(54:2), CE(16:1) and PE(36:5) - were reflected in the modules of the network inference analysis (Fig.5). As expected, the module containing all TAG species was strongly correlated with total triglyceride levels (Pearson correlation coefficient 0.86). Similarly, total and LDL cholesterol showed strong correlations with the modules containing the bulk of CE and PC/PE species (Pearson correlation coefficients 0.38 - 0.55). The connectivity within and between modules was calculated for each lipid and the TAGs show a high intra-connectivity and a low inter-connectivity compared with the other lipids and modules. TAG_54_2 had one of the largest differences (1.83) between the intra- and inter- connectivity between the modules, whereas CE_16_1 had one of the lowest differences (-0.25) and PE_36_5 was between (0.03). PE_36_5 and TAG_54_2 both had a high proportion of connections (83.3% and 61.0%) that were associated with CVD whereas CE_16_1 had a lower proportion (30.1%) associated with CVD (P=0.02).

CVD Risk Prediction and Classification

Addition of TAG(54:2), CE(16:1), and PE(36:5) to a model including conventional risk factors increased the C-index by 0.0249 (95%CI, 0.0055 to 0.0443; P=0.012) and yielded an integrated discrimination improvement of 0.024 (95%CI, 0.006 to 0.041). Corresponding data for the addition of six lipid species were 0.0465 (95%CI, 0.0178 to 0.0752) and 0.0460 (95%CI, 0.0194 to 0.0727). Net reclassification improvements were calculated for the 10- year risk categories <5%, 5 to 10%, 10% to 20%, and >20% and are summarized in Figure 6. In brief, consideration of TAG(54:2), CE(16:1), and PE(36:5) on top of conventional risk factors resulted in a significant improvement in risk stratification (NRI=9.53%, P=0.05) that was mainly driven by correct reclassification of non-cases (NRI=10.64%, P<0.001). Similarly, replacement of standard lipid measures of the Framingham Risk Score (total and HDL cholesterol) with TAG(54:2), CE(16:1), and PE(36:5) resulted in a significant improvement in risk discrimination and 10-year risk reclassification (Figure 6). Findings were similar after exclusion of subjects with prior CVD.

In the Bruneck study, there was a clear shift in the number of carbon atoms for long chain fatty acids that are associated with cardiovascular risk, in both CE as well as TAG (Figure 7). Based at the different combinations of fatty acids, which could combine to create the TAGs with statistical significance in the Bruneck cohort (TAG 50:1, TAG 50:2, TAG 50:3, TAG 52:2, TAG 52:3, TAG 52:5, TAG 54:2, TAG 56:1, TAG 56:5 and TAG 56:6), there was a high frequency of myristate (14:0), palmitate (16:0) and oleate (18:1). Similarly, for CE, the highest risk in the Bruneck study was associated with CE containing palmitoleate (16:1) but significant associations were also obtained for myristate (14:0), palmitate (16:0), and oleate (18:1). Since TAG and CE constitute major lipid species, changes in their fatty acid composition may be representative of the overall fatty acid pool in the circulation.

DISCUSSION This is the first prospective population-based study reporting a systematic analysis of the plasma lipidome in the context of CVD. It allows four main conclusions:(l) There is a broad diversity of potential cardiovascular effects of lipid species within most lipid classes, and as a consequence, individual lipids outperform lipid summary measures with regards to CVD risk prediction (Fig. 1). (2) TAGs of low carbon number and double bond content show the strongest and most consistent associations with CVD, surpassing CEs and PE/PCs (Fig. 2). (3) Molecular lipid profiling by MS results in a significant improvement in CVD risk discrimination and classification beyond the information provided by classic risk factors including conventional lipid measures (Fig. 6). (4) The stronger association of certain lipid species with CVD can, at least in part, be explained by a shift in the plasma fatty acid composition.).

Post-genomics Technologies

Recent advances in post-genomics technologies allow the interrogation of CVD at the transcriptome (RNA), proteome (proteins), and metabolome (small molecules) level. Previous metabolomic studies have suggested significant associations between CVD and branched chain amino acids, acetylcarnitines, free fatty acids 28,29 and metabolites linked to choline metabolism 30 . We assessed 135 lipid species in a prospective population-based cohort using shotgun lipidomics. Lipids are among the main culprits in vessel pathology and thus represent a prime target for metabolomic profiling in cardiovascular research. Indeed, several lipid species within six out of eight lipid classes - TAG, CE, PE, PC, SM, and LPC - showed significant associations with future CVD. Importantly, lipidomics interrogated information that was not captured by the established CVD risk factors based on the conventional biochemical measurements of triglycerides, total cholesterol, HDL and LDL cholesterol only.

Triglyceride Species and CVD

A specific cluster of TAGs with low carbon number and double bond content, i.e. saturated and mono-unsaturated acyl chains was most consistently associated with CVD (Figures 2 and 3, lowest P value 4.6xl0 ~7 ). This observation suggests that the relevance of TAGs in the context of both diseases may have been underestimated in previous research by an unwarranted focus on total triglycerides. Large meta-analyses have yielded solid evidence of an association between triglycerides and CVD 32 , but it remains controversial whether triglycerides levels are just a marker of pro-atherogenic lipoprotein dynamics and composition 33 ' 34 , or causally related to lipoprotein retention in the vessel wall, plaque stability and thrombogenicity 34,35 . Our finding that certain TAG species rather than total triglycerides confer increased CVD risk supports the latter view.

CE Species and CVD

CEs showed significant associations with incident CVD. Similar to TAGs, the most strongly associated CEs had a low carbon number and double bond content (Figure 2). CE(16:1) is derived from acyl-CoA:cholesterol acyl transferase-2 (ACAT2) activity. Interestingly, lipid profiling in transgenic mice identified palmitoleate as an adipose tissue-derived lipid hormone that can modulate systemic insulin sensitivity 39 . It is also one of the main products in the endogenous synthesis of non-essential fatty acids 40 : The initial major product is palmitate (16:0), which can be processed to palmitoleate (16:1). Myristate (14:0) is another possible minor product of fatty acid synthesis. Both, CE(14:0) and CE(16:0) showed significant, albeit weaker, associations with incident CVD in the Bruneck study.

Other Lipid Species and CVD

Besides CEs and TAGs, several PE/PC species and few SMs were linked to CVD risk. For example, PC38:3 showed by far the strongest association with CVD in the Bruneck study (Figure 2). Similarly, SM(34:2) was positively associated with CVD, which is consistent with the observed shift in the fatty acid composition in other lipid classes, ie. TAG and CE. In contrast, LPCs showed an inverse relationship. The latter finding is counterintuitive because pro-atherogenic lipoprotein-associated phospholipase A2 (Lp-PLA2) activity results in the generation of LPCs and LPC content is elevated in plaques 3 . However, it is in agreement with the findings of a recent study on coronary artery disease (CAD) and may reflect increased LPC catabolism and clearance from the circulation 39 . Moreover, circulating LPC is partially generated by lecithin- cholesterol acyltransferase and low lecithin-cholesterol acyltransferase activity has been linked to CAD 40,41 .

Molecular Lipid Signature and CVD Within the system-wide lipid network, three lipid species were most informative for CVD risk in our study: TAG(54:2), CE(16:1), and PE(36:5) (Figures 3 and 4, Table 1). Addition of these lipid species to models containing standard CVD risk factors improved risk discrimination and stratification and the same was true when standard lipid measures were replaced by these three variables (Figure 6). Five-fold cross validation (300 repetitions) in the Bruneck cohort yielded evidence that the estimates of predictive accuracy obtained in the entire Bruneck population are robust for the top choice of three lipid species.

Shotgun vs targeted lipidomics techniques

Shotgun lipidomics offers a comprehensive overview 43 , but not full coverage of the plasma lipidome. One drawback of the technique is measurement variability, reflected in higher coefficients of variation, particularly for low-abundant lipid species like LPCs. This, however, would be expected to weaken evident associations rather than to create spurious ones ('regression dilution bias').

The alternative method of targeted lipidomics with chromatographic separation and multiple reaction monitoring allows more accurate quantitation of less abundant lipid species, but is best suited for assessing a limited number of lipid species within a single run due to the narrow time window of eluting peaks. Targeted lipidomics also necessitates standards for each lipid species in order to minimize errors arising from changes in lipid ionization efficiency and variations due to chromatography. Memory effects on the column are another concern.

In contrast, shotgun lipidomics simultaneously screens and analyses lipid species in non- separated lipid extracts 44, 45 . It uses class-specific standards. Thus, it does not require a priori decisions on which lipid species to measure. The set-up for shotgun lipidomics also excludes variation by chromatography and minimizes sample cross-contamination in a high- throughput setting. Strengths of our study include its size, prospective design, thorough characterization of study subjects, complete and high-quality assessment of outcome events, and consistency of findings in sensitivity analyses.

Summary Our findings challenge the current practice of lipid management with its main focus on cholesterol and on lipid levels (best addressed by drug therapy) rather than lipid composition (potentially targetable by dietary measures 46 ). Lipidomics offers unprecedented opportunities to move beyond the genome to address the clinical heterogeneity of CVD, and to provide therapies based on targeting individual lipid species associated with CVD risk.

Example 2

In this Example, samples from the TwinsUK Cohort (n=1453, 45 CVD cases) were used for validation purposes.

Study population. The TwinsUK study, started in 1992, encompasses the biggest adult twin registry in the UK with about 12,000 twins studied for the genetic and environmental etiology of age-related complex traits 47 . The cohort has extensive demographic, physiological, behavioral and lifestyle data available and is one of the most deeply phenotyped and genotyped cohorts in the world. Details about the study procedures and advances have been documented in our recent cohort profile 48 .

Metabolomic assessment in TwinsUK study. Metabolomic profiles of 6,056 twins have been assessed using a non-targeted platform (Metabolon Inc., Durham, USA) on plasma samples. The Metabolon platform incorporates two separate ultra-high performance liquid chromatography/tandem mass spectrometry (UHPLC/MS/MS) injections, optimised for basic and acidic species, and one gas chromatography/mass spectrometry (GC/MS) injection per sample 49 . The platform has detected and quantified concentration of 510 metabolites in our study population (299 known and 211 unknown molecules) including 70 amino-acids, 122 lipids, 13 carbohydrates, 11 vitamins, 11 nucleotides, 21 peptides, 45 xenobiotics and 6 energy metabolites. Out of 6,056 twins with available profiles, 5,621 (93%) are female and the majority (n=4,668) are >40 years of age (1,190 are >65 years) at the time of metabolomic measurements. Only unrelated participants were included in the present analysis of plasma free FA following methanol precipitation. Except pentadecanoate (15:0), which was measured by GC-MS, all FA were measured by LC-MS/MS in negative ion mode.

Comparison with the TwinsUK Cohort In the Bruneck Study, there was a clear shift in the chain length of FA among lipid species associated with CVD risk, especially for CE, SM and TAG. These three classes accounted for the majority of plasma lipids and thus dominated the FA content in complex lipids (Figure 9A). Based on the different combinations of FA, which could combine to create the TAGs with statistical significance in the Bruneck cohort (TAG 50:1, TAG 50:2, TAG 50:3, TAG 52:2, TAG 52:3, TAG 52:5, TAG 54:2, TAG 56: 1, TAG 56:5 and TAG 56:6), there was a high frequency of myristate (14:0), palmitate (16:0), stearate (18:0), myristoleate (14:1), palmitoleate (16:1), and oleate (18:1). Similarly, in CEs and SMs related to CVD risk in the Bruneck Study the most abundant FA were myristate (14:0), palmitate (16:0), palmitoleate (16:1) and oleate (18:1) (Figure 9A). For replication, we determined the free FA composition in plasma samples of the TwinsUK Cohort by MS (Figure 9B). In close agreement with the data from the Bruneck study, levels of myristate (14:0), palmitate (16:0), palmitoleate (16:1) and oleate (18:1) were more strongly associated with CVD than other FA.

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Table 1. Inclusion fractions of the ten individual lipid species most frequently selected in three different selection procedures.

LASSO Variable BESTSUBSET Variable STEPWISE Variable

Selected[%] Selected[%] Selected [%]

CE(16:1) 100.0 TAG(54:2) 99.7 PE(36:5) 72.4

TAG(54:2) 100.0 CE(16:1) 43.7 TAG (54:2) 69.5

PE(36:5) 95.3 PC(0.34:1) 35.1 TAG(50:3) 68.2

SM(34:2) 51.9 LPC(18:1) 34.7 TAG(52:5) 66.3

LPC(20:5) 25.3 PE(36:5) 28.3 TAG(52:2) 62.6

LPC(22:6) 19.6 TAG(54:3) 26.1 CE(16:1) 56.0

PE(38:3) 4.2 PS(38:4) 23.5 PE(0.38:5) 53.6

LPC{18:1) 1.3 PC(38:6) 22.6 TAG(50:2) 48.5

PC(32:1) 1.3 TAG(52:2) 15.4 PC(32:1) 47.0

PC(0.34:1) 1.3 PC(32:0) 11.5 TAG(54:3) 46.1

Age, sex and statin medication were included in all models. LASSO: All 135 lipids were standardized to have unit variance. One thousand repetitions of Ll-regularized Cox regression with the optimal degree of regularization determined by partial likelihood cross- validation were performed. Inclusion fractions refer to the fraction of models in which the respective lipid had a nonzero coefficient. BEST) SUBSET: Pre-screening was performed on all 135 lipids by backwards stepwise Cox regression and reduced the number of candidate lipids to 46. Cox models were then fitted to all combinations of up to six of these 46. Of the resulting 10.9 million models, the 1000 with the lowest BIC were selected. Inclusion fractions refer to the fraction of models containing the respective lipid. STEPWISE: For each of 1000 bootstrap resamples (a) all 135 lipids were pre-screened using Cox regression, eliminating lipids with a P < 0.05 and (b) backwards stepwise Cox regression with minimum AlC as selection criterion was performed on the remaining lipids. Inclusion fractions refer to the fraction of the 1000 final models containing the respective lipid. For each selection approach, the ten most frequently selected lipids are shown. The key selection of LASSO was well represented within these choices of the other two approaches. Also disclosed herein are further embodiments as described in the following numbered paragraphs:

1. A method of determining cardiovascular disease (CVD) risk in a subject, comprising:

(a) determining a level of one or more lipids in a sample obtained from the subject, wherein the lipid is selected from the group consisting of:

(i) a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5);

(ii) a cholesterol ester (CE) from CE(14:0) to CE(16:1); or

(iii) a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6); and

(b) comparing the level of the lipid in the sample from the subject to a control value; wherein an increased level of the lipid in the sample from the subject compared to the control value indicates an increased risk of CVD in the subject.

2. A method according to paragraph 1, wherein the CVD is associated with atherosclerotic plaque rupture or thrombosis.

3. A method according to paragraph 1 or paragraph 2, wherein the CVD is an acute ischemic event selected from myocardial infarction and/or ischemic stroke, or sudden cardiac death.

4. A method according to any preceding paragraph, wherein an increased level of the lipid in the sample from the subject compared to the control value is indicative of long-term CVD risk in the subject, the long-term CVD risk comprising the risk of an acute ischemic event occurring in the subject within a period of up to 10 years from when the sample was obtained.

5. A method according to any preceding paragraph, wherein the method comprises determining the levels of:

(i) a triacylglycerol from TAG(50:1) to TAG(54:5) and a cholesterol ester from CE(14:0) to CE(16:1); (ii) a triacylglycerol from TAG(50:1) to TAG(54:5) and a p osphatidylethanolamine from PE(34:l) to PE(38:6);

(iii) a cholesterol ester from CE(14:0) to CE(16:1) and a phosphatidylethanolamine from PE(34:l) to PE(38:6); or

(iv) a triacylglycerol from TAG(50:1) to TAG(54:5), a cholesterol ester from CE(14:0) to CE(16:1) and a phosphatidylethanolamine from PE(34:l) to PE(38:6).

6. A method according to any preceding paragraph, wherein the triacylglycerol is selected from the group consisting of TAG(50:1), TAG(50:2), TAG(50:3), TAG(52:2), TAG(52:3), TAG(52:4), TAG(52:5), TAG(54:2) and TAG(54:3).

7. A method according to paragraph 6, wherein the triacylglycerol is TAG(54:2).

8. A method according to any preceding paragraph, wherein the cholesterol ester is selected from the group consisting of CE(14:0), CE(16:0) and CE(16:1).

9. A method according to paragraph 8, wherein the cholesterol ester is CE(16:1).

10. A method according to any preceding paragraph, wherein the phosphatidylethanolamine is selected from the group consisting of PE(34:1), PE(34:2), PE(36:2), PE(36:3), PE(36:4), PE(36:5), PE(38:3), PE(38:4), PE(38:5) and PE(38:6).

11. A method according to paragraph 10, wherein the phosphatidylethanolamine is PE(36:5).

12. A method according to any preceding paragraph, wherein the method comprises determining a level of TAG(54:2), CE(16:1) and PE(36:5).

13. A method according to any preceding paragraph, further comprising determining a level of a phosphatidylcholine from PC 32:0 to PC 40:4 in the sample from the subject, and comparing the level to a control value, wherein an increased level of the phosphatidylcholine in the sample from the subject compared to the control value indicates an increased risk of CVD in the subject. 14. A method according to paragraph 13, wherein the phosphatidylcholine is selected from the group consisting of PC(32:0), PC(32:1), PC(34:1), PC(34:3), PC(36:1), PC(36:3), PC(38:2), PC(38:3), PC(38:4), PC(40:2), PC(40:3) and PC(40:4).

15. A method according to any preceding paragraph, wherein the sample comprises serum or plasma obtained from the subject.

16. A method according to any preceding paragraph, wherein the control value is based on a mean level of the lipid in a control population of subjects.

17. A method according to any preceding paragraph, wherein the lipid level is determined by mass spectrometry.

18. A method for preventing or treating cardiovascular disease in a subject, comprising:

(a) determining CVD risk in the subject by a method as defined in any of paragraphs 1 to 17; and

(b) administering an anti-CVD therapeutic and/or nutritional agent to the subject if the subject shows an increased risk of developing CVD.

19. A method according to paragraph 18, wherein the anti-CVD therapeutic agent is an HMG CoA reductase inhibitor.

20. A method according to paragraph 18 or paragraph 19, further comprising (c) repeating step (a) after administration of the anti-CVD therapeutic and/or nutritional agent.

21. A method according to paragraph 20, wherein if the risk of developing CVD in the subject determined in step (c) is not significantly reduced compared to the risk determined in step (a), the method further comprises a step (d) comprising administering an alternative anti-CVD agent to the subject, the alternative anti-CVD agent differing from the anti-CVD therapeutic and/or nutritional agent administered in step (b).

22. A kit for determining CVD risk in a subject, the kit comprising one or more control samples comprising predetermined levels of (i) a triacylglycerol (TAG) from TAG(50:1) to TAG(54:5), (ii) a cholesterol ester (CE) from CE(14:0) to CE(16:1) or (iii) a phosphatidylethanolamine (PE) from PE(34:1) to PE(38:6), and instructions for use of the kit for determining CVD risk in a subject by comparing the predetermined levels in the control sample to levels of lipids in a test sample obtained from the subject.

23. A method of determining cardiovascular disease (CVD) risk in a subject, comprising:

(a) determining fatty acid composition of lipids in a sample obtained from the subject, wherein the lipids are selected from the group consisting of:

(i) triacylglycerols (TAGs); and

(ii) cholesterol esters (CEs); and

(b) comparing the fatty acid composition of the lipids in the sample from the subject to a control; wherein a decrease in mean fatty acid chain length in the lipids in the sample from the subject compared to the control indicates an increased risk of CVD in the subject.

24. A method according to paragraph 23, wherein the decrease in mean fatty acid chain length comprises an increase in shorter chain fatty acid residues and/or a decrease in longer chain fatty acid residues in the sample from the subject compared to the control.

25. A method according to paragraph 24, wherein the shorter chain fatty acid residues are comprised in TAGs comprising a total of 54 or fewer carbon atoms in the fatty acid residues of the molecule, and/or the longer chain fatty acid residues are comprised in TAGs comprising a total of 56 or more carbon atoms in the fatty acid residues of the molecule.

26. A method according to paragraph 24, wherein the shorter chain fatty acid residues are comprised in CEs comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule, and/or the longer chain fatty acid residues are comprised in CEs comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule.

27. A method according to any of paragraphs 23 to 25, further comprising determining fatty acid composition of lipids in the sample obtained from the subject, wherein the lipids are selected from the group consisting of:

(iii) phosphatidylethanolamines (PEs) and (iv) phosphatidylcholines (PCs); wherein a decrease in mean fatty acid chain length in the lipids in the sample from the subject compared to the control indicates an increased risk of CVD in the subject.

28. A method according to paragraph 27, wherein the decrease in mean fatty acid chain length comprises an increase in PEs comprising a total of 38 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PEs comprising a total of 40 or more carbon atoms in the fatty acid portions of the molecule.

29. A method according to paragraph 27, wherein the decrease in mean fatty acid chain length comprises an increase in PCs comprising a total of 40 or fewer carbon atoms in the fatty acid residues of the molecule, and/or a decrease in PCs comprising a total of 42 or more carbon atoms in the fatty acid portions of the molecule.

30. A method according to any of paragraphs 23 to 29, further comprising determining fatty acid composition of lysophosphatidylcholines (LPCs) in the sample obtained from the subject, wherein an increase in mean fatty acid chain length in the LPCs in the sample from the subject compared to the control indicates a decreased risk of CVD in the subject.

31. A method according to paragraph 30, wherein the increase in mean fatty acid chain length in the LPCs comprises an increase in LPCs comprising a total of 22 or more carbon atoms in the fatty acid residue of the molecule, and/or a decrease in LPCs comprising a total of 20 or fewer carbon atoms in the fatty acid residue of the molecule.

32. A method according to any of paragraphs 23 to 31, wherein a decrease in the mean number of double bonds in the fatty acid portions of the lipids in the sample compared to the control indicates an increased risk of CVD in the subject.

33. A method according to paragraph 32, wherein the decrease in the mean number of double bonds in the fatty acid portions of the lipids comprises (i) an increase in saturated and/or mono-unsaturated fatty acid residues; and/or (ii) a decrease in fatty acid residues comprising two or more double bonds; in the sample from the subject compared to the control. 34. A method according to paragraph 32 or 33, comprising (i) an increase in TAGs comprising a total of 5 or fewer double bonds in the fatty acid residues of the molecule and/or (ii) a decrease in TAGs comprising a total of 6 or more double bonds in the fatty acid portions of the molecule.

35. A method according to paragraph 32 or 33, comprising (i) an increase in CEs comprising no double bonds or one double bond in the fatty acid residue of the molecule and/or (ii) a decrease in CEs comprising two or more double bonds in the fatty acid portion of the molecule.