A Proteomics-Based Approach for Prediction of Different Cardiovascular Diseases and Dementia

被引:1
|
作者
Ho, Frederick K. [1 ]
Mark, Patrick B. [2 ]
Lees, Jennifer S. [2 ,3 ]
Pell, Jill P. [1 ]
Strawbridge, Rona J. [1 ,4 ,5 ]
Kimenai, Dorien M. [6 ]
Mills, Nicholas L. [6 ,7 ]
Woodward, Mark [8 ,9 ]
Mcmurray, John J. V. [2 ]
Sattar, Naveed [2 ]
Welsh, Paul [2 ]
机构
[1] Univ Glasgow, Sch Hlth & Wellbeing, Glasgow, Scotland
[2] Univ Glasgow, Sch Cardiovasc & Metab Hlth, Glasgow, Scotland
[3] NHS Greater Glasgow & Clyde, Glasgow Renal & Transplant Unit, Glasgow, Scotland
[4] Karolinska Inst, Dept Med Solna, Cardiovasc Med Unit, Stockholm, Sweden
[5] Hlth Data Res UK HDR UK, Glasgow, Scotland
[6] Univ Edinburgh, BHF Ctr Cardiovasc Sci, Edinburgh, Scotland
[7] Univ Edinburgh, Usher Inst, Edinburgh, Scotland
[8] Imperial Coll London, George Inst Global Hlth, Sch Publ Hlth, London, England
[9] Univ New South Wales, George Inst Global Hlth, Sydney, Australia
基金
英国惠康基金;
关键词
cardiovascular diseases; proteomics; risk; HEART-FAILURE; RISK;
D O I
10.1161/CIRCULATIONAHA.124.070454
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BACKGROUND:Many studies have explored whether individual plasma protein biomarkers improve cardiovascular disease risk prediction. We sought to investigate the use of a plasma proteomics-based approach in predicting different cardiovascular outcomes.METHODS:Among 51 859 UK Biobank participants (mean age, 56.7 years; 45.5% male) without cardiovascular disease and with proteomics measurements, we examined the primary composite outcome of fatal and nonfatal coronary heart disease, stroke, or heart failure (major adverse cardiovascular events), as well as additional secondary cardiovascular outcomes. An exposome-wide association study was conducted using relative protein concentrations, adjusted for a range of classic, demographic, and lifestyle risk factors. A prediction model using only age, sex, and protein markers (protein model) was developed using a least absolute shrinkage and selection operator-regularized approach (derivation: 80% of cohort) and validated using split-sample testing (20% of cohort). Their performance was assessed by comparing calibration, net reclassification index, and c statistic with the PREVENT (Predicting Risk of CVD Events) risk score.RESULTS:Over a median 13.6 years of follow-up, 4857 participants experienced first major adverse cardiovascular events. After adjustment, the proteins most strongly associated with major adverse cardiovascular events included NT-proBNP (N-terminal pro B-type natriuretic peptide; hazard ratio [HR], 1.68 per SD increase), proADM (pro-adrenomedullin; HR, 1.60), GDF-15 (growth differentiation factor-15; HR, 1.47), WFDC2 (WAP four-disulfide core domain protein 2; HR, 1.46), and IGFBP4 (insulin-like growth factor-binding protein 4; HR, 1.41). In total, 222 separate proteins were predictors of all outcomes of interest in the protein model, and 86 were selected for the primary outcome specifically. In the validation cohort, compared with the PREVENT risk factor model, the protein model improved net reclassification (net reclassification index +0.09), and c statistic (+0.051) for major adverse cardiovascular events. The protein model also improved the prediction of other outcomes, including ASCVD (c statistic +0.035), myocardial infarction (+0.023), stroke (+0.024), aortic stenosis (+0.015), heart failure (+0.060), abdominal aortic aneurysm (+0.024), and dementia (+0.068).CONCLUSIONS:Measurement of targeted protein biomarkers produced superior prediction of aggregated and disaggregated cardiovascular events. This study represents proof of concept for the application of targeted proteomics in predicting a range of cardiovascular outcomes.
引用
收藏
页码:277 / 287
页数:11
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