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Urinary proteomic biomarkers to predict cardiovascular events
Author(s) -
Brown Catriona E.,
McCarthy Nina S.,
Hughes Alun D.,
Sever Peter,
Stalmach Angelique,
Mullen William,
Dominiczak Anna F.,
Sattar Naveed,
Mischak Harald,
Thom Simon,
Mayet Jamil,
Stanton Alice V.,
Delles Christian
Publication year - 2015
Publication title -
proteomics – clinical applications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.948
H-Index - 54
eISSN - 1862-8354
pISSN - 1862-8346
DOI - 10.1002/prca.201400195
Subject(s) - coronary artery disease , medicine , clinical endpoint , urinary system , urine , cad , clinical significance , biomarker , population , cardiology , clinical trial , biology , biochemistry , environmental health
Purpose We have previously demonstrated associations between the urinary proteome profile and coronary artery disease (CAD) in cross‐sectional studies. Here, we evaluate the potential of a urinary proteomic panel as a predictor of CAD in the hypertensive atherosclerotic cardiovascular disease (HACVD) substudy population of the Anglo‐Scandinavian Cardiac Outcomes Trial study. Experimental design Thirty‐seven cases with primary CAD endpoint were matched for sex and age to controls who had not reached a CAD endpoint during the study. Spot urine samples were analyzed using CE coupled to Micro‐TOF MS. A previously developed 238‐marker CE‐MS model for diagnosis of CAD (CAD 238 ) was assessed for its predictive potential. Results Sixty urine samples (32 cases; 28 controls; 88% male, mean age 64 ± 5 years) were analyzed. There was a trend toward healthier values in controls for the CAD model classifier (–0.432 ± 0.326 versus –0.587 ± 0.297, p = 0.170), and the CAD model showed statistical significance on Kaplan–Meier survival analysis p = 0.021. We found 190 individual markers out of 1501 urinary peptides that separated cases and controls (AUC >0.6). Of these, 25 peptides were also components of CAD 238 . Conclusion and clinical relevance A urinary proteome panel originally developed in a cross‐sectional study predicts CAD endpoints independent of age and sex in a well‐controlled prospective study.