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Precision Prognostics for Cardiovascular Disease in Type 2 Diabetes: A Systematic Review and Meta-analysis.

Abrar AhmadLee-Ling LimMario Luca MorieriClaudia Ha-Ting TamFeifei ChengTinashe ChikoworeMonika Dudenhöffer-PfeiferHugo FitipaldiChuiguo HuangSarah KanbourSudipa SarkarRobert Wilhelm KoivulaAyesha A MotalaSok Cin TyeGechang YuYingchai ZhangMichele ProvenzanoDiana SherifaliRussel de SouzaDeirdre Kay TobiasMaria F GomezRonald Ching-Wan MaNestoras Nicolas Mathioudakis
Published in: medRxiv : the preprint server for health sciences (2023)
Patients with T2D are at high risk for CVD but predicting who will experience a cardiac event is challenging. Current risk tools and prognostic factors, such as laboratory tests, may not accurately predict risk in different patient populations. There is a need for personalized risk prediction tools to identify patients more accurately so that CVD prevention can be targeted to those who need it most. This study examined novel biomarkers, genetic markers, and risk scores on the prediction of CVD in individuals with T2D. We found that four laboratory markers and a genetic risk score for CHD had high predictive utility beyond traditional CVD risk factors and that risk scores had modest predictive utility when tested in diverse populations, but more studies are needed to determine their usefulness in clinical practice. The highest strength of evidence was observed for NT-proBNP, a laboratory test currently used to monitor patients with heart failure but not currently used in clinical practice for the purpose of CVD prediction in T2D.
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