首页> 外文期刊>The American Journal of Cardiology >Prognostic value of multiple biomarkers in American Indians free of clinically overt cardiovascular disease (from the Strong Heart Study).
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Prognostic value of multiple biomarkers in American Indians free of clinically overt cardiovascular disease (from the Strong Heart Study).

机译:多种生物标志物在没有临床上明显的心血管疾病的美洲印第安人中的预后价值(来自强心研究)。

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Several biomarkers have been documented, singly or jointly, to improve risk prediction, but the extent to which they improve prediction-model performance in populations with high prevalences of obesity and diabetes has not been specifically examined. The aim of this study was to evaluate the ability of various biomarkers to improve prediction-model performance for death and major cardiovascular disease (CVD) events in a high-risk population. The relations of 6 biomarkers with outcomes were examined in 823 American Indians free of prevalent CVD or renal insufficiency, as were their contributions to risk prediction. In single-marker models adjusting for standard clinical and laboratory risk factors, 4 of 6 biomarkers significantly predicted mortality and major CVD events. In multimarker models, these 4 biomarkers-urinary albumin/creatinine ratio (UACR), glycosylated hemoglobin, B-type natriuretic peptide, and fibrinogen-significantly predicted mortality, while 2-UACR and fibrinogen-significantly predicted CVD. On the basis of its robust association in participants with diabetes, UACR was the strongest predictor of mortality and CVD, individually improving model discrimination or classification in the entire cohort. Singly, all remaining biomarkers also improved risk classification for mortality and enhanced average sensitivity for mortality and CVD. The addition of > or =1 biomarker to the single marker UACR further improved discrimination or average sensitivity for these outcomes. In conclusion, biomarkers derived from diabetic cohorts, and novel biomarkers evaluated primarily in lower risk populations, improve risk prediction in cohorts with prevalent obesity and diabetes. Risk stratification of these populations with multimarker models could enhance selection for aggressive medical or surgical approaches to prevention.
机译:已经单独或联合记录​​了几种生物标志物来改善风险预测,但是尚未明确检查在肥胖症和糖尿病高发人群中它们改善预测模型表现的程度。这项研究的目的是评估各种生物标记物改善高危人群死亡和主要心血管疾病(CVD)事件的预测模型性能的能力。在823位没有普遍CVD或肾功能不全的美洲印第安人中,检查了6种生物标志物与预后的关系,以及它们对风险预测的贡献。在针对标准临床和实验室风险因素进行调整的单标记模型中,6个生物标记中有4个显着预测了死亡率和主要CVD事件。在多标记模型中,这4种生物标记物-尿白蛋白/肌酐比率(UACR),糖基化血红蛋白,B型利尿钠肽和纤维蛋白原显着预测死亡率,而2-UACR和纤维蛋白原显着预测CVD。基于其与糖尿病患者的强相关性,UACR是死亡率和CVD的最强预测因子,可单独改善整个队列中的模型辨别力或分类。单独地,所有剩余的生物标记物还改善了死亡率的风险分类,并提高了死亡率和CVD的平均敏感性。在单一标记UACR中添加>或= 1的生物标记可进一步改善这些结果的区分度或平均敏感性。总之,源自糖尿病人群的生物标志物和主要在低风险人群中评估的新型生物标志物可改善患有肥胖症和糖尿病的人群的风险预测。使用多标记模型对这些人群进行风险分层可以增强积极的医学或外科手术预防方法的选择。

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