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Combination of conventional biomarkers for risk stratification in chronic heart failure

机译:常规生物标记物的组合用于慢性心力衰竭的风险分层

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Background: Although there is substantial interest in the use of newer biomarkers to identify patients with chronic heart failure (CHF), recently few investigations have evaluated the incremental usefulness of multiple conventional biomarkers. Combination of several biomarkers simultaneously could enhance risk stratification in CHF.Methods and results: We analyzed 7 biomarkers (brain natriuretic peptide, uric acid, sodium, hemoglobin, creatinine, creatim'ne clearance, high-sensitivity C-reactive protein), which were known as established prognostic markers for CHF, in 154 consecutive CHF patients, and patients were prospectively followed with endpoints of cardiac death or re-hospitalization. When there was an abnormal value, we scored it for one point to calculate multimarker score. Patients were categorized into 3 strata according to multimarker score. There were 83 cardiac events during the follow-up period. A Cox proportional hazard model showed that patients in the high stratum were associated with the highest risk of cardiac events among the 3 strata. Kaplan-Meier analysis revealed that patients in the high stratum had a significantly higher cardiac event rate compared with lower strata.Conclusion: The combination of conventional biomarkers could potentially improve the risk stratification of CHF patients for the prediction of cardiac events with low cost and wide availability.
机译:背景:尽管人们对使用新型生物标志物识别患有慢性心力衰竭(CHF)的患者非常感兴趣,但最近很少有研究评估多种常规生物标志物的增量用处。方法和结果:我们分析了7种生物标志物(脑利钠肽,尿酸,钠,血红蛋白,肌酐,肌酐清除率,高敏C反应蛋白)。 154名连续的CHF患者被称为CHF的既定预后标志物,并对患者进行了心源性死亡或再次住院的前瞻性随访。当出现异常值时,我们将其打分一分以计算多标记得分。根据多标记评分将患者分为3个层次。在随访期间发生了83次心脏事件。 Cox比例风险模型显示,在3个阶层中,高阶层的患者发生心脏事件的风险最高。 Kaplan-Meier分析显示,高层患者的心脏事件发生率明显高于低层患者。结论:常规生物标志物的组合可潜在地改善CHF患者的风险分层,从而可低成本且广泛地预测心脏事件可用性。

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