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ROC analysis in biomarker combination with covariate adjustment

机译:结合协变量调整的生物标志物的ROC分析

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Rational and Objectives: Receiver operating characteristic (ROC) analysis is often used to find the optimal combination of biomarkers. When the subject level covariates affect the magnitude and/or accuracy of the biomarkers, the combination rule should take into account of the covariate adjustment. The authors propose two new biomarker combination methods that make use of the covariate information. Materials and Methods: The first method is to maximize the area under the covariate-adjusted ROC curve (AAUC). To overcome the limitations of the AAUC measure, the authors further proposed the area under covariate-standardized ROC curve (SAUC), which is an extension of the covariate-specific ROC curve. With a series of simulation studies, the proposed optimal AAUC and SAUC methods are compared with the optimal AUC method that ignores the covariates. The biomarker combination methods are illustrated by an example from Alzheimer's disease research. Results: The simulation results indicate that the optimal AAUC combination performs well in the current study population. The optimal SAUC method is flexible to choose any reference populations, and allows the results to be generalized to different populations. Conclusions: The proposed optimal AAUC and SAUC approaches successfully address the covariate adjustment problem in estimating the optimal marker combination. The optimal SAUC method is preferred for practical use, because the biomarker combination rule can be easily evaluated for different population of interest.
机译:理性与目标:接收者操作特征(ROC)分析通常用于寻找生物标志物的最佳组合。当受试者水平的协变量影响生物标志物的大小和/或准确性时,组合规则应考虑协变量调整。作者提出了两种利用协变量信息的新生物标记组合方法。材料和方法:第一种方法是最大化经协变量调整的ROC曲线(AAUC)下的面积。为了克服AAUC量度的局限性,作者进一步提出了协变量标准化ROC曲线(SAUC)下的面积,这是协变量特定ROC曲线的扩展。通过一系列仿真研究,将提出的最佳AAUC和SAUC方法与忽略协变量的最佳AUC方法进行了比较。通过阿尔茨海默氏病研究的实例说明了生物标志物组合方法。结果:仿真结果表明,最佳AAUC组合在当前研究人群中表现良好。最佳的SAUC方法可以灵活地选择任何参考人群,并且可以将结果推广到不同的人群。结论:所提出的最优AAUC和SAUC方法成功地解决了协变量调整问题,估计了最优标记组合。最佳的SAUC方法是实际应用的首选,因为可以轻松地针对不同的目标人群评估生物标志物组合规则。

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