[ROC曲线:一般特征及其在临床实践中的有用性]。

Ivonne Analí Roy-García, Carlos Paredes-Manjarrez, Jorge Moreno-Palacios, Rodolfo Rivas-Ruiz, Andrey Arturo Flores-Pulido
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引用次数: 0

摘要

在临床实践中,使用诊断测试来确定疾病的存在与否是至关重要的。诊断测试的结果可以对应于数字估计,该数字估计需要将定量参考参数转换为正常或异常的二分法解释,并因此实施用于治疗病症或疾病的行动。例如,在贫血的诊断中,有必要定义血红蛋白变量的临界点,并创建两个类别来区分贫血的存在与否。该过程使用的方法是准备诊断性能曲线,英文缩写为ROC(接收器操作特征)。ROC曲线也可用作预后标志,因为它可以定义与更高死亡率或并发症风险相关的定量变量的临界点。它们已被用于新冠肺炎的不同预后标志物,如中性粒细胞/淋巴细胞比率和D-二聚体,其中确定了与死亡率和/或机械通气风险相关的临界点。ROC曲线用于单独评估测试的诊断性能,但也可用于比较两个或多个诊断测试的性能,并确定哪一个更准确。本文介绍了ROC曲线的使用和解释、曲线下面积(AUC)的解释以及两种或多种诊断测试的比较的基本概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[ROC curves: general characteristics and their usefulness in clinical practice].

The use of diagnostic tests to determine the presence or absence of a disease is essential in clinical practice. The results of a diagnostic test may correspond to numerical estimates that require quantitative reference parameters to be transferred to a dichotomous interpretation as normal or abnormal and thus implement actions for the care of a condition or disease. For example, in the diagnosis of anemia it is necessary to define a cut-off point for the hemoglobin variable and create two categories that distinguish the presence or absence of anemia. The method used for this process is the preparation of diagnostic performance curves, better known by their acronym in English as ROC (Receiver Operating Characteristic). The ROC curve is also useful as a prognostic marker, since it allows defining the cut-off point of a quantitative variable that is associated with greater mortality or risk of complications. They have been used in different prognostic markers in COVID-19, such as the neutrophil/lymphocyte ratio and D-dimer, in which cut-off points associated with mortality and/or risk of mechanical ventilation were identified. The ROC curve is used to evaluate the diagnostic performance of a test in isolation, but it can also be used to compare the performance of two or more diagnostic tests and define which one is more accurate. This article describes the basic concepts for the use and interpretation of the ROC curve, the interpretation of an area under the curve (AUC) and the comparison of two or more diagnostic tests.

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