接收者工作特征曲线(ROC):基础知识及其他

Q1 Nursing
Pearl W Chang, Thomas B Newman
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引用次数: 0

摘要

诊断测试和临床预测规则常用来帮助估计疾病或结果的概率。通过绘制接收者操作特征曲线(ROC)并计算其下面积(AUROC),可以衡量检验或规则区分有病或无病的能力(辨别力)。本文回顾了 ROC 曲线的特征以及 ROC 曲线和 AUROC 值的解释。我们强调了 ROC 曲线的 5 个未被重视的特征:(1) ROC 曲线在检测结果区间上的斜率就是该区间的似然比;(2) 检测结果呈阳性的最佳临界值不仅取决于 ROC 曲线的形状,还取决于检测前的疾病概率以及假阳性和假阴性结果的相对危害;(4) 如果 ROC 曲线的斜率不是持续下降的,那么 AUROC 就不是一个很好的判别指标;以及 (5) AUROC 可以通过纳入大量被正确识别为相关结果风险极低的人群来提高。我们用 3 项已发表的研究来说明最后一个概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Receiver Operating Characteristic (ROC) Curves: The Basics and Beyond.

Diagnostic tests and clinical prediction rules are frequently used to help estimate the probability of a disease or outcome. How well a test or rule distinguishes between disease or no disease (discrimination) can be measured by plotting a receiver operating characteristic (ROC) curve and calculating the area under it (AUROC). In this paper, we review the features of ROC curves and interpretation of ROC curves and AUROC values. We highlight 5 underappreciated features of ROC curves: (1) the slope of the ROC curve over a test result interval is the likelihood ratio for that interval; (2) the optimal cutoff for calling a test positive depends not only on the shape of the ROC curve, but also on the pretest probability of disease and relative harms of false-positive and false-negative results; (3) the AUROC measures discrimination only, not the accuracy of the predicted probabilities; (4) the AUROC is not a good measure of discrimination if the slope of the ROC curve is not consistently decreasing; and (5) the AUROC can be increased by including a large number of people correctly identified as being at very low risk for the outcome of interest. We illustrate this last concept using 3 published studies.

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来源期刊
Hospital pediatrics
Hospital pediatrics Nursing-Pediatrics
CiteScore
3.70
自引率
0.00%
发文量
204
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