Lasko Thomas A, Bhagwat Jui G, Zou Kelly H, Ohno-Machado Lucila
Decision Systems Group, Brigham and Women's Hospital, Harvard Medical School, Boston, MA 02115, USA.
J Biomed Inform. 2005 Oct;38(5):404-15. doi: 10.1016/j.jbi.2005.02.008. Epub 2005 Apr 2.
Receiver operating characteristic (ROC) curves are frequently used in biomedical informatics research to evaluate classification and prediction models for decision support, diagnosis, and prognosis. ROC analysis investigates the accuracy of a model's ability to separate positive from negative cases (such as predicting the presence or absence of disease), and the results are independent of the prevalence of positive cases in the study population. It is especially useful in evaluating predictive models or other tests that produce output values over a continuous range, since it captures the trade-off between sensitivity and specificity over that range. There are many ways to conduct an ROC analysis. The best approach depends on the experiment; an inappropriate approach can easily lead to incorrect conclusions. In this article, we review the basic concepts of ROC analysis, illustrate their use with sample calculations, make recommendations drawn from the literature, and list readily available software.
受试者工作特征(ROC)曲线在生物医学信息学研究中经常被用于评估用于决策支持、诊断和预后的分类与预测模型。ROC分析考察模型区分阳性与阴性病例(如预测疾病的存在与否)的能力的准确性,其结果与研究人群中阳性病例的患病率无关。它在评估产生连续范围内输出值的预测模型或其他测试时特别有用,因为它捕捉了该范围内敏感性和特异性之间的权衡。进行ROC分析有很多方法。最佳方法取决于实验;不恰当的方法很容易导致错误的结论。在本文中,我们回顾了ROC分析的基本概念,通过示例计算说明其用法,根据文献提出建议,并列出了容易获得的软件。