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首页> 外文期刊>Biometrika >A REGRESSION MODELLING FRAMEWORK FOR RECEIVER OPERATING CHARACTERISTIC CURVES IN MEDICAL DIAGNOSTIC TESTING
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A REGRESSION MODELLING FRAMEWORK FOR RECEIVER OPERATING CHARACTERISTIC CURVES IN MEDICAL DIAGNOSTIC TESTING

机译:医学诊断测试中接收器操作特征曲线的回归建模框架

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Receiver operating characteristic curves (ROC's) are used to evaluate diagnostic tests when test results are not binary. They describe the inherent capacity of the test for distinguishing between truly diseased and nondiseased subjects. Although methodology for estimating and for comparing Roc's is well developed, to date no general framework exists for evaluating covariate effects on ROC's. We formulate a general regression model which allows the effects of covariates on test accuracy to be succinctly summarised. Such covariates might include, for example, characteristics of the patient or test environment, test type or severity of disease. The regression models are shown to arise naturally from some classic models for continuous or ordinal test data. Regression parameters are fitted using an estimating equation approach. The method is illustrated on data from a study of multiformat photographic images used for scintigraphy. [References: 16]
机译:当测试结果不是二进制时,使用接收器工作特性曲线(ROC)评估诊断测试。他们描述了测试区分固有疾病和非疾病受试者的固有能力。尽管用于估计和比较Roc的方法已经很成熟,但是迄今为止,尚无用于评估协变量对ROC的影响的通用框架。我们制定了一个通用的回归模型,该模型可以简要总结协变量对测试准确性的影响。这样的协变量可以包括例如患者的特征或测试环境,测试类型或疾病的严重程度。回归模型显示出自然地来自一些经典的连续或有序测试数据模型。使用估计方程方法拟合回归参数。在研究用于闪烁显像的多格式摄影图像的数据上说明了该方法。 [参考:16]

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