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ESTIMATION OF AREA UNDER THE ROC CURVE UNDER NONIGNORABLE VERIFICATION BIAS

机译:在非无知验证偏差下ROC曲线下的面积估计

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The Area Under the Receiving Operating Characteristic Curve (AUC) is frequently used for assessing the overall accuracy of a diagnostic marker. However, estimation of AUC relies on knowledge of the true outcomes of subjects: diseased or non-diseased. Because disease verification based on a gold standard is often expensive and/or invasive, only a limited number of patients are sent to verification at doctors' discretion. Estimation of AUC is generally biased if only small verified samples are used and it is thus necessary to make corrections for such lack of information. Correction based on the ignorable missingness assumption (or missing at random) is also biased if the missing mechanism depends on the unknown disease outcome, which is called nonignorable missing. In this paper, we propose a propensity-score-adjustment method for estimating the AUC based on the instrumental variable assumption when the missingness of disease status is nonignorable. The new method makes parametric assumptions on the verification probability, and the probability of being diseased for verified samples rather than for the whole sample. The proposed parametric assumption on the observed sample is easier to be verified than the parametric assumption on the full sample. We establish the asymptotic properties of the proposed estimators. A simulation study was performed to compare the proposed method with existing methods. The proposed method is applied to an Alzheimer's disease data collected by National Alzheimer's Coordinating Center.
机译:接收操作特性曲线(AUC)下的区域经常用于评估诊断标记的总体精度。然而,AUC的估计依赖于对受试者真正结果的知识:患病或非患病。由于基于黄金标准的疾病核查往往是昂贵和/或侵入性的,因为只有有限数量的患者被发送到医生自行决定。如果仅使用小验证样本,则通常偏置AUC的估计,因此需要对这种缺乏信息进行校正。如果缺失的机制取决于未知的疾病结果,则基于无知的缺失假设(或随机缺失)的校正也偏置,这被称为不可中失的疾病丢失。在本文中,我们提出了一种倾向评分调整方法,用于基于疾病状态缺失时基于仪器变量假设估计AUC的探测。新方法对验证概率进行参数假设,以及用于验证的样本的患病概率而不是整个样本。在观察样本上提出的参数假设比完整样本上的参数假设更容易验证。我们建立了拟议估算者的渐近性质。进行模拟研究以比较现有方法的提出方法。所提出的方法适用于国家阿尔茨海默氏症协调中心收集的阿尔茨海默病数据。

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