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A robust method using propensity score stratification for correcting verification bias for binary tests

机译:一种使用倾向评分分层法纠正二元测试验证偏差的可靠方法

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摘要

Sensitivity and specificity are common measures of the accuracy of a diagnostic test. The usual estimators of these quantities are unbiased if data on the diagnostic test result and the true disease status are obtained from all subjects in an appropriately selected sample. In some studies, verification of the true disease status is performed only for a subset of subjects, possibly depending on the result of the diagnostic test and other characteristics of the subjects. Estimators of sensitivity and specificity based on this subset of subjects are typically biased; this is known as verification bias. Methods have been proposed to correct verification bias under the assumption that the missing data on disease status are missing at random (MAR), that is, the probability of missingness depends on the true (missing) disease status only through the test result and observed covariate information. When some of the covariates are continuous, or the number of covariates is relatively large, the existing methods require parametric models for the probability of disease or the probability of verification (given the test result and covariates), and hence are subject to model misspecification. We propose a new method for correcting verification bias based on the propensity score, defined as the predicted probability of verification given the test result and observed covariates. This is estimated separately for those with positive and negative test results. The new method classifies the verified sample into several subsamples that have homogeneous propensity scores and allows correction for verification bias. Simulation studies demonstrate that the new estimators are more robust to model misspecification than existing methods, but still perform well when the models for the probability of disease and probability of verification are correctly specified.
机译:敏感性和特异性是诊断测试准确性的常用指标。如果从适当选择的样本中的所有受试者中获得有关诊断测试结果和真实疾病状态的数据,则这些量的通常估计量将无偏见。在某些研究中,可能仅根据部分受试者的诊断测试结果和其他特征,才对部分受试者进行真实疾病状态的验证。基于受试者的这一子集的敏感性和特异性估计值通常存在偏差;这称为验证偏差。提出了以下方法来校正验证偏倚:假定疾病状态的缺失数据是随机(MAR)缺失的,也就是说,缺失的可能性仅取决于测试结果和观察到的协变量,才取决于真实(缺失)的疾病状态信息。当某些协变量是连续的,或者协变量的数量相对较大时,现有方法需要针对疾病的概率或验证的概率(根据测试结果和协变量)使用参数模型,因此会出现模型错误指定的情况。我们提出了一种基于倾向评分的校正验证偏差的新方法,该倾向评分定义为在给出测试结果和观察到的协变量的情况下验证的预测概率。对于测试结果为阳性和阴性的人,分别进行估算。新方法将经过验证的样本分为具有均等倾向得分的几个子样本,并允许对验证偏差进行校正。仿真研究表明,与现有方法相比,新的估计器对误分类的建模更为可靠,但在正确指定了疾病概率和验证概率的模型时,它们仍然可以很好地发挥作用。

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