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Expected estimating equations via EM for proportional hazards regression with covariate misclassification

机译:通过EM进行比例风险回归和协变量错误分类的期望估计方程

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摘要

In epidemiological and medical studies, covariate misclassification may occur when the observed categorical variables are not perfect measurements for an unobserved categorical latent predictor. It is well known that covariate measurement error in Cox regression may lead to biased estimation. Misclassification in covariates will cause bias, and adjustment for misclassification will be challenging when the gold standard variables are not available. In general, statistical modeling for misclassification is very different from that of the measurement error. In this paper, we investigate an approximate induced hazard estimator and propose an expected estimating equation estimator via an expectation–maximization algorithm to accommodate covariate misclassification when multiple surrogate variables are available. Finite sample performance is examined via simulation studies. The proposed method and other methods are applied to a human immunodeficiency virus clinical trial in which a few behavior variables from questionnaires are used as surrogates for a latent behavior variable.
机译:在流行病学和医学研究中,当观察到的分类变量对于未观察到的分类潜伏预测变量不是完美的测量值时,可能会发生协变量分类错误。众所周知,Cox回归中的协变量测量误差可能会导致估计偏差。协变量的错误分类将导致偏差,而在没有黄金标准变量时,错误分类的调整将具有挑战性。通常,用于分类错误的统计建模与测量误差的建模非常不同。在本文中,我们研究了一种近似的诱发危害估计量,并通过期望最大化算法提出了一个期望估计方程估计量,以在多个替代变量可用时适应协变量错误分类。通过模拟研究检查有限的样品性能。拟议的方法和其他方法应用于人类免疫缺陷病毒临床试验,其中使用问卷中的一些行为变量作为潜在行为变量的替代物。

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