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Bias corrected estimates for logistic regression models for complex surveys with application to the United States’ Nationwide Inpatient Sample

机译:偏倚校正了用于复杂调查的逻辑回归模型的估计并将其应用于美国全国住院患者样本

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摘要

For complex surveys with a binary outcome, logistic regression is widely used to model the outcome as a function of covariates. Complex survey sampling designs are typically stratified cluster samples, but consistent and asymptotically unbiased estimates of the logistic regression parameters can be obtained using weighted estimating equations (WEE) under the naive assumption that subjects within a cluster are independent. Despite the relatively large samples typical of many complex surveys, with rare outcomes, many interaction terms, or analysis of subgroups, the logistic regression parameters estimates from WEE can be markedly biased, just as with independent samples. In this paper, we propose bias-corrected weighted estimating equations for complex survey data. The proposed method is motivated by a study of post-operative complications in laparoscopic cystectomy, using data from the 2009 United States’ Nationwide Inpatient Sample (NIS) complex survey of hospitals.
机译:对于具有二进制结果的复杂调查,逻辑回归被广泛用于将结果建模为协变量的函数。复杂的调查抽样设计通常是分层的集群样本,但在集群内的主体是独立的天真的假设下,可以使用加权估计方程(WEE)获得逻辑回归参数的一致且渐近无偏估计。尽管许多复杂调查中典型的样本数量相对较大,但结果很少,交互作用项多或对子组进行分析,与独立样本一样,WEE的逻辑回归参数估计值仍会明显偏颇。在本文中,我们针对复杂的调查数据提出了偏差校正的加权估计方程。这项提议的方法是通过对2009年美国全国住院样本(NIS)医院综合调查中的数据进行的腹腔镜膀胱切除术术后并发症的研究而得出的。

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