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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Generalized Estimating Equations for Ordinal Categorical Data: Aribitrary Patterns of Missing Responses and Missingness in a Key Covariate
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Generalized Estimating Equations for Ordinal Categorical Data: Aribitrary Patterns of Missing Responses and Missingness in a Key Covariate

机译:有序分类数据的广义估计方程:关键协变量中缺失响应和缺失的任意模式

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摘要

We propose methods for regression analysis of repeatedly measured ordinal categorical data when there is nonmonotone missingness in these responses and when a key covariate is missing depending on observables. The methods use ordinal regression models in conjunction with generalized estimating equations (GEEs). We extend the GEE methodology to accommodate arbitrary patterns of missingness in the responses when this missingness is independent of the unobserved responses. We further extend the methodology to provide correction for possible bias when missingness in knowledge of a key covariate may depend on observables. The approach is illustrated with the analysis of data from a study in diagnostic oncology in which multiple correlated receiver operating characteristic curves are estimated and corrected for possible verification bias when the true disease status is missing depending on observables.
机译:当这些响应中存在非单调缺失并且根据观察值缺少关键协变量时,我们提出了对重复测量的有序分类数据进行回归分析的方法。该方法将序数回归模型与广义估计方程(GEE)结合使用。当这种缺失与未观察到的响应无关时,我们扩展了GEE方法以适应响应中的任意缺失模式。当关键协变量知识的缺失可能取决于可观察变量时,我们将进一步扩展方法,以提供可能的偏差的校正。通过对诊断肿瘤学研究数据的分析来说明该方法,其中,根据可观察性,当缺少真实疾病状态时,估计并校正多个相关的接收器工作特性曲线,以得到可能的验证偏差。

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