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首页> 外文期刊>Journal of applied statistics >Bias from the use of generalized estimating equations to analyze incomplete longitudinal binary data
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Bias from the use of generalized estimating equations to analyze incomplete longitudinal binary data

机译:使用广义估计方程分析不完整的纵向二进制数据产生的偏差

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摘要

Patient dropout is a common problem in studies that collect repeated binary measurements. Generalized estimating equations (GEE) are often used to analyze such data. The dropout mechanism may be plausibly missing at random (MAR), i.e. unrelated to future measurements given covariates and past measurements. In this case, various authors have recommended weighted GEE with weights based on an assumed dropout model, or an imputation approach, or a doubly robust approach based on weighting and imputation. These approaches provide asymptotically unbiased inference, provided the dropout or imputation model (as appropriate) is correctly specified. Other authors have suggested that, provided the working correlation structure is correctly specified, GEE using an improved estimator of the correlation parameters ('modified GEE') show minimal bias. These modified GEE have not been thoroughly examined. In this paper, we study the asymptotic bias under MAR dropout of these modified GEE, the standard GEE, and also GEE using the true correlation. We demonstrate that all three methods are biased in general. The modified GEE may be preferred to the standard GEE and are subject to only minimal bias in many MAR scenarios but in others are substantially biased. Hence, we recommend the modified GEE be used with caution.
机译:在收集重复的二进制测量值的研究中,患者辍学是一个普遍的问题。广义估计方程(GEE)通常用于分析此类数据。丢弃机制可能似乎是随机(MAR)丢失的,即与给定协变量和过去测量的将来测量无关。在这种情况下,各种作者都建议对加权GEE进行加权,并基于假定的辍学模型,估算方法或基于加权和估算的双重稳健方法进行加权。这些方法提供了渐近无偏的推断,前提是正确指定了辍学或归因模型(视情况而定)。其他作者建议,只要正确指定了工作相关结构,使用改进的相关参数估计器(“修改的GEE”)的GEE表现出最小的偏差。这些经过修改的GEE尚未得到彻底检查。在本文中,我们使用真实的相关性研究了这些修正的GEE,标准GEE和GEE在MAR丢失下的渐近偏差。我们证明这三种方法总体上都是有偏见的。修改后的GEE可能比标准GEE更可取,并且在许多MAR方案中仅受到最小的偏差,而在其他方案中则有很大的偏差。因此,我们建议谨慎使用修改后的GEE。

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