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Analysis of Longitudinal Ordinal Data with Drop-outs

机译:辍学型纵向数据分析

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摘要

Incomplete data are common problems in longitudinal studies. For incomplete longitudinal binary data, Fitzmaurice et al. (2001) discussed the impact on bias of the different estimating equation approaches where incompleteness follows a MAR (missing at random) process. They pointed out that GEE (generalized estimating equations) method proposed by Liang and Zeger (1986) has manifest bias as MAR drop-out rate increases. The main purpose of this article is to explore the performance of two group sequential tests based on GLMMs (generalized linear mixed models) and GEE models for analyzing longitudinal ordinal data under a variety of drop-out processes.
机译:不完整的数据是纵向研究中的常见问题。对于不完整的纵向二进制数据,Fitzmaurice等。 (2001)讨论了对不同估计方程偏差的影响,其中不完备的方法遵循MAR(随机缺失)过程。他们指出,梁和Zeger(1986)提出的GEE(广义估计方程)方法具有明显的偏置作为MAS辍学率增加。本文的主要目的是探讨基于GLMMS(广义线性混合模型)和GEE模型的两组连续测试的性能,用于在各种省略过程下分析纵向数据。

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