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Semiparametric Efficient Estimation for Incomplete Longitudinal Binary Data, With Application to Smoking Trends

机译:纵向不完整二进制数据的半参数有效估计及其在吸烟趋势中的应用

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摘要

Incomplete longitudinal data often are analyzed with estimating equations for inference on a parameter from a marginal mean regression model. Generalized estimating equations, although commonly used for incomplete longitudinal data, are invalid for data that are not missing completely at random. There exists a class of inverse probability weighted estimating equations that are valid under dropouts missing at random, including an easy-to-implement but inefficient member. A relatively computationally complex semiparametric efficient estimator in this class has been applied to continuous data. A specific form of this estimator is developed for binary data and used as a benchmark for assessing the efficiency of the simpler estimator in a simulation study. Both are applied in the estimation of 15-year cigarette smoking trends in the United States from a cohort of 5077 young adults. The results suggest that declines in smoking from previous reports have been exaggerated.
机译:通常使用估计方程对不完整的纵向数据进行分析,以便从边际均值回归模型推断出一个参数。广义估计方程尽管通常用于不完整的纵向数据,但对于并非随机丢失的数据无效。存在一类逆概率加权估计方程,该方程在随机丢失的缺失下有效,包括易于实现但效率低的成员。此类中相对计算复杂的半参数有效估计器已应用于连续数据。针对二进制数据开发了此估计器的一种特定形式,并用作评估模拟研究中较简单估计器效率的基准。两者均用于估计5077名年轻成年人在美国的15年吸烟趋势。结果表明,与以前的报道相比,吸烟人数的减少被夸大了。

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