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Mantel-Haenszel Estimators of Odds Ratios for Stratified Dependent Binomial Data

机译:分层相依二项式数据的奇数比的Mantel-Haenszel估计

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摘要

A standard approach to analyzing n binary matched pairs being usually represented in n 2 x 2 tables is to apply a subject-specifi c model; for the simplest situation it is the so-called Rasch Model. An alternative population-averaged approach is to apply a marginal model to the single 2 x 2 table formed by n subjects. For the situation of having an additional strati cation variable with K levels forming K 2 x 2 tables, standard fitting approaches, such as generalized estimating equations and maximum likelihood, or alternatively the standard Mantel-Haenszel (MH) estimator can be applied. However, while all these standard approaches are consistent under a large stratum limiting model, they are not consistent under a sparse-data limiting model. In this paper, we propose a new MH estimator along with a variance estimator that are both dually consistent; consistent under large stratum and under sparse data limiting situations. In a simulation study the properties of the proposed estimators are confi rmed and the estimator is compared with standard marginal methods, and also with subject-specifi c estimators. The simulation study also considers the case when the homogeneity assumption of the odds ratios does not hold and the asymptotic limit of the proposed MH estimator under this situation is derived. The results show that the proposed MH estimator is generally better than the standard estimator, and the same can be said about the associated Wald-type con fidence intervals.
机译:分析通常在n 2 x 2表中表示的n个二进制匹配对的标准方法是应用主题特定的模型。对于最简单的情况,它就是所谓的Rasch模型。另一种人口平均方法是将边际模型应用于由n个对象组成的单个2 x 2表。对于具有形成K 2 x 2表格的K级的附加分层变量的情况,可以使用标准拟合方法(例如广义估计方程和最大似然),或者使用标准Mantel-Haenszel(MH)估计器。但是,尽管所有这些标准方法在一个较大的层限制模型下都是一致的,但在稀疏数据限制模型下却不一致。在本文中,我们提出了一个新的MH估计量和方差估计量,它们都是双重一致的。在大阶层和稀疏数据限制情况下保持一致。在仿真研究中,对所提出的估计量的性质进行了确认,并将估计量与标准边际方法以及主题估计量进行了比较。仿真研究还考虑了这样一种情况,即当比值比的均质性假设不成立并且在这种情况下推导了拟议的MH估计量的渐近极限。结果表明,所提出的MH估计量通常比标准估计量要好,并且相关联的Wald型置信区间也可以这样说。

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    Suesse, Thomas; Liu, Ivy;

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  • 年度 2010
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