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Hierarchical Regression for Analyses of Multiple Outcomes

机译:分层回归分析多个结果

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摘要

In cohort mortality studies, there often is interest in associations between an exposure of primary interest and mortality due to a range of different causes. A standard approach to such analyses involves fitting a separate regression model for each type of outcome. However, the statistical precision of some estimated associations may be poor because of sparse data. In this paper, we describe a hierarchical regression model for estimation of parameters describing outcome-specific relative rate functions and associated credible intervals. The proposed model uses background stratification to provide flexible control for the outcome-specific associations of potential confounders, and it employs a hierarchical "shrinkage" approach to stabilize estimates of an exposure's associations with mortality due to different causes of death. The approach is illustrated in analyses of cancer mortality in 2 cohorts: a cohort of dioxin-exposed US chemical workers and a cohort of radiation-exposed Japanese atomic bomb survivors. Compared with standard regression estimates of associations, hierarchical regression yielded estimates with improved precision that tended to have less extreme values. The hierarchical regression approach also allowed the fitting of models with effect-measure modification. The proposed hierarchical approach can yield estimates of association that are more precise than conventional estimates when one wishes to estimate associations with multiple outcomes.
机译:在队列死亡率研究中,由于一系列不同的原因,人们通常对主要关注的暴露与死亡率之间的关联感兴趣。这种分析的标准方法包括为每种类型的结果拟合一个单独的回归模型。但是,由于数据稀疏,某些估计关联的统计精度可能很差。在本文中,我们描述了用于估计参数的分层回归模型,这些参数描述了特定于结果的相对比率函数和相关的可信区间。提议的模型使用背景分层为潜在混杂因素的结果特定关联提供灵活的控制,并且采用分层“收缩”方法来稳定估计暴露与不同死亡原因导致的关联。该方法在两个队列的癌症死亡率分析中得到了说明:一组暴露于二恶英的美国化学工作者和一组暴露于辐射的日本原子弹幸存者。与关联的标准回归估计相比,层次回归产生的估计值具有更高的精确度,而极端值往往较小。层次回归方法还允许对模型进行效果量度修正。当人们希望估计具有多个结果的关联时,所提出的分层方法可以产生比常规估计更精确的关联估计。

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