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Bayesian mixture modeling approaches for intermediate variables and causal inference.

机译:贝叶斯混合建模方法用于中间变量和因果推断。

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摘要

This thesis examines causal inference related topics involving intermediate variables, and uses Bayesian methodologies to advance analysis capabilities in these areas. First, joint modeling of outcome variables with intermediate variables is considered in the context of birthweight and censored gestational age analyses. The proposed methodology provides improved inference capabilities for birthweight and gestational age, avoids post-treatment selection bias problems associated with conditional on gestational age analyses, and appropriately assesses the uncertainty associated with censored gestational age. Second, principal stratification methodology for settings where causal inference analysis requires appropriate adjustment of intermediate variables is extended to observational settings with binary treatments and binary intermediate variables. This is done by uncovering the structural pathways of unmeasured confounding affecting principal stratification analysis and directly incorporating them into a model based sensitivity analysis methodology. Demonstration focuses on a study of the efficacy of influenza vaccination in elderly populations. Third, flexibility, interpretability, and capability of principal stratification analyses for continuous intermediate variables are improved by replacing the current fully parametric methodologies with semi-parametric Bayesian alternatives. This presentation is one of the first uses of nonparametric techniques in causal inference analysis, and opens a connection between these two fields. Demonstration focuses on two studies, one involving a cholesterol reduction drug, and one examine the effect of physical activity on cardiovascular disease as it relates to body mass index.
机译:本文研究了涉及中间变量的因果推理相关主题,并使用贝叶斯方法提高了这些领域的分析能力。首先,在出生体重和审查胎龄分析的背景下考虑对结果变量与中间变量进行联合建模。所提出的方法为出生体重和胎龄提供了改进的推断能力,避免了与胎龄分析条件相关的治疗后选择偏倚问题,并适当地评估了与胎龄被审查有关的不确定性。其次,因果推理分析需要适当调整中间变量的环境的主要分层方法已扩展到具有二元处理和二元中间变量的观测环境。这是通过揭示影响主分层分析的无法衡量的混杂因素的结构途径,并将它们直接纳入基于模型的敏感性分析方法中来完成的。演示集中于对老年人接种流感疫苗的功效的研究。第三,通过用半参数贝叶斯替代方法替代当前的全参数方法,提高了连续中间变量的主分层分析的灵活性,可解释性和能力。本演示文稿是因果关系分析中非参数技术的首次使用之一,并打开了这两个领域之间的联系。演示集中于两项研究,一项涉及降低胆固醇的药物,一项研究运动对心血管疾病的影响,因为它与体重指数有关。

著录项

  • 作者

    Schwartz, Scott Lee.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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