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Implementation of Instrumental Variable Bounds for Data Missing Not at Random

机译:用于缺少随机的数据的乐器变量界限

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摘要

Instrumental variables are routinely used to recover a consistent estimator of an exposure causal effect in the presence of unmeasured confounding. Instrumental variable approaches to account for nonignorable missing data also exist but are less familiar to epidemiologists. Like instrumental variables for exposure causal effects, instrumental variables for missing data rely on exclusion restriction and instrumental variable relevance assumptions. Yet these two conditions alone are insufficient for point identification. For estimation, researchers have invoked a third assumption, typically involving fairly restrictive parametric constraints. Inferences can be sensitive to these parametric assumptions, which are typically not empirically testable. The purpose of our article is to discuss another approach for leveraging a valid instrumental variable. Although the approach is insufficient for nonparametric identification, it can nonetheless provide informative inferences about the presence, direction, and magnitude of selection bias, without invoking a third untestable parametric assumption. An important contribution of this article is an Excel spreadsheet tool that can be used to obtain empirical evidence of selection bias and calculate bounds and corresponding Bayesian 95% credible intervals for a nonidentifiable population proportion. For illustrative purposes, we used the spreadsheet tool to analyze HIV prevalence data collected by the 2007 Zambia Demographic and Health Survey (DHS).
机译:仪器变量通常用于在存在未测量的混淆存在下恢复曝光因果效应的一致估计。仪器可变方法来解释非无知缺失数据,但流行病学家也不熟悉。与曝光因果效应的仪器变量一样,缺失数据的乐器变量依赖于排除限制和仪器变量相关假设。然而,这两个条件单独不足以进行点识别。对于估计,研究人员已经调用了第三个假设,通常涉及相当于限制的参数限制。推论可以对这些参数假设敏感,这通常不是经验可测试的。我们的文章的目的是讨论利用有效的工具变量的另一种方法。尽管该方法不足以非参数识别,但是尽管如此,它可以提供关于选择偏差的存在,方向和幅度的信息推论,而不调用第三不可竞争的参数假设。本文的一个重要贡献是一个Excel电子表格工具,可用于获得选择偏见的经验证据,并计算非识别人口比例的界限和相应的贝叶斯95%可信间隔。出于说明性目的,我们使用了电子表格工具来分析2007年赞比亚人口和健康调查(DHS)收集的艾滋病毒患病率数据。

著录项

  • 来源
    《Epidemiology》 |2018年第3期|共5页
  • 作者单位

    Harvard TH Chan Sch Publ Hlth Dept Epidemiol 677 Huntington Ave Boston MA 02115 USA;

    Harvard TH Chan Sch Publ Hlth Dept Biostat Boston MA USA;

    Harvard TH Chan Sch Publ Hlth Dept Epidemiol 677 Huntington Ave Boston MA 02115 USA;

    Univ Calif San Francisco Dept Epidemiol &

    Biostat San Francisco CA 94143 USA;

    Univ Calif San Francisco Dept Epidemiol &

    Biostat San Francisco CA 94143 USA;

    Harvard TH Chan Sch Publ Hlth Dept Epidemiol 677 Huntington Ave Boston MA 02115 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 流行病学与防疫;
  • 关键词

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