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How to control for unmeasured confounding in an observational time-to-event study with exposure incidence information: the treatment choice Cox model

机译:如何控制未测量的混淆,在观察时间研究中具有曝光发病率信息:治疗选择COX模型

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摘要

In an observational study of the effect of a treatment on a time-to-event outcome, a major problem is accounting for confounding because of unknown or unmeasured factors. We propose including covariates in a Cox model that can partially account for an unknown time-independent frailty that is related to starting or stopping treatment as well as the outcome of interest. These covariates capture the times at which treatment is started or stopped and so are called treatment choice (TC) covariates. Three such models are developed: first, an interval TC model that assumes a very general form for the respective hazard functions of starting treatment, stopping treatment, and the outcome of interest and second, a parametric TC model that assumes that the log hazard functions for starting treatment, stopping treatment, and the outcome event include frailty as an additive term. Finally, a hybrid TC model that combines attributes from the parametric and interval TC models. As compared with an ordinary Cox model, the TC models are shown to substantially reduce the bias of the estimated hazard ratio for treatment when data are simulated from a realistic Cox model with residual confounding due to the unobserved frailty. The simulations also indicate that the bias decreases or levels off as the sample size increases. A TC model is illustrated by analyzing the Women's Health Initiative Observational Study of hormone replacement for post-menopausal women. Published 2017. This article has been contributed to by US Government employees and their work is in the public domain in the USA.
机译:在对治疗效果的观察研究中对时间对事件结果的影响,主要问题是由于未知或未测量的因素而核对混淆。我们建议包括在COX模型中的协调因子,可以部分地占与起动或停止治疗有关的未知时间脆弱以及感兴趣的结果。这些协变量捕获了开始或停止处理的时间,因此称为治疗选择(TC)协变量。开发了三种这样的模型:第一,一个间隔TC模型,用于开始治疗,停止治疗和兴趣结果的各个危险功能的间隔TC模型,以及假定日志危险功能的参数TC模型开始治疗,停止治疗,结果事件包括脆弱作为添加剂项。最后,将属性与参数和间隔TC模型组合的混合TC模型。与普通的Cox模型相比,当从剩余混淆的数据模拟数据模拟数据时,TC模型被示出基本上降低了治疗的估计危险比的偏差。模拟还表明,随着样本量的增加,偏置减小或缩小。通过分析妇女的健康倡议对血管骨髓妇女的替代替代品的妇女的健康倡议观察研究来说明TC模型。 2017年出版。本文已为美国政府员工捐款,他们的工作是美国的公共领域。

著录项

  • 来源
    《Statistics in medicine》 |2017年第23期|共16页
  • 作者单位

    NHLBI Off Biostat Res Div Cardiovasc Sci NIH DHHS Bld RLK2 Room 9196 Bethesda MD 20892 USA;

    NHLBI Off Biostat Res Div Cardiovasc Sci NIH DHHS Bld RLK2 Room 9196 Bethesda MD 20892 USA;

    Univ Calif Riverside Dept Stat 1430 Olmsted Hall 900 Univ Ave Riverside CA 92521 USA;

    NHLBI Off Biostat Res Div Cardiovasc Sci NIH DHHS Bld RLK2 Room 9196 Bethesda MD 20892 USA;

    Celerion Data Management &

    Biometr 621 Rose St Lincoln NE 68502 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 卫生调查与统计;
  • 关键词

    bias; frailty; hazard; matching; propensity;

    机译:偏见;脆弱;危害;匹配;倾向;

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