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Evaluation of a method to indirectly adjust for unmeasured covariates in the association between fine particulate matter and mortality

机译:间接调整细颗粒物与死亡率之间未测协变量的方法的评估

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摘要

Background: Indirect adjustment via partitioned regression is a promising technique to control for unmeasured confounding in large epidemiological studies. The method uses a representative ancillary dataset to estimate the association between variables missing in a primary dataset with the complete set of variables of the ancillary dataset to produce an adjusted risk estimate for the variable in question. The objective of this paper is threefold: 1) evaluate the method for non-linear survival models, 2) formalize an empirical process to evaluate the suitability of the required ancillary matching dataset, and 3) test modifications to the method to incorporate time varying exposure data, and proportional weighting of datasets.Methods: We used the association between fine particle air pollution (PM2.5) with mortality in the 2001 Canadian Census Health and Environment Cohort (CanCHEC, N = 2.4 million, 10-years follow-up) as our primary dataset, and the 2001 cycle of the Canadian Community Health Survey (CCHS, N = 80,630) as the ancillary matching dataset that contained confounding risk factor information not available in CanCHEC (e.g., smoking). The main evaluation process used a gold-standard approach wherein two variables (education and income) available in both datasets were excluded, indirectly adjusted for, and compared to true models with education and income included to assess the amount of bias correction. An internal validation for objective 1 used only CanCHEC data, whereas an external validation for objective 2 replaced CanCHEC with the CCHS. The two proposed modifications were applied as part of the validation tests, as well as in a final indirect adjustment of four missing risk factor variables (smoking, alcohol use, diet, and exercise) in which adjustment direction and magnitude was compared to models using an equivalent longitudinal cohort with direct adjustment for the same variables.Results: At baseline (2001) both cohorts had very similar PM2.5 distributions across population characteristics, although levels for CCHS participants were consistently 1.8-2.0 mu g/m(3) lower. Applying sample-weighting largely corrected for this discrepancy. The internal validation tests showed minimal downward bias in PM2.5 mortality hazard ratios of 0.4-0.6% using a static exposure, and 1.7-3% when a time-varying exposure was used. The external validation of the CCHS as the ancillary dataset showed slight upward bias of -0.7 to -1.1% and downward bias of 1.3-2.3% using the static and time-varying approaches respectively.Conclusions: The CCHS was found to be fairly well representative of CanCHEC and its use in Canada for indirect adjustment is warranted. Indirect adjustment methods can be used with survival models to correct hazard ratio point estimates and standard errors in models missing key covariates when a representative matching dataset is available. The results of this formal evaluation should encourage other cohorts to assess the suitability of ancillary datasets for the application of the indirect adjustment methodology to address potential residual confounding.
机译:背景:通过分区回归进行间接调整是一种有前途的技术,可用于控制大型流行病学研究中无法衡量的混杂因素。该方法使用代表性的辅助数据集来估计主数据集中缺少的变量与辅助数据集的完整变量集之间的关联,从而为相关变量产生调整后的风险估计。本文的目标是三个方面:1)评估非线性生存模型的方法,2)规范化经验过程以评估所需辅助匹配数据集的适用性,以及3)对方法进行测试修改以纳入时变暴露方法:我们使用了2001年加拿大人口普查健康与环境队列中的细颗粒空气污染(PM2.5)与死亡率之间的关联(CanCHEC,N = 240万,随访10年)。作为我们的主要数据集,以及2001年加拿大社区健康调查周期(CCHS,N = 80,630)作为辅助匹配数据集,其中包含CanCHEC中未提供的令人混淆的危险因素信息(例如吸烟)。主要评估过程使用黄金标准方法,其中排除了两个数据集中可用的两个变量(教育和收入),对其进行了间接调整,并与包含教育和收入的真实模型进行了比较,以评估偏差校正的量。目标1的内部验证仅使用CanCHEC数据,而目标2的外部验证则用CCHS替换了CanCHEC。提议的两个修改方案被用作验证测试的一部分,并最终间接调整了四个缺失的风险因素变量(吸烟,饮酒,饮食和运动),其中调整方向和幅度与使用结果:在队列(2001年)中,尽管CCHS参与者的水平始终降低1.8-2.0μg / m(3),但两个队列在整个人口特征上的PM2.5分布非常相似。应用样本加权在很大程度上纠正了这种差异。内部验证测试显示,使用静态暴露时PM2.5死亡率危险比的最小向下偏差为0.4-0.6%,使用时变暴露时为1.7-3%。 CCHS作为辅助数据集的外部验证分别显示了使用静态方法和时变方法的轻微向上偏差-0.7至-1.1%和向下偏差1.3-2.3%。结论:CCHS具有很好的代表性必须保证CanCHEC及其在加拿大的间接调整用途。当有代表性的匹配数据集可用时,间接调整方法可以与生存模型一起使用,以纠正风险比点估计和缺少关键协变量的模型中的标准误差。正式评估的结果应鼓励其他队列评估辅助数据集的适用性,以应用间接调整方法来解决潜在的残留混杂问题。

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