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Applications of Causal Inference to Problems of Occupational Epidemiology.

机译:因果推理在职业流行病学问题中的应用。

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摘要

This dissertation concerns the application of the techniques of causal inference to problems of occupational health. The abstracts of the three works which comprise the primary substance of this disseration are reproduced below.;The healthy worker survivor effect (HWSE) is a feature of occupational cohort studies which can lead to biased estimates of the etiologic effects of exposures if the estimation procedure does not account for its sources. The HWSE arises from underlying temporal processes characteristic of working populations in which time-varying health status is a criteria for entry into follow-up as well as both a predictor and a consequence of exposure. We distinguish two sources of HWSE: left-truncation in the presence of heterogeneous susceptibility as well as time-varying confounding on the causal pathway. We apply longitudinal minimum-loss-based estimation to simulated data in order to illustrate the effect of each process on estimates of exposure response, and clarify the extent to which methodological solutions can properly adjust for the bias.;We consider the problem of the estimation of parameters of the full-data distribution from data structures in which some confounding variables are unmeasured in a portion of the population. Our focus is on evaluating approaches to implementation of an augmented inverse probability of censoring weighted targeted minimum-loss based estmator (A-IPCW TMLE) first proposed by Rose and Van der Laan. This is an inverse probability weighted estimator in which estimation proceeds using a reweighted set of fully observed data points. The weights used are the inverses the estimated probability of being fully observed which is then augmented by an estimate of the expectation of the full data influence function, given the always observed variables. The estimator's performance is compared to standard weighting approaches and multiple imputation in both a simulation study and an applied data example.;We investigate the effect of cumulative exposure to particulate matter with an aerodynamic diameter < 2.5 mum (PM2.5) on the incidence of ischemic heart disease (IHD) in a cohort of aluminum workers followed for 15 years, adjusting for time-varying confounding affected by prior exposure. We use longitudinal targeted minimum-loss based estimation (TMLE) to estimate the cumulative risk difference for IHD if always exposed above an exposure cut-off compared to always exposed below, while never censored. We stratify our analyses by sub-cohort employed in the smelters versus fabrication facilities. We selected two exposure cut-offs a priori, at the median and 10th percentile, within each sub-cohort. In smelters, the estimated IHD risk difference after 15 years is 2.1% (-1.3%, 5.5%) if always exposed compared to never exposed above the median cut-off of 1.77 mg/m3 and 2.9% (0.6%, 5.1%) using the 10th percentile cutoff of 0.10 mg/m3. For fabrication workers, the estimated risk difference is 0.9% (-1.6%, 3.5%) using the median cut-off of 0.20 mg/m3 and 2.5% (0.8%, 4.1%) using the 10th percentile cut-off of 0.06 mg/m3. Results are presented as marginal incidence curves, describing the cumulative risk of IHD for each sub-cohort under each intervention regimen. By control of the time-varying confounding on the causal pathway that characterizes healthy worker survivor effect, TMLE estimated associations between cumulative PM2.5 exposure and IHD that were not detectable using standard analytical techniques in a previous report. This represents the first longitudinal application of TMLE, a method for generating doubly robust semi-parametric efficient substitution estimators, in the field of occupational and environmental epidemiology.
机译:本文涉及因果推理技术在职业健康问题中的应用。构成本论文主要内容的三部作品的摘要摘录如下:健康工人幸存者效应(HWSE)是职业队列研究的一个特征,如果采用估算程序,可能会导致对暴露的病因学效应的估计偏差。不说明其来源。 HWSE源自工作人群的基本时间过程,在该过程中,时变的健康状况是进行随访的标准,同时也是暴露的预测因素和后果。我们区分HWSE的两个来源:存在异质易感性的左截短以及因果路径上的时变混杂。我们将基于纵向最小损失的估计值应用于模拟数据,以说明每个过程对暴露响应估计值的影响,并阐明方法解决方案可以针对偏差进行适当调整的程度。来自数据结构的完整数据分布的参数,在该数据结构中,一部分人口中未测量一些混淆变量。我们的重点是评估由Rose和Van der Laan首次提出的,用于审查加权加权基于最小损失的估计量(A-IPCW TMLE)的增强逆概率实现方法的方法。这是逆概率加权估计器,其中,使用完全观察到的数据点的重新加权集进行估计。所使用的权重是被完全观察到的估计概率的倒数,然后在给定始终观察到的变量的情况下,通过对完整数据影响函数的期望值的估计来增加估计的概率。在模拟研究和应用数据示例中,将估算器的性能与标准加权方法和多次插值进行了比较;我们研究了空气动力学直径<2.5微米(PM2.5)的颗粒物质的累积暴露对空气质量发生率的影响在一组铝工人中进行了长达15年的缺血性心脏病(IHD)校正,以适应受先前暴露影响的随时间变化的混杂因素。我们使用纵向目标最小损失基估计(TMLE)来评估IHD的累积风险差异(如果始终暴露在暴露临界值以上而始终暴露在暴露临界值以下而从未审查)。我们根据冶炼厂和制造厂所采用的子队列对分析进行分层。我们在每个亚人群中选择了两个先验暴露阈值,即中位数和第10个百分位数。在冶炼厂中,如果始终暴露,则15年后的IHD风险估计差异为2.1%(-1.3%,5.5%),而从未暴露于中值临界值1.77 mg / m3和2.9%(0.6%,5.1%)之间使用0.10 mg / m3的第十个百分位数截止值。对于制造工人,使用0.20 mg / m3的中位数临界值,估计的风险差异为0.9%(-1.6%,3.5%),使用0.06 mg的第十个百分位数临界值,估计的风险差异为2.5%(0.8%,4.1%) /立方米。结果显示为边际发生率曲线,描述了每种干预方案下每个亚人群IHD的累积风险。通过控制表征健康工人幸存者效应的因果路径上随时间变化的混淆,TMLE估计了以前报告中使用标准分析技术无法检测到的累积PM2.5暴露与IHD之间的关联。这代表了TMLE在职业和环境流行病学领域的首次纵向应用,TMLE是一种用于生成双重鲁棒的半参数有效替代估计量的方法。

著录项

  • 作者

    Brown, Daniel Martin.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Biology Biostatistics.;Health Sciences Occupational Health and Safety.;Health Sciences Epidemiology.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 101 p.
  • 总页数 101
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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