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Statistical analysis of multisite time series data for estimating health effects of environmental exposures.

机译:多站点时间序列数据的统计分析,用于估计环境暴露对健康的影响。

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摘要

Multisite time series studies provide a rich data source for estimating health effects of widespread environmental exposures, such as heat waves and air pollution. In this work we develop statistical methodology motivated by three research priorities in the field of environmental epidemiology. First, we propose a framework to methodically assess future health impacts under global climate change. We apply this framework to a case study to predict future mortality attributable to heat waves in Chicago under a range of climate models and climate change scenarios. Second, we investigate the role of model uncertainty underlying heat wave risk estimates and develop a Bayesian model averaging approach to systematically account for the model uncertainty. This approach is applied to estimate the relative risk of mortality associated with heat waves in 105 US cities during the period 1987--2005. Third, we develop methodology to estimate the health effects of simultaneous exposure to multiple pollutants. While many studies have estimated risks associated with exposure to individual pollutants, this may not realistically capture true exposure to complex mixtures. We propose the reduced Bayesian hierarchical model as a new statistical approach for combining information across locations on the parameter of interest (e.g. excess number of deaths attributed to simultaneous exposure to high levels of many pollutants) when the within-location model has a large number of nuisance parameters. We apply this approach to estimate location-specific and overall relative risks of cardiovascular hospital admissions associated with simultaneous exposure to elevated levels of particulate matter and ozone in 51 US counties during the period 1999--2005.
机译:多站点时间序列研究为估算广泛的环境暴露(例如热浪和空气污染)对健康的影响提供了丰富的数据来源。在这项工作中,我们开发了以环境流行病学领域的三个研究重点为动力的统计方法。首先,我们提出了一个框架,有条不紊地评估全球气候变化对未来健康的影响。我们将此框架应用于案例研究,以预测一系列气候模型和气候变化情景下芝加哥热浪造成的未来死亡率。其次,我们调查模型不确定性在热浪风险估计中的作用,并开发一种贝叶斯模型平均方法来系统地解释模型不确定性。该方法用于估算1987--2005年期间美国105个城市与热浪相关的相对死亡风险。第三,我们开发方法来估计同时暴露于多种污染物对健康的影响。尽管许多研究都估计了与单个污染物接触的风险,但这可能无法现实地反映出对复杂混合物的真实暴露。我们建议将简化的贝叶斯分层模型作为一种新的统计方法,用于当场所内模型具有大量的相关信息时,将有关感兴趣参数的各个位置的信息(例如,由于同时暴露于许多污染物的高水平而导致的死亡人数过多)组合在一起。令人讨厌的参数。我们采用这种方法来估计1999--2005年期间美国51个县同时发生的颗粒物和臭氧水平升高相关的心血管病住院特定地点和整体相对风险。

著录项

  • 作者

    Bobb, Jennifer Feder.;

  • 作者单位

    The Johns Hopkins University.;

  • 授予单位 The Johns Hopkins University.;
  • 学科 Biology Biostatistics.;Health Sciences Epidemiology.;Statistics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 150 p.
  • 总页数 150
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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