Rich David Q
Departments of Public Health Sciences and Environmental Medicine, University of Rochester, School of Medicine and Dentistry, Rochester, NY, United States.
Environ Int. 2017 Mar;100:62-78. doi: 10.1016/j.envint.2016.12.019. Epub 2017 Jan 13.
To address limitations of observational epidemiology studies of air pollution and health effects, including residual confounding by temporal and spatial factors, several studies have taken advantage of 'natural experiments', where an environmental policy or air quality intervention has resulted in reductions in ambient air pollution concentrations. Researchers have examined whether the population impacted by these air quality improvements, also experienced improvements in various health indices (e.g. reduced morbidity/mortality). In this paper, I review key accountability studies done previously and new studies done over the past several years in Beijing, Atlanta, London, Ireland, and other locations, describing study design and analysis strengths and limitations of each. As new 'natural experiment' opportunities arise, several lessons learned from these studies should be applied when planning a new accountability study. Comparison of health outcomes during the intervention to both before and after the intervention in the population of interest, as well as use of a control population to assess whether any temporal changes in the population of interest were also seen in populations not impacted by air quality improvements, should aid in minimizing residual confounding by these long term time trends. Use of either detailed health records for a population, or prospectively collected data on relevant mechanistic biomarkers coupled with such morbidity/mortality data may provide a more thorough assessment of if the intervention beneficially impacted the health of the community, and if so by what mechanism(s). Further, prospective measurement of a large suite of air pollutants may allow a more thorough understanding of what pollutant source(s) is/are responsible for any health benefit observed. The importance of using multiple statistical analysis methods in each paper and the difference in how the timing of the air pollution/outcome association may impact which of these design features is most important is also discussed. Based on these and other lessons learned, researchers may provide a more epidemiologically rigorous evaluation of cause-specific health impacts of an air quality intervention or action.
为解决空气污染与健康影响的观察性流行病学研究的局限性,包括时间和空间因素导致的残余混杂问题,多项研究利用了“自然实验”,即一项环境政策或空气质量干预措施使环境空气污染浓度降低。研究人员考察了受这些空气质量改善措施影响的人群,其各项健康指标是否也有所改善(如发病率/死亡率降低)。在本文中,我回顾了此前开展的关键问责研究以及过去几年在北京、亚特兰大、伦敦、爱尔兰和其他地区开展的新研究,描述了每项研究的设计及分析的优势与局限性。随着新的“自然实验”机会出现,在规划新的问责研究时应借鉴从这些研究中吸取的若干经验教训。将干预期间的健康结果与目标人群干预前和干预后的结果进行比较,以及使用对照人群来评估在未受空气质量改善影响的人群中是否也观察到目标人群的任何时间变化,这应有助于将这些长期时间趋势导致的残余混杂降至最低。使用某人群的详细健康记录,或前瞻性收集的相关机制生物标志物数据以及此类发病率/死亡率数据,可能会更全面地评估干预措施是否对社区健康产生了有益影响,若有影响,其作用机制是什么。此外,对大量空气污染物进行前瞻性测量,可能会更全面地了解是哪些污染物源导致了所观察到的任何健康益处。本文还讨论了在每篇论文中使用多种统计分析方法的重要性,以及空气污染/结果关联的时间安排如何影响这些设计特征中哪一个最为重要。基于这些及其他经验教训,研究人员可以对空气质量干预措施或行动对特定病因的健康影响进行更符合流行病学规范的评估。