a Cox Associates , Denver , CO , USA.
Crit Rev Toxicol. 2017 Aug;47(7):603-631. doi: 10.1080/10408444.2017.1311838. Epub 2017 Jun 28.
Concentration-response (C-R) functions relating concentrations of pollutants in ambient air to mortality risks or other adverse health effects provide the basis for many public health risk assessments, benefits estimates for clean air regulations, and recommendations for revisions to existing air quality standards. The assumption that C-R functions relating levels of exposure and levels of response estimated from historical data usefully predict how future changes in concentrations would change risks has seldom been carefully tested. This paper critically reviews literature on C-R functions for fine particulate matter (PM2.5) and mortality risks. We find that most of them describe historical associations rather than valid causal models for predicting effects of interventions that change concentrations. The few papers that explicitly attempt to model causality rely on unverified modeling assumptions, casting doubt on their predictions about effects of interventions. A large literature on modern causal inference algorithms for observational data has been little used in C-R modeling. Applying these methods to publicly available data from Boston and the South Coast Air Quality Management District around Los Angeles shows that C-R functions estimated for one do not hold for the other. Changes in month-specific PM2.5 concentrations from one year to the next do not help to predict corresponding changes in average elderly mortality rates in either location. Thus, the assumption that estimated C-R relations predict effects of pollution-reducing interventions may not be true. Better causal modeling methods are needed to better predict how reducing air pollution would affect public health.
浓度-反应(C-R)函数将环境空气中污染物浓度与死亡率风险或其他不良健康影响联系起来,为许多公共卫生风险评估、清洁空气法规的效益估计以及修订现有空气质量标准的建议提供了依据。从历史数据中估计的暴露水平与反应水平之间的 C-R 函数可以有效地预测未来浓度变化将如何改变风险,这种假设很少被仔细检验。本文批判性地回顾了有关细颗粒物(PM2.5)和死亡率风险的 C-R 函数的文献。我们发现,它们大多数描述的是历史关联,而不是预测干预措施改变浓度时影响的有效因果模型。少数明确试图建立因果关系的论文依赖未经证实的建模假设,这使得它们对干预措施影响的预测值得怀疑。关于观察数据的现代因果推理算法的大量文献在 C-R 建模中很少使用。将这些方法应用于波士顿和洛杉矶南部海岸空气质量管理区的公开可用数据表明,为一个地区估计的 C-R 函数不适用于另一个地区。从一年到下一年,逐月 PM2.5 浓度的变化无助于预测这两个地区老年死亡率的相应变化。因此,估计的 C-R 关系预测减少污染干预措施效果的假设可能不正确。需要更好的因果建模方法来更好地预测减少空气污染将如何影响公众健康。