Cox Associates and University of Colorado, 503 N. Franklin Street, Denver, CO 80218, USA.
Environ Res. 2018 Jul;164:636-646. doi: 10.1016/j.envres.2018.03.038. Epub 2018 Apr 5.
Associations between fine particulate matter (PM2.5) exposure concentrations and a wide variety of undesirable outcomes, from autism and auto theft to elderly mortality, suicide, and violent crime, have been widely reported. Influential articles have argued that reducing National Ambient Air Quality Standards for PM2.5 is desirable to reduce these outcomes. Yet, other studies have found that reducing black smoke and other particulate matter by as much as 70% and dozens of micrograms per cubic meter has not detectably affected all-cause mortality rates even after decades, despite strong, statistically significant positive exposure concentration-response (C-R) associations between them. This paper examines whether this disconnect between association and causation might be explained in part by ignored estimation errors in estimated exposure concentrations. We use EPA air quality monitor data from the Los Angeles area of California to examine the shapes of estimated C-R functions for PM2.5 when the true C-R functions are assumed to be step functions with well-defined response thresholds. The estimated C-R functions mistakenly show risk as smoothly increasing with concentrations even well below the response thresholds, thus incorrectly predicting substantial risk reductions from reductions in concentrations that do not affect health risks. We conclude that ignored estimation errors obscure the shapes of true C-R functions, including possible thresholds, possibly leading to unrealistic predictions of the changes in risk caused by changing exposures. Instead of estimating improvements in public health per unit reduction (e.g., per 10 µg/m decrease) in average PM2.5 concentrations, it may be essential to consider how interventions change the distributions of exposure concentrations.
细颗粒物(PM2.5)暴露浓度与各种不良后果之间的关联,从自闭症和汽车盗窃到老年人死亡率、自杀和暴力犯罪,已经被广泛报道。有影响力的文章认为,降低国家环境空气质量标准(PM2.5)以减少这些后果是可取的。然而,其他研究发现,即使经过几十年,将黑烟尘和其他颗粒物减少多达 70%和数十微克/立方米,也不会明显影响全因死亡率,尽管它们之间存在强烈的、统计学上显著的正暴露浓度-反应(C-R)关联。本文探讨了这种关联和因果关系之间的脱节是否部分可以用被忽视的暴露浓度估计误差来解释。我们使用加利福尼亚州洛杉矶地区的美国环保署空气质量监测数据,在假设真实 C-R 函数为具有明确定义的响应阈值的阶跃函数的情况下,检验 PM2.5 的估计 C-R 函数的形状。估计的 C-R 函数错误地显示风险随着浓度的增加而平稳增加,即使在响应阈值以下,从而错误地预测了浓度降低带来的实质性风险降低,而这些浓度实际上并不影响健康风险。我们得出结论,被忽视的估计误差掩盖了真实 C-R 函数的形状,包括可能的阈值,这可能导致对暴露变化引起的风险变化的不切实际的预测。与其估计每减少单位(例如每降低 10μg/m)平均 PM2.5 浓度对公共健康的改善,考虑干预措施如何改变暴露浓度的分布可能至关重要。