Evaluating air quality interventions is confronted with the challenge of interference since interventions at a particular pollution source likely impact air quality and health at distant locations and air quality and health at any given location are likely impacted by interventions at many sources. The structure of interference in this context is dictated by complex atmospheric processes governing how pollution emitted from a particular source is transformed and transported across space, and can be cast with a bipartite structure reflecting the two distinct types of units: 1) interventional units on which treatments are applied or withheld to change pollution emissions; and 2) outcome units on which outcomes of primary interest are measured. We propose new estimands for bipartite causal inference with interference that construe two components of treatment: a "key-associated" (or "individual") treatment and an "upwind" (or "neighborhood") treatment. Estimation is carried out using a semi-parametric adjustment approach based on joint propensity scores. A reduced-complexity atmospheric model is deployed to characterize the structure of the interference network by modeling the movement of air parcels through time and space. The new methods are deployed to evaluate the effectiveness of installing flue-gas desulfurization scrubbers on 472 coal-burning power plants (the interventional units) in reducing Medicare hospitalizations among 21,577,552 Medicare beneficiaries residing across 25,553 ZIP codes in the United States (the outcome units).
翻译:评估空气质量的干预措施面临干扰的挑战,因为对某一污染源的干预可能影响遥远地点的空气质量和健康,而任何特定地点的空气质量和健康,可能受到许多来源的干预的影响。这一背景下的干扰结构是由复杂的大气过程决定的,这些过程决定了特定来源排放的污染是如何转化和跨空间运输的,并且可以采用反映两种不同类型单位的双向结构来进行:1) 采用或停止治疗以改变污染排放的干预单位;2) 测量主要利益结果的结果单位。我们建议对干扰进行新的估计,即干扰分为两种治疗组成部分:“关键相关”(或“个人”)的处理和“上风”(或“邻里居地”)的处理。 利用基于联合性分数的半参数调整方法来进行刺激。 使用一个降低兼容性的大气大气模型,通过模拟空中包裹在时间和空间之间的移动来确定干扰网络的结构特征。我们建议采用新的估计值,即“关键相关”治疗和“上”的“上”治疗。55国采用新的方法,用于评估在25级标准中安装氟气的燃料的动力-标准。