Causal inference in spatial settings is met with unique challenges and opportunities. On one hand, a unit's outcome can be affected by the exposure at many locations, leading to interference. On the other hand, unmeasured spatial variables can confound the effect of interest. Our work has two overarching goals. First, using causal diagrams, we illustrate that spatial confounding and interference can manifest as each other, meaning that investigating the presence of one can lead to wrongful conclusions in the presence of the other, and that statistical dependencies in the exposure variable can render standard analyses invalid. This can have crucial implications for analyzing data with spatial or other dependencies, and for understanding the effect of interventions on dependent units. Secondly, we propose a parametric approach to mitigate bias from local and neighborhood unmeasured spatial confounding and account for interference simultaneously. This approach is based on simultaneous modeling of the exposure and the outcome while accounting for the presence of spatially-structured unmeasured predictors of both variables. We illustrate our approach with a simulation study and with an analysis of the local and interference effects of sulfur dioxide emissions from power plants on cardiovascular mortality.
翻译:一方面,一个单位的结果可能因许多地点的暴露而受到影响,从而导致干扰;另一方面,不测的空间变量可能会混淆利益的影响。我们的工作有两个总体目标。首先,我们使用因果图表表明,空间混乱和干扰可以相互表现,这意味着调查一个人的存在可能导致在另一个地方出现错误的结论,接触变量中的统计依赖性可能使标准分析无效。这可能对分析空间依赖性数据或其他依赖性数据以及了解干预对依赖性单位的影响产生至关重要的影响。第二,我们提出一个参数性方法,以同时减少地方和邻里未经计量的空间混和干扰的偏差,同时考虑干扰。这一方法基于同时对暴露和结果的建模,同时计算两种变量的空间结构不测预测器的存在。我们用模拟研究来说明我们的方法,并分析电厂二氧化碳排放对心血管死亡率的局部影响和干扰影响。</s>