Chen Yin-Hsiu, Mukherjee Bhramar, Berrocal Veronica J
Department of Biostatistics, University of Michigan.
J R Stat Soc Ser C Appl Stat. 2019 Jan;68(1):79-97. doi: 10.1111/rssc.12297. Epub 2018 Jul 8.
Distributed lag models (DLMs) have been widely used in environmental epidemiology to quantify the lagged effects of air pollution on a health outcome of interest such as mortality and morbidity. Most previous DLM approaches only consider one pollutant at a time. In this article, we propose distributed lag interaction model (DLIM) to characterize the joint lagged effect of two pollutants. One natural way to model the interaction surface is by assuming that the underlying basis functions are tensor products of the basis functions that generate the main-effect distributed lag functions. We extend Tukey's one-degree-of-freedom interaction structure to the two-dimensional DLM context. We also consider shrinkage versions of the two to allow departure from the specified Tukey's interaction structure and achieve bias-variance tradeoff. We derive the marginal lag effects of one pollutant when the other pollutant is fixed at certain quantiles. In a simulation study, we show that the shrinkage methods have better average performance in terms of mean squared error (MSE) across different scenarios. We illustrate the proposed methods by using the National Morbidity, Mortality, and Air Pollution Study (NMMAPS) data to model the joint effects of PM and O on mortality count in Chicago, Illinois, from 1987 to 2000.
分布滞后模型(DLMs)已广泛应用于环境流行病学,以量化空气污染对诸如死亡率和发病率等感兴趣的健康结果的滞后效应。以前的大多数DLM方法一次只考虑一种污染物。在本文中,我们提出了分布滞后交互模型(DLIM)来表征两种污染物的联合滞后效应。一种对交互表面进行建模的自然方法是假设基础函数是生成主效应分布滞后函数的基础函数的张量积。我们将图基的单自由度交互结构扩展到二维DLM环境。我们还考虑了两者的收缩版本,以允许偏离指定的图基交互结构并实现偏差 - 方差权衡。当另一种污染物固定在某些分位数时,我们推导出一种污染物的边际滞后效应。在一项模拟研究中,我们表明收缩方法在不同场景下的均方误差(MSE)方面具有更好的平均性能。我们通过使用国家发病率、死亡率和空气污染研究(NMMAPS)数据来说明所提出的方法,以对1987年至2000年伊利诺伊州芝加哥市的PM和O对死亡人数的联合效应进行建模。