Dominici F, Zeger S L, Samet J M
Department of Biostatistics, The Johns Hopkins University School of Hygiene and Public Health, Baltimore, MD 21205-3179, USA.
Biostatistics. 2000 Jun;1(2):157-75. doi: 10.1093/biostatistics/1.2.157.
One barrier to interpreting the observational evidence concerning the adverse health effects of air pollution for public policy purposes is the measurement error inherent in estimates of exposure based on ambient pollutant monitors. Exposure assessment studies have shown that data from monitors at central sites may not adequately represent personal exposure. Thus, the exposure error resulting from using centrally measured data as a surrogate for personal exposure can potentially lead to a bias in estimates of the health effects of air pollution. This paper develops a multi-stage Poisson regression model for evaluating the effects of exposure measurement error on estimates of effects of particulate air pollution on mortality in time-series studies. To implement the model, we have used five validation data sets on personal exposure to PM10. Our goal is to combine data on the associations between ambient concentrations of particulate matter and mortality for a specific location, with the validation data on the association between ambient and personal concentrations of particulate matter at the locations where data have been collected. We use these data in a model to estimate the relative risk of mortality associated with estimated personal-exposure concentrations and make a comparison with the risk of mortality estimated with measurements of ambient concentration alone. We apply this method to data comprising daily mortality counts, ambient concentrations of PM10measured at a central site, and temperature for Baltimore, Maryland from 1987 to 1994. We have selected our home city of Baltimore to illustrate the method; the measurement error correction model is general and can be applied to other appropriate locations.Our approach uses a combination of: (1) a generalized additive model with log link and Poisson error for the mortality-personal-exposure association; (2) a multi-stage linear model to estimate the variability across the five validation data sets in the personal-ambient-exposure association; (3) data augmentation methods to address the uncertainty resulting from the missing personal exposure time series in Baltimore. In the Poisson regression model, we account for smooth seasonal and annual trends in mortality using smoothing splines. Taking into account the heterogeneity across locations in the personal-ambient-exposure relationship, we quantify the degree to which the exposure measurement error biases the results toward the null hypothesis of no effect, and estimate the loss of precision in the estimated health effects due to indirectly estimating personal exposures from ambient measurements.
出于公共政策目的,解读有关空气污染对健康产生不良影响的观测证据时,一个障碍是基于环境污染物监测器的暴露估计中固有的测量误差。暴露评估研究表明,中心站点监测器的数据可能无法充分代表个人暴露情况。因此,将集中测量的数据用作个人暴露的替代指标所产生的暴露误差,可能会导致空气污染对健康影响估计的偏差。本文开发了一种多阶段泊松回归模型,用于评估暴露测量误差对时间序列研究中颗粒物空气污染对死亡率影响估计的作用。为了实施该模型,我们使用了五个关于个人接触PM10的验证数据集。我们的目标是将特定地点颗粒物环境浓度与死亡率之间关联的数据,与在已收集数据的地点颗粒物环境浓度与个人浓度之间关联的验证数据相结合。我们在一个模型中使用这些数据来估计与估计的个人暴露浓度相关的死亡相对风险,并与仅用环境浓度测量估计的死亡风险进行比较。我们将此方法应用于包含1987年至1994年马里兰州巴尔的摩市每日死亡人数、中心站点测量的PM10环境浓度以及温度的数据。我们选择家乡巴尔的摩市来说明该方法;测量误差校正模型具有通用性,可应用于其他合适的地点。我们的方法结合了以下几点:(1)用于死亡率与个人暴露关联的具有对数链接和泊松误差的广义相加模型;(2)用于估计五个验证数据集在个人与环境暴露关联中的变异性的多阶段线性模型;(3)数据增强方法,以解决巴尔的摩市缺失个人暴露时间序列所导致的不确定性。在泊松回归模型中,我们使用平滑样条来考虑死亡率中平滑的季节性和年度趋势。考虑到个人与环境暴露关系在不同地点的异质性,我们量化暴露测量误差使结果偏向无影响的零假设的程度,并估计由于从环境测量间接估计个人暴露而导致的估计健康影响精度损失。