第1部分。空气污染对死亡率的短期影响:来自印度金奈的时间序列分析结果。

Kalpana Balakrishnan, Bhaswati Ganguli, Santu Ghosh, S Sankar, Vijaylakshmi Thanasekaraan, V N Rayudu, Harry Caussy
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引用次数: 0

摘要

本报告描述了短期暴露于空气动力学直径<或= 10pm (PM10)的颗粒物对印度金奈(原马德拉斯)大都市死亡率影响的时间序列分析结果。这是HEI作为其亚洲公共卫生和空气污染(PAPA)倡议的一部分选择的印度三个地点之一。这项研究对2002年至2004年的回顾性数据进行了整合和分析。数据来自负责日常数据收集的相关政府机构。气象混杂因素(包括温度、相对湿度和露点)的数据在研究期间的所有日子都是可用的。全天的死亡率数据也可获得,但无法可靠地确定死因(包括意外死亡)的信息。因此,只有全因日死亡率被用作时间序列分析的主要结果。PM10、二氧化氮(NO2)和二氧化硫(SO2)的数据仅限于较短的天数,但涵盖了整个研究期间。由于气体污染物测量的低灵敏度导致数据限制,导致在主要分析中仅使用PM10。在该市运行的8个环境空气质量监测站中,有7个达到了为印度的三个PAPA研究制定的共同规程中规定的选择标准。此外,分析中使用的所有原始数据都经过额外的质量保证(QA)和质量控制(QC)标准,以确保测量的有效性。金奈PM10数据集的两个显著特征是高缺失读数百分比和AQMs记录的每日数据之间的低相关性。造成后者的部分原因是每个空气质量指标的足迹都很小(空气质量指标中记录的空气污染物测量值被认为有效的大致面积),部分原因是城市内10个区域的污染源概况存在差异。这些区域是由金奈公司根据人口密度定义的。开发了替代暴露序列来控制这些数据特征。我们首先基于单个AQMs和多个AQMs的数据开发了暴露序列。由于没有发现两者都能令人满意地代表人口暴露,我们随后开发了一个暴露序列,将污染物数据分解到城市边界内的各个区域。尽管存在一些不确定性,但发现在其他可用的选择中,区域序列最能代表人口暴露。因此,核心模型是使用来自各个区域的分类死亡率和污染物数据开发的地带性模型。我们使用了准泊松广义加性模型(GAMs),该模型具有时间、温度和相对湿度的光滑函数,使用惩罚样条建模。选择这些混杂因素的自由度(df)以最大限度地提高PM10相对风险估计的精度。这偏离了传统的自由度选择方法,后者通常旨在优化整体模型拟合。我们的方法导致时间使用8df /年,温度使用6df /年,相对湿度使用5df /年。核心模型估计,每日平均PM10浓度每增加10 pg/m3,每日全因死亡率增加0.44%(95%置信区间[CI] = 0.17至0.71)。广泛的敏感性分析比较了使用替代暴露序列构建的模型和模型参数对核心模型的贡献,这些模型涉及混杂因素自由度、暴露和气象混杂因素的替代滞后、异常值的包含、季节性、多种污染物的包含以及按性别和年龄分层。敏感性分析表明,我们的估计在一系列规格上是稳健的,并且也与以前的时间序列研究报告的估计相当:PAPA、国家发病率、死亡率和空气污染研究(NMMAPS)、空气污染与健康:欧洲方法(APHEA)和空气污染与健康:欧洲和北美方法(APHENA)。虽然以前研究中开发的方法是我们模型开发的基础,但本研究有新的改进,使我们能够解决特定的数据限制(例如缺少测量和空气污染监测仪的小足迹)。研究中开发的方法可以更好地利用常规数据,在广泛的环境中进行时间序列分析,在这些环境中,类似的暴露和数据相关问题普遍存在。我们希望这项研究所得的估计虽然有些暂定,但能促进当地的环境管理倡议和推动未来的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Part 1. Short-term effects of air pollution on mortality: results from a time-series analysis in Chennai, India.

This report describes the results of a time-series analysis of the effect of short-term exposure to particulate matter with an aerodynamic diameter < or = 10 pm (PM10) on mortality in metropolitan Chennai, India (formerly Madras). This was one of three sites in India chosen by HEI as part of its Public Health and Air Pollution in Asia (PAPA) initiative. The study involved integration and analysis of retrospective data for the years 2002 through 2004. The data were obtained from relevant government agencies in charge of routine data collection. Data on meteorologic confounders (including temperature, relative humidity, and dew point) were available on all days of the study period. Data on mortality were also available on all days, but information on cause-of-death (including accidental deaths) could not be reliably ascertained. Hence, only all-cause daily mortality was used as the major outcome for the time-series analyses. Data on PM10, nitrogen dioxide (NO2), and sulfur dioxide (SO2) were limited to a much smaller number of days, but spanned the full study period. Data limitations resulting from low sensitivity of gaseous pollutant measurements led to using only PM10 in the main analysis. Of the eight operational ambient air quality monitor (AQM) stations in the city, seven met the selection criteria set forth in the common protocol developed for the three PAPA studies in India. In addition, all raw data used in the analysis were subjected to additional quality assurance (QA) and quality control (QC) criteria to ensure the validity of the measurements. Two salient features of the PM10 data set in Chennai were a high percentage of missing readings and a low correlation among daily data recorded by the AQMs. The latter resulted partly because each AQM had a small footprint (approximate area over which the air pollutant measurements recorded in the AQM are considered valid), and partly because of differences in source profiles among the 10 zones within the city. The zones were defined by the Chennai Corporation based on population density. Alternative exposure series were developed to control for these data features. We first developed exposure series based on data from single AQMs and multiple AQMs. Because neither was found to satisfactorily represent population exposures, we subsequently developed an exposure series that disaggregated pollutant data to individual zones within the city boundary. The zonal series, despite some uncertainties, was found to best represent population exposures among other available choices. The core model was thus a zonal model developed using disaggregated mortality and pollutant data from individual zones. We used quasi-Poisson generalized additive models (GAMs) with smooth functions of time, temperature, and relative humidity modeled using penalized splines. The degrees of freedom (df) for these confounders were selected to maximize the precision with which the relative risk for PM10 was estimated. This is a deviation from the traditional approaches to degrees of freedom selection, which usually aim to optimize overall model fit. Our approach led to the use of 8 df/year for time, 6 df/year for temperature, and 5 df/year for relative humidity. The core model estimated a 0.44% (95% confidence interval [CI] = 0.17 to 0.71) increase in daily all-cause mortality per 10-pg/m3 increase in daily average PM10 concentrations. Extensive sensitivity analyses compared models constructed using alternative exposure series and contributions of model parameters to the core model with regard to confounder degrees of freedom, alternative lags for exposure and meteorologic confounders, inclusion of outliers, seasonality, inclusion of multiple pollutants, and stratification by sex and age. The sensitivity analyses showed that our estimates were robust to a range of specifications and were also comparable to estimates reported in previous time-series studies: PAPA, the National Morbidity, Mortality, and Air Pollution Study (NMMAPS), Air Pollution and Health: A European Approach (APHEA), and Air Pollution and Health: A European and North American Approach (APHENA). While the approaches developed in previous studies served as the basis for our model development, the present study has new refinements that have allowed us to address specific data limitations (such as missing measurements and small footprints of air pollution monitors). The methods developed in the study may allow better use of routine data for time-series analysis in a broad range of settings where similar exposure and data-related issues prevail. We hope that the estimates derived in this study, although somewhat tentative, will facilitate local environmental management initiatives and spur future studies.

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