Biggeri A, Bellini P, Terracini B
Dipartimento di Statistica G. Parenti, Università di Firenze, Viale Morgagni 59, 50100 Firenze.
Epidemiol Prev. 2001 Mar-Apr;25(2 Suppl):1-71.
In recent years, much attention has been given to review reports on the early effects of air pollution on health, measured through daily series of deaths and/or hospital admissions. A number of large planned meta-analyses (in which methods for data retrieval and processing are commonly planned a priori for all participating centers) are on going both in the US and in Europe. The National Mortality, Morbidity and Air Pollution Study included data from 90 US cities, whereas APHEA (Air Pollution and Health, a European Approach) considers data from about 30 european cities. The present paper summarizes methods and findings of MISA, a meta-analysis of data from 8 Italian cities. It belongs to an ad hoc supplement of Epidemiologia & Prevenzione (Epidemiol Prev 2001; 25 (2) Suppl: 1-72), the official Journal of the Italian Association of Epidemiology, which contains a full description of the study. MISA was launched on March 2000, within the project "Statistics, Environment and Health" (GRASPA), funded by the Italian Ministry of Education. Additional support was given by the Authorities of the 8 participating cities (from North to South: Turin, Milan, Verona, Ravenna, Bologna, Florence, Rome and Palermo). DAILY HEALTH DATA: Deaths certificate and hospital admission data have been collected respectively from the Local Health Authority and regional files. The same programme for retrieval of data on selected hospital admissions for acute conditions was used in the 8 cities. Main data are summarized in Table 1. DAILY CONCENTRATION OF POLLUTANTS: Most data were obtained from Regional Environmental Protection Agencies, which are responsible for environmental monitoring since 1993. Verona, Palermo and Milan (1990-94) data were obtained from local sources. Monitors with more than 25% of missing data were excluded. Meteorological data were collected by the same monitors and completed with data from monitors situated in the suburbs or (in Milan and Bologna) in the airport. The monitors were selected by a group of experts to ensure comparability. For SO2 and NO2 daily averages of hourly measurements were used, whereas concentrations of ozone and CO were estimated as the maximum 8 hours moving average. Total suspended particulate or PM10 were measured as 24 hours deposition. All analyses used the whole range of observed values (Table 2). Daily data were considered as missing when more than 25% of hourly data were not available. Missing data in one monitor were imputed as average of data from the remaining monitors weighted by the ratio between the specific monitor's year average and the general year average of all the selected city monitors. Missing data in one day were imputed as average of four days (preceding and following day, the same day of the previous and following weeks). In the city of Florence and Palermo PM10 concentrations were available. For the other cities we applied a conversion factor from PTS to PM10 (0.6 for Turin and 0.8 for all the others) estimated through validation studies. Ozone concentrations were used only where background monitors were available (Turin, Verona, Bologna and Florence) and limited to the warm season (May through September).
A common protocol for the city-specific analyses was defined on the basis of a structured exploratory analysis. The adopted basic model was a Generalized Additive Model for Poisson data. Effect estimates were age-adjusted (0-64, 65-74, 75+) and formal tests of interaction pollutant-age were conducted. In the first two age groups, indicator variables for seasonality were specified, and cubic splines with fixed number of degree of freedom were specified for the last age group and for all age groups for the morbidity data. Model adequacy was checked by residual analysis and inspection of the partial autocorrelation function. In a sensitivity analysis non linear pollutant effects were considered and overdispersed [table: see text] transitional models were fitted; the analysis was conducted for all lags 0-3 and some distributed lags (0-1, 1-2, 0-3); no multipollutant models were fitted. The same model was fitted to the city data. No model selection was done: Table 3 describes the steps in model building. In the meta-analysis, for each outcome, the estimates for each pollutant and for each city were combined using fixed and random effects models. Heterogeneity of effects was tested according to DerSimonian and Laird. Results were checked using a hierarchical bayesian model, which was used to investigate heterogeneity across cities in a meta-regression phase. Non informative priors were used. Posterior distributions of parameters of interest have been obtained with WinBUGS. 10,000 iterations (excluding [table: see text] the first 2000) were retained, while for the meta-regression 100,000 iterations (excluding the first 4000) were stored. To approximate the marginal posteriors only one sample out of five were used. Achieved convergence was assessed using the Gelman and Rubin approach. In the meta-regression the models specified were the following: [formula: see text] i denotes city, j calendar period (1990-1994; 1995-1999). The first model includes only period as effect modifier, while the second model other potential variables. The ui terms (which do not vary with j) represent city specific random effects.
For each pollutant, the meta-analysis detected a statistically significant association with mortality for natural causes. But for ozone, positive associations were commonly found for death and hospital admissions for both cardiovascular and respiratory diseases. Indeed, the only estimates whose lower 95% confidence limit bore a negative sign regarded the association between PM10 and mortality from respiratory diseases. Ozone in the warm season was positively and significantly associated with daily mortality and mortality for cardiovascular diseases whereas other estimates did not reach statistical significance and some were negative (only lag 0-1 for external comparability are reported in Table 4). Risks were highest (up to 4%) for respiratory conditions (Table 4). They were more pronounced at lag 1-2 for mortality, and at lag 0-3 for hospital admissions. Age was an effect modifier for mortality, the elderly being more susceptible. In the random effect meta-analysis, at lag 1-2, excess risks for unit increase of the pollutants at age 75+ and at age 0-64 were respectively: 4.9% and -0.4% for SO2, 1.7% and 0.6% for NO2; 2.3% and 0.2% for CO. Corresponding figures for PM10 at lag 0-1 were 1.1% and 0.2%. The effect of PM10 on mortality [table: see text] was greater during the warm season (2.8% vs 0.8%). A complete analysis is reported in the Italian text. Here we provide some details on the effects of PM10, about which the residual heterogeneity across cities was highest (Table 4). In addition, the epidemiological evidence on the hazards from this fraction of particulate matter is more controversial. Table 5 reports the excess risk estimated through the meta-analysis in 1995-99 for a 10 micrograms/m3 increase of PM10 for some outcomes. Proper prior distributions (overdispersed normal and inverse gamma) were adopted in the final bayesian analyses. The sensitivity of results to the choice of the priors were investigated (we defined proper and improper uniform, student's t), obtaining comparable results. Total natural mortality was significantly heterogeneous across cities (Q = 18.96, 5 df, p < 0.001). City-specific estimates are represented graphically in Fig. 1. As expected, the confidence (credibility) intervals are widest [table: see text] for bayesian estimates, intermediate for those obtained under a random effects model, and narrowest for those found under a fixed effects model. Nevertheless, differences in point estimates are negligible. A North-South gradient in risk is obvious. Table 6 shows, for the cities for which mortality data were available, the improvement in precision and the shrinkage of effect estimates toward the overall mean introduced by the bayesian modelling. In the meta-regression, total mortality and a deprivation score were associated with greater effects. The excess risks on hospital admission were modified by the deprivation score and by the NO2/PM10 ratio. Overall, the risk estimates were greater in the calendar period 1995-99 and there was a North-South gradient, with larger effects in cities located in Central and Southern Italy (Florence, Rome, Palermo).
The meta-analysis of the Italian studies on short-term effects of air pollution in 8 cities, MISA, exhibits the following features: With the exception of Naples, all greatest Italian cities were included; overall a population of 7 million was enrolled. The study protocol was accurate with regard to the selection of hospital admissions for acute conditions. Monitored data of concentration of pollutant were carefully evaluated before their inclusion in the meta-analysis. City specific analyses were carried out according to a common protocol controlling for seasonality, influenza epidemics, age and meterological variables; [table: see text] the protocol derived from a structured exploratory analysis. The meta-analysis was done using fixed and random effects models; a hierarchical bayesian model was fitted in a sensitivity analysis. The heterogeneity of effects across cities was investigated using a hierarchical bayesian model for meta-regression. While mortality data are of good quality, hospital admission data are more problematic. Since the filing criteria for the latter changed around 1995, comparability of results before and after such date is limited. Moreover, hospital admissions rely on availability of beds, the offer of which may be restricted during the warm season. Comparability of pollutant concentration estimates among cities may have been influenced by differences in monitor characteristics. (ABSTRACT TRUNCATED)
近年来,空气污染对健康的早期影响的综述报告备受关注,这些影响通过每日死亡和/或住院数据来衡量。美国和欧洲都在进行一些大型的计划中的荟萃分析(所有参与中心通常事先规划数据检索和处理方法)。国家死亡率、发病率与空气污染研究纳入了美国90个城市的数据,而APHEA(空气污染与健康:欧洲方法)考虑了约30个欧洲城市的数据。本文总结了对来自意大利8个城市数据的荟萃分析MISA的方法和结果。它属于意大利流行病学协会官方期刊《Epidemiologia & Prevenzione》(Epidemiol Prev 2001; 25 (2) Suppl: 1 - 72)的特设增刊,该增刊包含了该研究的完整描述。MISA于2000年3月启动,是在由意大利教育部资助的“统计、环境与健康”(GRASPA)项目内进行的。8个参与城市(从北到南:都灵、米兰、维罗纳、拉文纳、博洛尼亚、佛罗伦萨、罗马和巴勒莫)的当局提供了额外支持。
死亡证明和住院数据分别从地方卫生当局和地区档案中收集。8个城市使用相同的程序检索急性病特定住院数据。主要数据总结在表1中。
大多数数据来自地区环境保护机构,这些机构自1993年起负责环境监测。维罗纳、巴勒莫和米兰(1990 - 94年)的数据来自当地来源。缺失数据超过25%的监测器被排除。气象数据由相同的监测器收集,并通过位于郊区或(在米兰和博洛尼亚)机场的监测器的数据进行补充。监测器由一组专家挑选以确保可比性。对于二氧化硫和二氧化氮,使用每小时测量值的每日平均值,而臭氧和一氧化碳的浓度估计为最大8小时移动平均值。总悬浮颗粒物或PM10测量为24小时沉积量。所有分析使用观测值的整个范围(表2)。当超过25%的每小时数据不可用时,每日数据被视为缺失。一个监测器中的缺失数据通过其余监测器数据的平均值进行插补,该平均值按特定监测器的年平均值与所有选定城市监测器的总年平均值之比加权。一天中的缺失数据通过四天(前一天和后一天,前一周和后一周的同一天)的平均值进行插补。在佛罗伦萨和巴勒莫市可获得PM10浓度。对于其他城市,我们应用通过验证研究估计的从总悬浮颗粒物到PM10的转换因子(都灵为0.6,其他所有城市为0.8)。仅在有背景监测器的地方(都灵、维罗纳、博洛尼亚和佛罗伦萨)使用臭氧浓度,并且仅限于温暖季节(5月至9月)。
基于结构化探索性分析定义了针对特定城市分析的通用方案。采用的基本模型是泊松数据的广义相加模型。效应估计进行了年龄调整(0 - 64岁、65 - 74岁、75岁及以上),并对污染物 - 年龄的相互作用进行了正式检验。在前两个年龄组中,指定了季节性指标变量,对于最后一个年龄组以及发病率数据的所有年龄组,指定了具有固定自由度数量的三次样条。通过残差分析和部分自相关函数检查模型的充分性。在敏感性分析中,考虑了非线性污染物效应并拟合了过度分散的[表格:见原文]过渡模型;对所有滞后0 - 3以及一些分布滞后(0 - 1、1 - 2、0 - 3)进行了分析;未拟合多污染物模型。对城市数据拟合相同的模型。未进行模型选择:表3描述了模型构建步骤。在荟萃分析中,对于每个结果,使用固定效应和随机效应模型组合每种污染物和每个城市的估计值。根据DerSimonian和Laird检验效应的异质性。使用分层贝叶斯模型检查结果,该模型用于在荟萃回归阶段研究城市间的异质性。使用非信息先验。使用WinBUGS获得感兴趣参数的后验分布。保留10,000次迭代(不包括[表格:见原文]前2000次),而对于荟萃回归,存储100,000次迭代(不包括前4000次)。为了近似边际后验,仅使用五分之一的样本。使用Gelman和Rubin方法评估收敛情况。在荟萃回归中指定的模型如下:[公式:见原文]i表示城市,j表示日历期(1990 - 1994年;1995 - 1999年)。第一个模型仅将时期作为效应修饰因子,而第二个模型包含其他潜在变量。ui项(不随j变化)表示特定城市的随机效应。
对于每种污染物,荟萃分析检测到与自然原因死亡率存在统计学显著关联。但对于臭氧,通常发现心血管和呼吸系统疾病的死亡和住院与臭氧呈正相关。实际上,唯一95%置信下限为负的估计值涉及PM10与呼吸系统疾病死亡率之间的关联。温暖季节的臭氧与每日死亡率和心血管疾病死亡率呈正相关且显著,而其他估计值未达到统计学显著性,有些为负(表4仅报告了用于外部可比性的滞后0 - 1)。呼吸系统疾病的风险最高(高达4%)(表4)。死亡率在滞后1 - 2时更明显,住院率在滞后0 - 3时更明显。年龄是死亡率的效应修饰因子,老年人更易受影响。在随机效应荟萃分析中,在滞后1 - 2时,污染物每增加一个单位,75岁及以上和0 - 64岁年龄组的额外风险分别为:二氧化硫为4.9%和 - 0.4%,二氧化氮为1.7%和0.6%;一氧化碳为2.3%和0.2%。滞后0 - 1时PM10的相应数字为1.1%和0.2%。PM10对死亡率的影响[表格:见原文]在温暖季节更大(2.8%对0.8%)。完整分析在意大利文本中报告。这里我们提供关于PM10影响的一些细节,城市间关于PM10的残差异质性最高(表4)。此外,关于这部分颗粒物危害的流行病学证据更具争议性。表5报告了通过荟萃分析估计的在某些结果中1995 - 99年PM10每增加10微克/立方米的额外风险。在最终的贝叶斯分析中采用了适当的先验分布(过度分散的正态分布和逆伽马分布)。研究了结果对先验选择的敏感性(我们定义了适当和不适当的均匀分布、学生t分布),得到了可比结果。城市间总自然死亡率存在显著异质性(Q = 18.96,5自由度,p < 0.001)。图1以图形方式表示了特定城市估计值。正如预期的那样,贝叶斯估计的置信(可信)区间最宽[表格:见原文],随机效应模型下获得的区间居中,固定效应模型下发现的区间最窄。然而,点估计的差异可忽略不计。风险存在明显的南北梯度。表6显示了对于有死亡率数据的城市,贝叶斯建模提高了精度并使效应估计值向总体均值收缩。在荟萃回归中,总死亡率和贫困得分与更大的效应相关。住院额外风险受到贫困得分和二氧化氮/PM10比值的影响。总体而言,1995 - 99年日历期的风险估计值更大,存在南北梯度,意大利中部和南部城市(佛罗伦萨、罗马、巴勒莫)的效应更大。
对意大利8个城市空气污染短期影响的研究进行的荟萃分析MISA具有以下特点:除那不勒斯外,意大利所有最大城市均被纳入;总体纳入了700万人口。该研究方案在急性病住院选择方面准确无误。在将污染物浓度监测数据纳入荟萃分析之前进行了仔细评估。根据控制季节性、流感流行、年龄和气象变量的通用方案进行特定城市分析;[表格:见原文]该方案源自结构化探索性分析。荟萃分析使用固定效应和随机效应模型;在敏感性分析中拟合了分层贝叶斯模型。使用分层贝叶斯模型进行荟萃回归研究城市间效应的异质性。虽然死亡率数据质量良好,但住院数据问题较多。由于后者的归档标准在1995年左右发生了变化,该日期前后结果的可比性有限。此外,住院取决于床位可用性,温暖季节床位供应可能受限。城市间污染物浓度估计的可比性可能受到监测器特征差异的影响。(摘要截断)