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1990年香港燃料含硫量限制立法的影响。

Impact of the 1990 Hong Kong legislation for restriction on sulfur content in fuel.

作者信息

Wong Chit-Ming, Rabl Ari, Thach Thuan Q, Chau Yuen Kwan, Chan King Pan, Cowling Benjamin J, Lai Hak Kan, Lam Tai Hing, McGhee Sarah M, Anderson H Ross, Hedley Anthony J

机构信息

Department of Community Medicine, The University of Hong Kong, China.

出版信息

Res Rep Health Eff Inst. 2012 Aug(170):5-91.

Abstract

INTRODUCTION

After the implementation of a regulation restricting sulfur to 0.5% by weight in fuel on July 1, 1990, in Hong Kong, sulfur dioxide (SO2*) levels fell by 45% on average and as much as 80% in the most polluted districts (Hedley et al. 2002). In addition, a reduction of respiratory symptoms and an improvement in bronchial hyperresponsiveness in children were observed (Peters et al. 1996; Wong et al. 1998). A recent time-series study (Hedley et al. 2002) found an immediate reduction in mortality during the cool season at six months after the intervention, followed by an increase in cool-season mortality in the second and third years, suggesting that the reduction in pollution was associated with a delay in mortality. Proportional changes in mortality trends between the 5-year periods before and after the intervention were measured as relative risks and used to assess gains in life expectancy using the life table method (Hedley et al. 2002). To further explore the relation between changes in pollution-related mortality before and after the intervention, our study had three objectives: (1) to evaluate the short-term effects on mortality of changes in the pollutant mix after the Hong Kong sulfur intervention, particularly with changes in the particulate matter (PM) chemical species; (2) to improve the methodology for assessment of the health impact in terms of changes in life expectancy using linear regression models; and (3) to develop an approach for analyzing changes in life expectancy from Poisson regression models. A fourth overarching objective was to determine the relation between short- and long-term benefits due to an improvement in air quality.

METHODS

For an assessment of the short-term effects on mortality due to changes in the pollutant mix, we developed Poisson regression Core Models with natural spline smoothers to control for long-term and seasonal confounding variations in the mortality counts and with covariates to adjust for temperature (T) and relative humidity (RH). We assessed the adequacy of the Core Models by evaluating the results against the Akaike Information Criterion, which stipulates that, at a minimum, partial autocorrelation plots should be between -0.1 and 0.1, and by examining the residual plots to make sure they were free from patterns. We assessed the effects for gaseous pollutants (NO2, SO2, and O3), PM with an aerodynamic diameter < or = 10 microm (PM10), and its chemical species (aluminum [Al], iron [Fe], manganese [Mn], nickel [Ni], vanadium [V], lead [Pb], and zinc [Zn]) using the Core Models, which were developed for the periods 5 years (or 2 years in the case of the sensitivity analysis) before and 5 years after the intervention, as well as in the10-year (or 7-year in the case of the sensitivity analysis) period pre- and post-intervention. We also included an indicator to separate the pre- and post-intervention periods, as well as the product of the indicator with an air pollution concentration variable. The health outcomes were mortality for all natural causes and for cardiovascular and respiratory causes, at all ages and in the 65 years or older age group. To assess the short- and long-term effects, we developed two methods: one using linear regression models reflecting the age-standardized mortality rate D(j) at day j, divided by a reference D(ref); and the other using Poisson regression models with daily mortality counts as the outcome variables. We also used both models to evaluate the relation between outcome variables and daily air pollution concentrations in the current day up to all previous days in the past 3 to 4 years. In the linear regression approach, we adjusted the data for temperature and relative humidity. We then removed season as a potential confounder, or deseasonalized them, by calculating a standard seasonal mortality rate profile, normalized to an annual average of unity, and dividing the mortality rates by this profile. Finally, to correct for long-term trends, we calculated a reference mortality rate D(ref)(j) as a moving average of the corrected and deseasonalized D(j) over the observation window. Then we regressed the outcome variable D(j)/D(ref) on an entire exposure sequence {c(i)} with lags up to 4 years in order to obtain impact coefficient f(i) from the regression model shown below: deltaD(j)/D (ref) = i(max)sigma f(i) c(j - i)(i = 0). The change in life expectancy (LE) for a change of units (deltac) in the concentration of pollutants on T(day)--representing the short interval (i.e., a day)--was calculated from the following equation (deltaL(pop) = average loss in life expectancy of an entire population): deltaL(pop) = -deltac T(day) infinity sigma (j = 0) infinity sigma f(i) (i = 0). In the Poisson regression approach, we fitted a distributed-lag model for exposure to previous days of up to 4 years in order to obtain the cumulative lag effect sigma beta(i). We fit the linear regression model of log(LE*/LE) = gamma(SMR - 1) + alpha to estimate the parameter gamma by gamma, where LE* and LE are life expectancy for an exposed and an unexposed population, respectively, and SMR represents the standardized mortality ratio. The life expectancy change per Ac increase in concentration is LE {exp[gamma delta c(sigma beta(i))]-1}.

RESULTS

In our assessment of the changes in pollutant levels, the mean levels of SO2, Ni, and V showed a statistically significant decline, particularly in industrial areas. Ni and V showed the greatest impact on mortality, especially for respiratory diseases in the 5-year pre-intervention period for both the all-ages and 65+ groups among all chemical species. There were decreases in excess risks associated with Ni and V after the intervention, but they were nonsignificant. Using the linear regression approach, with a window of 1095 days (3 years), the losses in life expectancy with a 10-microg/m3 increase in concentrations, using two methods of estimation (one with adjustment for temperature and RH before the regression against pollutants, the other with adjustment for temperature and RH within the regression against pollutants), were 19.2 days (95% CI, 12.5 to 25.9) and 31.4 days (95% CI, 25.6 to 37.2) for PM10; and 19.7 days (95% CI, 15.2 to 24.2) and 12.8 days (95% CI, 8.9 to 16.8) for SO2. The losses in life expectancy in the current study were smaller than the ones implied by Elliott and colleagues (2007) and Pope and colleagues (2002) as expected since the observation window in our study was only 3 years whereas these other studies had windows of 16 years. In particular, the coefficients used by Elliott and colleagues (2007) for windows of 12 and 16 years were non-zero, which suggests that our window of at most 3 years cannot capture the full life expectancy loss and the effects were most likely underestimated. Using the Poisson regression approach, with a window of 1461 days (4 years), we found that a 10-microg/m3 increase in concentration of PM10 was associated with a change in life expectancy of -69 days (95% CI, -140 to 1) and a change of -133 days (95% CI, -172 to -94) for the same increase in SO2. The effect estimates varied as expected according to most variations in the sensitivity analysis model, specifically in terms of the Core Model definition, exposure windows, constraint of the lag effect pattern, and adjustment for smoking prevalence or socioeconomic status.

CONCLUSIONS

Our results on the excess risks of mortality showed exposure to chemical species to be a health hazard. However, the statistical power was not sufficient to detect the differences between the pre- and post-intervention periods in Hong Kong due to the data limitations (specifically, the chemical species data were available only once every 6 days, and data were not available from some monitoring stations). Further work is needed to develop methods for maximizing the information from the data in order to assess any changes in effects due to the intervention. With complete daily air pollution and mortality data over a long period, time-series analysis methods can be applied to assess the short- and long-term effects of air pollution, in terms of changes in life expectancy. Further work is warranted to assess the duration and pattern of the health effects from an air pollution pulse (i.e., an episode of a rapid rise in air pollution) so as to determine an appropriate length and constraint on the distributed-lag assessment model.

摘要

引言

1990年7月1日香港实施燃油含硫量限制在0.5%(重量比)的规定后,二氧化硫(SO₂*)水平平均下降了45%,在污染最严重的地区降幅高达80%(赫德利等人,2002年)。此外,还观察到儿童呼吸道症状减少,支气管高反应性得到改善(彼得斯等人,1996年;黄等人,1998年)。最近的一项时间序列研究(赫德利等人,2002年)发现,干预后六个月的凉爽季节死亡率立即下降,随后在第二年和第三年凉爽季节死亡率上升,这表明污染的减少与死亡率的延迟有关。通过相对风险衡量干预前后5年期间死亡率趋势的比例变化,并使用生命表方法评估预期寿命的增加(赫德利等人,2002年)。为了进一步探讨干预前后与污染相关的死亡率变化之间的关系,我们的研究有三个目标:(1)评估香港硫干预后污染物混合变化对死亡率的短期影响,特别是颗粒物(PM)化学种类的变化;(2)使用线性回归模型改进评估预期寿命变化对健康影响的方法;(3)开发一种从泊松回归模型分析预期寿命变化的方法。第四个总体目标是确定空气质量改善带来的短期和长期效益之间的关系。

方法

为了评估污染物混合变化对死亡率的短期影响,我们开发了泊松回归核心模型,使用自然样条平滑器来控制死亡率计数中的长期和季节性混杂变化,并使用协变量来调整温度(T)和相对湿度(RH)。我们通过根据赤池信息准则评估结果来评估核心模型的充分性,该准则规定,至少部分自相关图应在-0.1至0.1之间,并通过检查残差图以确保它们没有模式。我们使用核心模型评估气态污染物(二氧化氮、二氧化硫和臭氧)、空气动力学直径≤10微米的颗粒物(PM₁₀)及其化学种类(铝[Al]、铁[Fe]、锰[Mn]、镍[Ni]、钒[V]、铅[Pb]和锌[Zn])的影响,这些模型是针对干预前5年(敏感性分析为2年)和干预后5年以及干预前后10年(敏感性分析为7年)期间开发的。我们还纳入了一个指标来区分干预前后时期,以及该指标与空气污染浓度变量的乘积。健康结果是所有自然原因以及心血管和呼吸道原因导致的各年龄段和65岁及以上年龄组的死亡率。为了评估短期和长期影响,我们开发了两种方法:一种使用反映第j天年龄标准化死亡率D(j)除以参考值D(ref)的线性回归模型;另一种使用以每日死亡计数作为结果变量的泊松回归模型。我们还使用这两种模型评估结果变量与过去3至4年中直至当前日的所有前几日的每日空气污染浓度之间的关系。在线性回归方法中,我们对温度和相对湿度数据进行了调整。然后,我们通过计算标准化的季节性死亡率概况(归一化为年平均值为1)并将死亡率除以该概况来消除季节作为潜在混杂因素,或对其进行去季节化处理。最后,为了校正长期趋势,我们计算参考死亡率D(ref)(j)作为在观察窗口内对校正和去季节化后的D(j)的移动平均值。然后,我们将结果变量D(j)/D(ref)对整个暴露序列{c(i)}进行回归,滞后时间长达4年,以便从以下回归模型中获得影响系数f(i):δD(j)/D (ref) = i(max)∑ f(i) c(j - i)(i = 0)。对于T(day)时污染物浓度单位变化(δc)的预期寿命(LE)变化——代表短时间间隔(即一天)——根据以下公式计算(δL(pop) = 整个人口预期寿命的平均损失):δL(pop) = -δc T(day) ∞∑ (j = 0) ∞∑ f(i) (i = 0)。在泊松回归方法中,我们拟合了一个长达4年的前几日暴露的分布滞后模型,以获得累积滞后效应∑β(i)。我们拟合log(LE*/LE) = γ(SMR - 1) + α的线性回归模型,以通过γ估计参数γ,其中LE*和LE分别是暴露人群和未暴露人群的预期寿命,SMR代表标准化死亡率。浓度每增加Δc时预期寿命的变化为LE {exp[γδc(∑β(i))]-1}。

结果

在我们对污染物水平变化的评估中,二氧化硫、镍和钒的平均水平显示出统计学上的显著下降,特别是在工业区。镍和钒对死亡率的影响最大,尤其是在干预前5年所有化学种类中各年龄段和65岁及以上组的呼吸道疾病方面。干预后与镍和钒相关的超额风险有所下降,但不显著。使用线性回归方法,窗口为1095天(3年),浓度每增加10微克/立方米时预期寿命的损失,使用两种估计方法(一种在对污染物回归前调整温度和相对湿度,另一种在对污染物回归内调整温度和相对湿度),对于PM₁₀分别为19.2天(95%置信区间,12.5至25.9)和31.4天(95%置信区间,25.6至37.2);对于二氧化硫分别为19.7天(95%置信区间,15.2至24.2)和12.8天(95%置信区间,8.9至16.8)。本研究中预期寿命的损失小于埃利奥特及其同事(2007年)和波普及其同事(2002年)所暗示的损失,这是预期的,因为我们研究的观察窗口仅为3年,而其他这些研究的窗口为16年。特别是,埃利奥特及其同事(2007年)用于12年和16年窗口的系数不为零,这表明我们最多3年的窗口无法捕捉到全部预期寿命损失,并且影响很可能被低估了。使用泊松回归方法,窗口为1461天(4年),我们发现PM₁₀浓度每增加10微克/立方米与预期寿命变化-69天(95%置信区间,-140至1)相关,对于相同的二氧化硫增加量,预期寿命变化为-133天(95%置信区间,-172至-94)。根据敏感性分析模型的大多数变化,特别是在核心模型定义、暴露窗口、滞后效应模式的约束以及吸烟流行率或社会经济地位的调整方面,效应估计如预期那样有所不同。

结论

我们关于死亡率超额风险的结果表明,接触化学种类对健康有危害。然而,由于数据限制(具体而言,化学种类数据仅每6天提供一次,且一些监测站没有数据),统计效力不足以检测香港干预前后的差异。需要进一步开展工作来开发方法,以最大限度地利用数据中的信息,以便评估干预导致的效应变化。有了长期完整的每日空气污染和死亡率数据,就可以应用时间序列分析方法来评估空气污染在预期寿命变化方面的短期和长期影响。有必要进一步开展工作来评估空气污染脉冲(即空气污染快速上升的事件)对健康影响的持续时间和模式,以便确定分布式滞后评估模型的适当长度和约束。

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