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吸烟、肥胖、社会人口统计学特征与基于遥感的环境 PM2.5 估计值之间的关联:来自加拿大基于人群的调查结果。

Associations between cigarette smoking, obesity, sociodemographic characteristics and remote-sensing-derived estimates of ambient PM2.5: results from a Canadian population-based survey.

机构信息

Population Studies Division, Health Canada, 50 Columbine Driveway, Room 165, PL0801A, Ottawa, ON K1A 0K9, Canada.

出版信息

Occup Environ Med. 2011 Dec;68(12):920-7. doi: 10.1136/oem.2010.062521. Epub 2011 May 24.

Abstract

OBJECTIVES

Long-term exposure to ambient fine particles (PM2.)) has been shown to increase mortality. Variables measured on the same spatial scales of air pollution may confound associations, and so the authors' objectives were to evaluate the associations between PM2.5 and individual-level measures of smoking, obesity and sociodemographic status. The authors present an approach to evaluate the impact that uncontrolled confounding from smoking may have on associations between PM2.5 and mortality.

METHODS

Individual-level behavioural and sociodemographic data were obtained from a 2003 national survey of 122,548 Canadians. Estimates of ground-level PM2.5 at a resolution of 10×10 km between 2001 and 2006 were derived from satellite remote sensing. Exposures were assigned to the residence of the participants at the time of the survey. Differences in the prevalence of smoking across concentrations of PM2.5 and RRs drawn from the literature were used to model the bias on rate ratios.

RESULTS

Participants in areas with higher concentrations of PM2.5 had a higher income and educational attainment, smoked less and were more likely immigrants. Smoking had a negative confounding effect on the associations between PM2.5) and mortality. To compensate for this bias, for a 10 μg/m3 increase in PM2.5, mortality from lung cancer and heart disease in the referent exposure group needed to be increased by 6.9% and 3.2%, respectively.

CONCLUSIONS

Associations were found between sociodemographic and lifestyle characteristics and PM2.5 at a resolution of 10×10 km. The authors present a model to adjust for uncontrolled confounding of smoking that can be readily adapted to exposures measured at different spatial resolutions.

摘要

目的

已有研究表明,长期暴露于环境细颗粒物(PM2.5)会增加死亡率。在空气污染的相同空间尺度上测量的变量可能会混淆关联,因此作者的目的是评估 PM2.5 与吸烟、肥胖和社会人口统计学特征等个体水平指标之间的关联。作者提出了一种评估吸烟引起的未控制混杂对 PM2.5 与死亡率之间关联影响的方法。

方法

从 2003 年对 122548 名加拿大全国调查中获取个体水平的行为和社会人口统计学数据。2001 年至 2006 年,通过卫星遥感获得地面 PM2.5 浓度为 10×10km 的分辨率。将暴露情况分配给参与者在调查时的居住地址。使用文献中得出的 PM2.5 浓度与 RR 之间的吸烟流行率差异来模拟比率比的偏差。

结果

PM2.5 浓度较高地区的参与者收入和教育程度较高,吸烟较少,更有可能是移民。吸烟对 PM2.5 与死亡率之间的关联有负向混杂作用。为了弥补这种偏差,对于 PM2.5 增加 10μg/m3,参考暴露组的肺癌和心脏病死亡率分别需要增加 6.9%和 3.2%。

结论

在 10×10km 的分辨率上,发现社会人口统计学和生活方式特征与 PM2.5 之间存在关联。作者提出了一种调整吸烟引起的未控制混杂的模型,该模型可以很容易地适应不同空间分辨率测量的暴露情况。

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