...
首页> 外文期刊>Annals of epidemiology >Fine particulate air pollution and all-cause mortality within the Harvard Six-Cities Study: variations in risk by period of exposure.
【24h】

Fine particulate air pollution and all-cause mortality within the Harvard Six-Cities Study: variations in risk by period of exposure.

机译:哈佛六城市研究中的细微颗粒空气污染和全因死亡率:暴露时间不同的风险差异。

获取原文
获取原文并翻译 | 示例

摘要

PURPOSE: We used Poisson regression methods to examine the relation between temporal changes in the levels of fine particulate air pollution (PM(2.5)) and the risk of mortality among participants of the Harvard Six Cities longitudinal study. METHODS: Our analyses were based on 1430 deaths that occurred between 1974 and 1991 in a cohort that accumulated 105,714 person-years of follow-up. For each city, indices of PM(2.5) were derived using daily samples. Individual level data were collected on several risk factors including: smoking, education, body mass index (BMI), and occupational exposure to dusts. Time-dependent indices of PM(2.5) were created across 13 calendar periods (< 1979, 1979, 1980, em leader, 1989, >/= 1990) to explore whether recent or chronic exposures were more important predictors of mortality. RESULTS: The relative risk (RR) of mortality calculated using Poisson regression based on average city-specific exposures that remained constant during follow-up was 1.31 [95% confidence interval (CI) = 1.12-1.52] per 18.6 microg/m(3) of PM(2.5). This result was similar to the risk calculated using the Cox model (RR = 1.26, 95% CI = 1.08-1.46). The RR of mortality was attenuated when the Poisson regression model included a time-dependent estimate of exposure (RR = 1.19, 95% CI = 1.04-1.36). There was little variation in RR across time-dependent indices of PM(2.5). CONCLUSIONS: The attenuated risk of mortality that was observed with a time-dependent index of PM(2.5) is due to the combined influence of city-specific variations in mortality rates and decreasing levels of air pollution that occurred during follow-up. The RR of mortality associated with PM(2.5) did not depend on when exposure occurred in relation to death, possibly because of little variation between the time-dependent city-specific exposure indices.
机译:目的:我们使用泊松回归方法来检验哈佛六城市纵向研究参与者中细颗粒空气污染水平(PM(2.5))的时间变化与死亡风险之间的关系。方法:我们的分析是基于1974年至1991年之间发生的1430例死亡病例,该队列累计随访105,714人年。对于每个城市,使用每日样本得出PM(2.5)的指数。收集了有关以下几个风险因素的个人水平数据:吸烟,教育,体重指数(BMI)和职业接触粉尘。在13个日历周期(<1979年,1979年,1980年,领导者,1989年,> / = 1990年)中创建了PM(2.5)随时间变化的指数,以探讨近期或长期暴露是否是死亡率的更重要预测指标。结果:使用Poisson回归基于在随访期间保持不变的平均城市特定暴露量计算的死亡相对风险(RR)为1.31 [95%置信区间(CI)= 1.12-1.52] /18.6 microg / m(3) PM(2.5)。该结果与使用Cox模型计算的风险相似(RR = 1.26,95%CI = 1.08-1.46)。当Poisson回归模型包括与时间相关的暴露估计值时,死亡率的RR降低(RR = 1.19,95%CI = 1.04-1.36)。在PM(2.5)的时间依赖指数之间,RR几乎没有变化。结论:随时间变化的PM(2.5)指数观察到死亡率降低的风险是由于特定城市死亡率的变化和随访期间空气污染水平降低的综合影响。与PM(2.5)相关的死亡率的RR不依赖于与死亡相关的暴露时间,这可能是由于随时间变化的城市特定暴露指数之间的差异很小。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号