Institute for Environmental and Climate Research, Jinan University, Guangzhou, 511443, China.
The National Center for Chronic and Noncommunicable Disease Control and Prevention, Beijing, 100050, China.
Environ Pollut. 2018 Aug;239:631-637. doi: 10.1016/j.envpol.2018.04.090. Epub 2018 Apr 27.
Few studies have analyzed the health effects of temperature variability (TV) accounting for both interday and intraday variations in ambient temperature. In this study, TV was defined as the standard deviations of the daily minimum and maximum temperature during different exposure days. Distributed lag non-linear Poisson regression model was used to examine the city-specific effect of TV on mortality in 31 Chinese municipalities and provincial capital cities. The national estimate was pooled through a meta-analysis based on the restricted maximum likelihood estimation. To assess effect modification on TV-mortality association by individual characteristics, stratified analyses were further fitted. Potential effect modification by city characteristics was performed through a meta-regression analysis. In total, 259 million permanent residents and 4,481,090 non-accidental deaths were covered in this study. The effect estimates of TV on mortality were generally increased by longer exposure days. A 1 °C increase in TV at 0-7 days' exposure was associated with a 0.60% (95% CI: 0.25-0.94%), 0.65% (0.24-1.05%), 0.82% (0.29-1.36%), 0.86% (0.42-1.31%), 0.98% (0.57-1.39%) and 0.54% (-0.11-1.20%) increase in non-accidental, cardiovascular, IHD, stroke, respiratory and COPD mortalities, respectively. Those with lower levels of educational attainment were significantly susceptible to TV. Cities with dense population, higher mean temperatures, and relative humidity and lower diurnal temperature ranges also had higher mortality risks caused by TV. This study demonstrated that TV had considerable health effects. An early warning system to alert residents about large temperature variations is recommended, which may have a significant impact on the community awareness and public health.
很少有研究分析考虑到环境温度日间和日内变化的温度可变性 (TV) 对健康的影响。在这项研究中,TV 被定义为不同暴露日期间每日最低和最高温度的标准差。使用分布式滞后非线性泊松回归模型来研究 31 个中国直辖市和省会城市 TV 对死亡率的城市特异性影响。通过基于受限极大似然估计的荟萃分析汇总了全国估计值。为了评估个体特征对 TV 与死亡率相关性的影响修饰作用,进一步进行了分层分析。通过荟萃回归分析评估了城市特征对 TV 与死亡率相关性的潜在影响修饰作用。本研究共涵盖了 2.59 亿常住居民和 448.109 万例非意外死亡。TV 对死亡率的影响估计值通常随着暴露天数的增加而增加。在 0-7 天的暴露中,TV 每增加 1°C,非意外、心血管、缺血性心脏病、中风、呼吸和 COPD 死亡率分别增加 0.60%(95%CI:0.25-0.94%)、0.65%(0.24-1.05%)、0.82%(0.29-1.36%)、0.86%(0.42-1.31%)、0.98%(0.57-1.39%)和 0.54%(-0.11-1.20%)。受教育程度较低的人群更容易受到 TV 的影响。人口密度高、平均气温高、相对湿度高、日较差小的城市,因 TV 导致的死亡率也更高。本研究表明 TV 对健康有相当大的影响。建议建立一个预警系统,提醒居民注意较大的温度变化,这可能对提高社区意识和公共卫生水平产生重大影响。