Hu Mengjue, Ma Wenjun, Zhang Yonghui, Xu Yanjun, Xu Xiaojun, Lin Hualiang, Liu Tao, Xiao Jianpeng, Luo Yuan, Zeng Weilin
School of Medicine, Jinan University, Guangzhou 510632, China.
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Zhonghua Yu Fang Yi Xue Za Zhi. 2014 May;48(5):401-5.
To explore the impact of the socio-economic factors on the temperature-mortality association in different cities in southern China.
Daily mortality registration data, meteorological data and air pollution data of the cities as Changsha and Kunming during 2006-2009, and cities as Guangzhou and Zhuhai during 2006-2010, were collected to explore modifying effects, stratified by age, gender, education and place of death, of socio-economic factors on the association between temperature and mortality, by distributed lag non-linear model. The accumulative effect of temperature-mortality were separately analyzed in each city, under the high temperature (0-3 days) and low temperature (0-20 days) situation. The association between temperature and mortality was evaluated by general linear threshold model. The above process was firstly adopted to analyze the impact in single city and then Meta analysis was applied to analyze the impact in several cities by effect-combine.
The relationship between temperature and mortality in the four cities showed nonlinearity. The minimum mortality risk was separately 23.5 °C, 20.5 °C, 25.0 °C and 26.0 °C in Changsha, Kunming, Guangzhou and Zhuhai. The results of effect-combine showed that low-temperature (RR = 1.67, 95%CI:1.54-1.80) has a higher gross effect than high-temperature (RR = 1.11, 95%CI:1.01-1.18) on population. With the age increasing, risk of death increased both under high and low temperature situation, and the effect of low temperature was greater (RR = 1.83, 95%CI:1.65-2.04) for the elderly than it of high temperature (RR = 1.17, 95%CI:1.03-1.33). The mortality risk among females (cold and hot effects(95%CI) were 1.75(1.57-1.97) and 1.11(0.99-1.25), respectively)was higher than it among males (cold and hot effects(95%CI) were 1.59(1.45-1.77) and 1.11(1.03-1.19), respectively). Whereas the mortality risk on higher education population was significantly higher (cold and hot effects (95%CI) were 1.89(1.48-2.45)and 1.34(1.19-1.48), respectively) than it on other educated people.
Age, gender, educational level and place of death showed modifying effects on the association between temperature and mortality. The elderly, women and highly educated people were vulnerable to the temperature influence on mortality.
探讨社会经济因素对中国南方不同城市气温与死亡率关联的影响。
收集了2006 - 2009年长沙和昆明等城市以及2006 - 2010年广州和珠海等城市的每日死亡率登记数据、气象数据和空气污染数据,采用分布滞后非线性模型,按年龄、性别、教育程度和死亡地点分层,探讨社会经济因素对气温与死亡率关联的修正作用。在高温(0 - 3天)和低温(0 - 20天)情况下,分别分析每个城市气温与死亡率的累积效应。通过一般线性阈值模型评估气温与死亡率的关联。上述过程首先用于分析单个城市的影响,然后应用Meta分析通过效应合并来分析多个城市的影响。
四个城市的气温与死亡率关系呈非线性。长沙、昆明、广州和珠海的最低死亡风险分别为23.5℃、20.5℃、25.0℃和26.0℃。效应合并结果显示,低温(RR = 1.67,95%CI:1.54 - 1.80)对人群的总体影响高于高温(RR = 1.11,95%CI:1.(此处原文有误,应为1.01 - 1.18))。随着年龄增长,高温和低温情况下死亡风险均增加,且低温对老年人的影响(RR = 1.83,95%CI:1.65 - 2.04)大于高温(RR = 1.17,95%CI:1.03 - 1.33)。女性的死亡风险(冷热效应(95%CI)分别为1.75(1.57 - 1.97)和1.11(0.99 - 1.25))高于男性(冷热效应(95%CI)分别为1.59(1.45 - 1.77)和1.11(1.03 - 1.19))。而高等教育人群的死亡风险显著高于其他受教育人群(冷热效应(95%CI)分别为1.89(1.48 - 2.45)和1.34(1.19 - 1.48))。
年龄、性别、教育程度和死亡地点对气温与死亡率的关联有修正作用。老年人、女性和高学历人群易受气温对死亡率的影响。