School of Health Sciences, Wuhan University, 115 Donghu Road, Wuhan, 430071, China.
Department of Epidemiology and Biostatistics, Institute of Basic Medical Sciences Chinese Academy of Medical Sciences, School of Basic Medicine Peking, Union Medical College, Beijing, 100005, China.
Environ Sci Pollut Res Int. 2022 Mar;29(12):18116-18125. doi: 10.1007/s11356-021-16948-y. Epub 2021 Oct 22.
Few studies have estimated the nonlinear association of ambient temperature with the risk of influenza. We therefore applied a time-series analysis to explore the short-term effect of ambient temperature on the incidence of influenza in Wuhan, China. Daily influenza cases were collected from Hubei Provincial Center for Disease Control and Prevention (Hubei CDC) from January 1, 2014, to December 31, 2017. The meteorological and daily pollutant data was obtained from the Hubei Meteorological Service Center and National Air Quality Monitoring Stations, respectively. We used a generalized additive model (GAM) coupled with the distributed lag nonlinear model (DLNM) to explore the exposure-lag-response relationship between the short-term risk of influenza and daily average ambient temperature. Analyses were also performed to assess the extreme cold and hot temperature effects. We observed that the ambient temperature was statistically significant, and the exposure-response curve is approximately S-shaped, with a peak observed at 23.57 ℃. The single-day lag curve showed that extreme hot and cold temperatures were both significantly associated with influenza. The extreme hot temperature has an acute effect on influenza, with the most significant effect observed at lag 0-1. The extreme cold temperature has a relatively smaller effect but lasts longer, with the effect exerted continuously during a lag of 2-4 days. Our study found significant nonlinear and delayed associations between ambient temperature and the incidence of influenza. Our finding contributes to the establishment of an early warning system for airborne infectious diseases.
很少有研究估计环境温度与流感风险之间的非线性关联。因此,我们应用时间序列分析来探索环境温度对中国武汉流感发病率的短期影响。每日流感病例数据来自湖北省疾病预防控制中心(湖北省 CDC),时间范围为 2014 年 1 月 1 日至 2017 年 12 月 31 日。气象和每日污染物数据分别来自湖北省气象服务中心和国家空气质量监测站。我们使用广义加性模型(GAM)结合分布式滞后非线性模型(DLNM)来探索短期流感风险与每日平均环境温度之间的暴露-滞后-反应关系。还进行了分析以评估极冷和极热温度的影响。我们观察到环境温度具有统计学意义,暴露-反应曲线近似呈 S 形,峰值出现在 23.57°C。单日滞后曲线表明,极端高温和低温均与流感显著相关。极热温度对流感具有急性影响,在 0-1 天的滞后时最明显。极冷温度的影响较小,但持续时间较长,在 2-4 天的滞后期间持续发挥作用。我们的研究发现环境温度与流感发病率之间存在显著的非线性和滞后关联。我们的研究结果有助于建立空气传播传染病的预警系统。