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气候变化、卫星衍生物理环境数据与人类钩端螺旋体病:中国的回顾性生态研究。

Climate variability, satellite-derived physical environmental data and human leptospirosis: A retrospective ecological study in China.

机构信息

UQ Spatial Epidemiology Laboratory, School of Veterinary Science, The University of Queensland, Gatton, QLD, 4343, Australia; Pangandaran Unit of Health Research and Development, National Institute of Health Research and Development (NIHRD), Ministry of Health of Indonesia, West Java, 46396, Indonesia.

School of Public Health and Social Work, Queensland University of Technology, Kelvin Grove, QLD, 4059, Australia.

出版信息

Environ Res. 2019 Sep;176:108523. doi: 10.1016/j.envres.2019.06.004. Epub 2019 Jun 10.

Abstract

BACKGROUND

In the past three decades, the incidence rate of notified leptospirosis cases in China have steeply declined and are now circumscribed to discrete areas in the country. Previous research showed that climate and environmental variation may play an important role in leptospirosis transmission. However, quantitative associations between climate, environmental factors and leptospirosis in the high-risk areas in China, is still poorly understood.

OBJECTIVE

To quantify the temporal effects of climate and remotely-sensed physical environmental factors on human leptospirosis in the high-risk counties in China.

METHODS

Time series seasonal decomposition was performed to explore the seasonality pattern of leptospirosis incidence in Mengla County, Yunnan and Yilong County, Sichuan for the period 2006-2016. Time series cross-correlation analysis was carried out to examine lagged effects of rainfall, relative humidity, normalized difference vegetation index (NDVI), modified normalized difference water index (MNDWI) and land surface temperature (LST) on leptospirosis. The associations of climatic and physical environment factors with leptospirosis in each county were assessed by using a generalized linear regression model with negative binomial link, adjusted by seasonal components.

RESULTS

Leptospirosis incidence in both counties showed strong and unique annual seasonality. Our results show that in Mengla County leptospirosis notifications exhibits a bi-modal temporal pattern while in Yilong County it follows a typical single epidemic curve. After adjusting for seasonality, the final best-fitting model for Mengla County indicated that leptospirosis notifications were significantly associated with present LST values (incidence rate ratio, IRR = 0.857, 95% confidence interval (CI):0.729-0.929) and rainfall at a lag of 6-months (IRR = 0.989; 95% CI: 0.985-0.993). The incidence of leptospirosis in Yilong was associated with rainfall at 1-month lag (IRR = 1.013, 95% CI: 1.003-1.023), LST (3-months lag) (IRR = 1.193, 95% CI: 1.095-1.301), and MNDWI (5-months lag) (IRR = 7.960, 95% CI: 1.241-47.66).

CONCLUSIONS

Our study identified lagged effects between leptospirosis incidence and climate and remotely-sensed environmental factors in the two most endemic counties in China. Rainfall in combination with satellite derived physical environment factors provided better insight of the local epidemiology as well as good predictors for leptospirosis outbreak in both counties. This would also be an avenue for the development of leptospirosis early warning systems to support leptospirosis control in China.

摘要

背景

在过去的三十年中,中国 notified 钩端螺旋体病病例的发病率急剧下降,现在仅限于该国的离散地区。先前的研究表明,气候和环境变化可能在钩端螺旋体病的传播中起重要作用。然而,在中国高风险地区,气候,环境因素与钩端螺旋体病之间的定量关联仍知之甚少。

目的

定量研究气候和遥感物理环境因素对中国高风险县人类钩端螺旋体病的时间效应。

方法

对 2006-2016 年云南勐腊县和四川仪陇县的钩端螺旋体病发病情况进行时间序列季节性分解。通过时间序列交叉相关分析,研究了降雨,相对湿度,归一化差异植被指数(NDVI),改进的归一化差异水指数(MNDWI)和地表温度(LST)对钩端螺旋体病的滞后影响。使用具有负二项链接的广义线性回归模型,通过季节性成分调整,评估气候和物理环境因素与每个县钩端螺旋体病的关联。

结果

两个县的钩端螺旋体病发病率均表现出强烈而独特的季节性。我们的结果表明,在勐腊县,钩端螺旋体病的通知显示出双峰时间格局,而在仪陇县则呈现出典型的单峰流行曲线。在调整季节性之后,勐腊县的最佳拟合模型表明,钩端螺旋体病的通知与当前的 LST 值(发病率比,IRR=0.857,95%置信区间(CI):0.729-0.929)和 6 个月滞后的降雨(IRR=0.989; 95%CI:0.985-0.993)显著相关。仪陇县的钩端螺旋体病发病与 1 个月滞后的降雨(IRR=1.013,95%CI:1.003-1.023),LST(3 个月滞后)(IRR=1.193,95%CI:1.095-1.301)和 MNDWI(5 个月滞后)(IRR=7.960,95%CI:1.241-47.66)有关。

结论

本研究在中国两个最流行的钩端螺旋体病县确定了钩端螺旋体病发病率与气候和遥感环境因素之间的滞后效应。降雨与卫星衍生的物理环境因素相结合,为了解当地流行病学以及预测两个县的钩端螺旋体病暴发提供了更好的视角。这也将是开发钩端螺旋体病预警系统以支持中国钩端螺旋体病控制的途径。

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