Zhao Jian, Liao Jishan, Huang Xu, Zhao Jing, Wang Yeping, Ren Jinghuan, Wang Xiaoye, Ding Fan
Disease Control and Emergency Response Office, Chinese Center for Disease Control and Prevention, Beijing, China.
Department of Biological Sciences, University of Notre Dame, Notre Dame, USA.
BMC Infect Dis. 2016 Jul 22;16:343. doi: 10.1186/s12879-016-1653-5.
Leptospirosis is a water-borne and widespread spirochetal zoonosis caused by pathogenic bacteria called leptospires. Human leptospirosis is an important zoonotic infectious disease with frequent outbreaks in recent years in China. Leptospirosis's emergence has been linked to many environmental and ecological drivers of disease transmission. In this paper, we identified the environmental and socioeconomic factors associated with leptospirosis in China, and predict potential risk area of leptospirosis using predictive models.
Leptospirosis incidence data were derived from the database of China's web-based infectious disease reporting system, a national surveillance network maintained by Chinese Center for Disease Control and Prevention. We built statistical relationship between occurrence of leptospirosis and nine environmental and socioeconomic risk factors using logistic regression model and Maxent model.
Both logistic regression model and Maxent model have high performance in predicting the occurrence of leptospirosis, with AUC value of 0.95 and 0.96, respectively. Annual mean temperature (Bio1) and annual total precipitation (Bio12) are two most important variables governing the geographic distribution of leptospirosis in China. The geographic distributions of areas at risk of leptospirosis predicted from both models show high agreement. The risk areas are located mainly in seven provinces of China: Sichuan Province, Chongqing Municipality, Hunan Province, Jiangxi Province, Guangdong Province, Guangxi Province, and Hainan Province, where surveillance and control programs are urgently needed. Logistic regression model and Maxent model predicted that 403 and 464 counties are at very high risk of leptospirosis, respectively.
Our results highlight the importance of socioeconomic and environmental variables and predictive models in identifying risk areas for leptospirosis in China. The values of Geographic Information System and predictive models were demonstrated for investigating the geographic distribution, estimating socioeconomic and environmental risk factors, and enhancing our understanding of leptospirosis in China.
钩端螺旋体病是一种由致病性钩端螺旋体引起的经水传播且广泛流行的螺旋体人畜共患病。人类钩端螺旋体病是一种重要的人畜共患传染病,近年来在中国频繁爆发。钩端螺旋体病的出现与许多疾病传播的环境和生态驱动因素有关。在本文中,我们确定了中国与钩端螺旋体病相关的环境和社会经济因素,并使用预测模型预测钩端螺旋体病的潜在风险区域。
钩端螺旋体病发病率数据来自中国基于网络的传染病报告系统数据库,该数据库由中国疾病预防控制中心维护,是一个全国性监测网络。我们使用逻辑回归模型和最大熵模型建立了钩端螺旋体病发生与九个环境和社会经济风险因素之间的统计关系。
逻辑回归模型和最大熵模型在预测钩端螺旋体病的发生方面都具有很高的性能,AUC值分别为0.95和0.96。年平均温度(Bio1)和年总降水量(Bio12)是控制中国钩端螺旋体病地理分布的两个最重要变量。两种模型预测的钩端螺旋体病风险区域的地理分布显示出高度一致性。风险区域主要位于中国的七个省份:四川省、重庆市、湖南省、江西省、广东省、广西壮族自治区和海南省,急需在这些地区开展监测和控制项目。逻辑回归模型和最大熵模型预测分别有403个和464个县钩端螺旋体病风险极高。
我们的结果强调了社会经济和环境变量以及预测模型在确定中国钩端螺旋体病风险区域方面的重要性。展示了地理信息系统和预测模型在调查地理分布、估计社会经济和环境风险因素以及增强我们对中国钩端螺旋体病的理解方面的价值。