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Spatial Analysis of Severe Fever with Thrombocytopenia Syndrome Virus in China Using a Geographically Weighted Logistic Regression Model

机译:基于地理加权Logistic回归模型的中国血小板减少综合征病毒重度发热的空间分析

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摘要

Severe fever with thrombocytopenia syndrome (SFTS) is caused by severe fever with thrombocytopenia syndrome virus (SFTSV), which has had a serious impact on public health in parts of Asia. There is no specific antiviral drug or vaccine for SFTSV and, therefore, it is important to determine the factors that influence the occurrence of SFTSV infections. This study aimed to explore the spatial associations between SFTSV infections and several potential determinants, and to predict the high-risk areas in mainland China. The analysis was carried out at the level of provinces in mainland China. The potential explanatory variables that were investigated consisted of meteorological factors (average temperature, average monthly precipitation and average relative humidity), the average proportion of rural population and the average proportion of primary industries over three years (2010–2012). We constructed a geographically weighted logistic regression (GWLR) model in order to explore the associations between the selected variables and confirmed cases of SFTSV. The study showed that: (1) meteorological factors have a strong influence on the SFTSV cover; (2) a GWLR model is suitable for exploring SFTSV cover in mainland China; (3) our findings can be used for predicting high-risk areas and highlighting when meteorological factors pose a risk in order to aid in the implementation of public health strategies.
机译:血小板减少症候群(SFTS)引起的重度发烧是由血小板减少症候群病毒(SFTSV)引起的严重发烧所致,它对亚洲部分地区的公共卫生产生了严重影响。没有针对SFTSV的特异性抗病毒药物或疫苗,因此,重要的是确定影响SFTSV感染发生的因素。这项研究旨在探讨SFTSV感染与几种潜在决定因素之间的空间关联,并预测中国大陆的高风险地区。分析是在中国大陆的省级进行的。调查的潜在解释变量包括气象因素(平均温度,平均每月降水量和平均相对湿度),三年(2010-2012年)中农村人口的平均比例和第一产业的平均比例。为了探究所选变量与SFTSV确诊病例之间的关联,我们构建了地理加权逻辑回归(GWLR)模型。研究表明:(1)气象因素对SFTSV的覆盖率有很大影响; (2)GWLR模型适合在中国大陆探索SFTSV覆盖; (3)我们的发现可用于预测高风险地区,并突出显示气象因素何时构成风险,以帮助实施公共卫生策略。

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