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Modelling and analyzing spatial clusters of leptospirosis based on satellite-generated measurements of environmental factors in Thailand during 2013-2015

机译:基于泰国环境因素的卫星产生测量的牙翼螺旋状病空间簇的建模与分析,2013 - 2015年

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This study statistically identified the association of remotely sensed environmental factors, such as Land Surface Temperature (LST), Night Time Light (NTL), rainfall, the Normalised Difference Vegetation Index (NDVI) and elevation with the incidence of leptospirosis in Thailand based on the nationwide 7,495 confirmed cases reported during 2013–2015. This work also established prediction models based on empirical findings. Panel regression models with random-effect and fixed-effect specifications were used to investigate the association between the remotely sensed environmental factors and the leptospirosis incidence. The Local Indicators of Spatial Association (LISA) statistics were also applied to detect the spatial patterns of leptospirosis and similar results were found (the R2 values of the random-effect and fixed-effect models were 0.3686 and 0.3684, respectively). The outcome thus indicates that remotely sensed environmental factors possess statistically significant contribution in predicting this disease. The highest association in 3 years was observed in LST (random- effect coefficient = -9.787, p0.001; fixed-effect coefficient = -10.340, p = 0.005) followed by rainfall (random-effect coefficient = 1.353, p 0.001; fixed-effect coefficient = 1.347, p 0.001) and NTL density (random-effect coefficient = -0.569, p = 0.004; fixed-effect coefficient = -0.564, p = 0.001). All results obtained from the bivariate LISA statistics indicated the localised associations between remotely sensed environmental factors and the incidence of leptospirosis. Particularly, LISA’s results showed that the border provinces in the northeast, the northern and the southern regions displayed clusters of high leptospirosis incidence. All obtained outcomes thus show that remotely sensed environmental factors can be applied to panel regression models for incidence prediction, and these indicators can also identify the spatial concentration of leptospirosis in Thailand.
机译:本研究统计上鉴定了遥感环境因素的关联,如陆地表面温度(LST),夜间光(NTL),降雨,归一化差异植被指数(NDVI)和泰国钩纹血管病发生率的升高全国7,495案确认案件于2013 - 2015年报告。这项工作也建立了基于实证发现的预测模型。使用随机效应和固定效果规范的面板回归模型来研究远程感测的环境因素与钩端螺旋体血管病发生率之间的关联。局部空间协会(LISA)统计的局部指标也适用于检测咬合血管病的空间模式,发现类似的结果(随机效应和固定效果模型的R2值分别为0.3686和0.3684)。因此,结果表明远程感知的环境因素具有统计学上的预测疾病的显着贡献。在LST中观察到3年的最高关联(随机效应系数= -9.787,P <0.001;固定效果系数= -10.340,P = 0.005),然后降雨(随机效应系数= 1.353,P <0.001;固定效应系数= 1.347,P <0.001)和NTL密度(随机效应系数= -0.569,P = 0.004;固定效果系数= -0.564,P = 0.001)。从二抗体LISA统计中获得的所有结果都表明了远程感官的环境因素与乳化鼠发生率之间的本地化协会。特别是,丽莎的结果表明,东北边境省份,北部和南部地区展示了高睑血管周围病的簇。因此,所有获得的结果表明,遥感的环境因素可以应用于用于发病率预测的面板回归模型,这些指标还可以识别泰国睑作子的空间浓度。

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