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首页> 外文期刊>Spatial and spatio-temporal epidemiology >Geographically weighted discriminant analysis of environmental conditions associated with Rift Valley fever outbreaks in South Africa
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Geographically weighted discriminant analysis of environmental conditions associated with Rift Valley fever outbreaks in South Africa

机译:南非裂谷热爆发相关环境条件的地理加权判别分析

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Rift Valley fever (RVF) is a zoonotic arboviral infection that has occurred across Africa and parts of the Middle East. Geographically weighted discriminant analysis (GWDA) is a spatially-adaptive extension of traditional discriminant analysis (DA) which has rarely been applied to infectious disease epidemiology research. This study compares the classification performance of GWDA and traditional DA when used to distinguish between locations where livestock are at risk or are not at risk for acquiring RVF virus (RVFV) using 699 case reports of RVF (affecting 18,894 animals) from two outbreaks in South Africa in 2008-2009 and 2010-2011. GWDA produced better results than traditional DA for all bandwidth and kernel combinations. The best GWDA model correctly classified 96.6% of the original data versus 84.5% obtained with traditional DA. With GWDA, false positives decreased from 10.9% to 3.7%, and false negatives decreased from 19.9% to 3.2%.
机译:裂谷热(RVF)是一种人畜共患的虫媒病毒感染,已经在非洲和中东部分地区发生。地理加权判别分析(GWDA)是传统判别分析(DA)在空间上的扩展,很少用于传染病流行病学研究。这项研究使用了来自南部两次暴发的699例RVF(影响18,894只动物)的病例报告,比较了GWDA和传统DA在区分牲畜有风险或无风险获得RVF病毒(RVFV)的位置时的分类性能。非洲在2008-2009年和2010-2011年。在所有带宽和内核组合方面,GWDA的效果均优于传统DA。最佳GWDA模型正确分类了原始数据的96.6%,而传统DA获得的数据为84.5%。使用GWDA,误报率从10.9%下降到3.7%,误报率从19.9%下降到3.2%。

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