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Mapping the global potential transmission hotspots for severe fever with thrombocytopenia syndrome by machine learning methods

机译:通过机器学习方法将全球潜在的传输热点进行严重发烧,通过机器学习方法进行严重发烧血小板症综合征

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div class="hlFld-Abstract test" Severe fever with thrombocytopenia syndrome (SFTS) is an emerging infectious disease with increasing spread. Currently SFTS transmission has expanded beyond Asian countries, however, with definitive global extents and risk patterns remained obscure. Here we established an exhaustive database that included globally reported locations of human SFTS cases and the competent vector, Haemaphysalis longicornis ( H. longicornis ), as well as the explanatory environmental variables, based on which, the potential geographic range of H. longicornis and risk areas for SFTS were mapped by applying two machine learning methods. Ten predictors were identified contributing to global distribution for H. longicornis with relative contribution ≥1%. Outside contemporary known distribution, we predict high receptivity to H. longicornis across two continents, including northeastern USA, New Zealand, parts of Australia, and several Pacific islands. Eight key drivers of SFTS cases occurrence were identified, including elevation, predicted probability of H. longicornis presence, two temperature-related factors, two precipitation-related factors, the richness of mammals and percentage coverage of water bodies. The globally model-predicted risk map of human SFTS occurrence was created and validated effective for discriminating the actual affected and unaffected areas (median predictive probability 0.74 vs. 0.04, P ?0.001) in three countries with reported cases outside China. The high-risk areas (probability ≥50%) were predicted mainly in east-central China, most parts of the Korean peninsula and southern Japan, and northern New Zealand. Our findings highlight areas where an intensive vigilance for potential SFTS spread or invasion events should be advocated, owing to their high receptibility to H. longicornis distribution.
机译:Div类=“HLFLD-摘要测试”>血小板减少症综合征(SFT)的严重发烧是一种新兴传染病,随着蔓延的增加。目前,SFTS传输扩展超出亚洲国家,然而,明确的全球范围和风险模式仍然模糊不清。在这里,我们建立了一个详尽的数据库,包括全球报告的人类SFT病例和能力的载体,Haemaphysalis Longicordornis(H. longicornis),以及基于哪个的解释性环境变量,H. Hongicordornis和风险的潜在地理范围通过应用两种机器学习方法映射SFT的区域。鉴定了十种预测因子,为H. Longicordornis的全球分布造成了相对贡献≥1%。在现代的已知分布之外,我们预测了两大大陆的高接受性,包括美国东北部,新西兰,澳大利亚地区和几个太平洋岛屿。确定了SFT病例的八个关键驱动因素,包括升高,预测Hongicornis存在,两个温度相关因素,两个降水相关因素,哺乳动物的丰富度和水体的百分比。全球模型预测的人体SFTS发生风险地图是创建和验证的,以鉴别三个国家的实际受影响和未受影响的区域(中位预测概率0.74,P <0.04,P <0.04,P <0.04,P <0.001)。高风险地区(概率≥50%)主要预测,主要在中国东部,大多数朝鲜半岛和日本南部和新西兰北部。我们的调查结果强调了应倡导潜在的SFT潜在的潜在SFT传播或入侵事件的领域,因为他们的高度可接受了H. Longicornis分布。

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