Ecological niche modelling of Rift Valley fever virus vectors in Baringo, Kenya

Q1 Environmental Science
Alfred O. Ochieng, Mark Nanyingi, Edwin Kipruto, Isabella M. Ondiba, F. Amimo, C. Oludhe, D. Olago, I. Nyamongo, B. Estambale
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引用次数: 19

Abstract

Background Rift Valley fever (RVF) is a vector-borne zoonotic disease that has an impact on human health and animal productivity. Here, we explore the use of vector presence modelling to predict the distribution of RVF vector species under climate change scenario to demonstrate the potential for geographic spread of Rift Valley fever virus (RVFV). Objectives To evaluate the effect of climate change on RVF vector distribution in Baringo County, Kenya, with an aim of developing a risk map for spatial prediction of RVF outbreaks. Methodology The study used data on vector presence and ecological niche modelling (MaxEnt) algorithm to predict the effect of climatic change on habitat suitability and the spatial distribution of RVF vectors in Baringo County. Data on species occurrence were obtained from longitudinal sampling of adult mosquitoes and larvae in the study area. We used present (2000) and future (2050) Bioclim climate databases to model the vector distribution. Results Model results predicted potential suitable areas with high success rates for Culex quinquefasciatus, Culex univitattus, Mansonia africana, and Mansonia uniformis. Under the present climatic conditions, the lowlands were found to be highly suitable for all the species. Future climatic conditions indicate an increase in the spatial distribution of Cx. quinquefasciatus and M. africana. Model performance was statistically significant. Conclusion Soil types, precipitation in the driest quarter, precipitation seasonality, and isothermality showed the highest predictive potential for the four species.
肯尼亚巴林戈裂谷热病毒载体的生态位建模
裂谷热是一种影响人类健康和动物生产力的媒介传播的人畜共患疾病。在此,我们探索使用媒介存在模型来预测气候变化情景下裂谷热媒介物种的分布,以证明裂谷热病毒(RVFV)的地理传播潜力。目的评价气候变化对肯尼亚巴林戈县裂谷热病媒分布的影响,为裂谷热疫情空间预测绘制风险图。方法利用媒介存在数据和生态位建模(MaxEnt)算法预测气候变化对巴林戈县裂谷热媒介生境适宜性和空间分布的影响。通过对研究区成蚊和幼虫的纵向抽样,获得了蚊种发生情况。我们使用现在(2000年)和未来(2050年)的Bioclim气候数据库来模拟媒介分布。结果模型预测了致倦库蚊、univitatus库蚊、mansonaafricana和mansonauniformis的成功率较高的潜在适宜区。在目前的气候条件下,低地非常适合所有物种的生长。未来气候条件表明Cx的空间分布将增加。致倦库蚊和非洲库蚊。模型性能具有统计学意义。结论土壤类型、最干季降水、降水季节性和等温线对四种植物的预测潜力最大。
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来源期刊
Infection Ecology and Epidemiology
Infection Ecology and Epidemiology Environmental Science-Environmental Science (miscellaneous)
CiteScore
8.70
自引率
0.00%
发文量
4
审稿时长
12 weeks
期刊介绍: Infection Ecology & Epidemiology aims to stimulate inter-disciplinary collaborations dealing with a range of subjects, from the plethora of zoonotic infections in humans, over diseases with implication in wildlife ecology, to advanced virology and bacteriology. The journal specifically welcomes papers from studies where researchers from multiple medical and ecological disciplines are collaborating so as to increase our knowledge of the emergence, spread and effect of new and re-emerged infectious diseases in humans, domestic animals and wildlife. Main areas of interest include, but are not limited to: 1.Zoonotic microbioorganisms 2.Vector borne infections 3.Gastrointestinal pathogens 4.Antimicrobial resistance 5.Zoonotic microbioorganisms in changing environment
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