Messina Joseph P, Moore Nathan J, DeVisser Mark H, McCord Paul F, Walker Edward D
Department of Geography, Center for Global Change and Earth Observations, and AgBioResearch, Michigan State University.
Department of Geography and Center for Global Change and Earth Observations, Michigan State University, and Department of Environmental and Resource Sciences, Zhejiang University, Hangzhou, China.
Ann Assoc Am Geogr. 2012;102(2):1038-1048. doi: 10.1080/00045608.2012.671134.
African trypanosomiasis, otherwise known as in humans and in animals, is a parasitic protist passed cyclically by the tsetse fly. Despite more than a century of control and eradication efforts, the fly remains widely distributed across Africa and coextensive with other prevalent diseases. Control and planning are hampered by spatially and temporally variant vector distributions, ecologically irrelevant boundaries, and neglect. Tsetse are particularly well suited to move into previously disease-free areas under climate change scenarios, placing unprepared populations at risk. Here we present the modeling framework ATcast, which combines a dynamically downscaled regional climate model with a temporally and spatially dynamic species distribution model to predict tsetse populations over space and time. These modeled results are integrated with Kenyan population data to predict, for the period 2050 to 2059, exposure potential to tsetse and, by association, sleeping sickness and nagana across Kenya.
非洲锥虫病,在人类中又称昏睡病,在动物中又称那加那病,是一种由采采蝇周期性传播的寄生原生生物。尽管经过了一个多世纪的控制和根除努力,但采采蝇仍广泛分布于非洲,且与其他流行疾病共存。空间和时间上变化的病媒分布、生态上不相关的边界以及忽视等因素阻碍了控制和规划工作。在气候变化情景下,采采蝇特别适合迁入以前无病的地区,使毫无准备的人群面临风险。在此,我们展示了建模框架ATcast,它将动态降尺度的区域气候模型与时空动态物种分布模型相结合,以预测采采蝇在空间和时间上的种群数量。这些建模结果与肯尼亚人口数据相结合,以预测2050年至2059年期间肯尼亚全境采采蝇的暴露可能性,并由此推断昏睡病和那加那病的暴露可能性。