Local and cross-border importation remain major challenges to malaria elimination and are difficult to measure using traditional surveillance data. To address this challenge, we systematically collected parasite genetic data and travel history from thousands of malaria cases across northeastern Namibia and estimated human mobility from mobile phone data. We observed strong fine-scale spatial structure in local parasite populations, providing positive evidence that the majority of cases were due to local transmission. This result was largely consistent with estimates from mobile phone and travel history data. However, genetic data identified more detailed and extensive evidence of parasite connectivity over hundreds of kilometers than the other data, within Namibia and across the Angolan and Zambian borders. Our results provide a framework for incorporating genetic data into malaria surveillance and provide evidence that both strengthening of local interventions and regional coordination are likely necessary to eliminate malaria in this region of Southern Africa.
Using parasite genetic and human mobility data to infer local and cross-border malaria connectivity in Southern Africa.
利用寄生虫遗传和人类流动数据推断南部非洲的本地和跨境疟疾传播情况
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作者:Tessema Sofonias, Wesolowski Amy, Chen Anna, Murphy Maxwell, Wilheim Jordan, Mupiri Anna-Rosa, Ruktanonchai Nick W, Alegana Victor A, Tatem Andrew J, Tambo Munyaradzi, Didier Bradley, Cohen Justin M, Bennett Adam, Sturrock Hugh Jw, Gosling Roland, Hsiang Michelle S, Smith David L, Mumbengegwi Davis R, Smith Jennifer L, Greenhouse Bryan
| 期刊: | Elife | 影响因子: | 6.400 |
| 时间: | 2019 | 起止号: | 2019 Apr 2; 8:e43510 |
| doi: | 10.7554/eLife.43510 | 种属: | Human |
| 研究方向: | 其它 | ||
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