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Spatial Distribution, Genetic Analysis, and Population Structure of the Invasive Anopheles Stephensi in Kenya: 2022-2024

crossref(2024)

Centers for Disease Control and Prevention | University of Nairobi | Kenya Medical Research Institute | National Malaria Control Programme | Pan African Mosquito Control Association | US President’s Malaria Initiative | PMI Evolve Kenya | Kenya Medical Research Institute-Wellcome Trust | Duke University | Pwani University | Centers for Disease Control and Prevention Kenya

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Abstract
This study analyzes the distribution, genetic diversity, and spread of An. stephensi in Kenya following initial detection in December 2022. A total of 114 larval and 33 adult An. stephensi samples were confirmed in 7 of 18 surveyed counties majorly along transportation routes. Genetic analyses revealed three distinct genetic compositions with different levels of genetic diversity, suggesting multiple introductions into the country. The genetic composition of mosquitoes in most counties resembled southern Ethiopian populations, while those from Turkana showed a unique haplotype. A species distribution model predicts a more extensive range than currently observed, with low precipitation and minimal seasonal temperature variations as key factors influencing distribution. Challenges in adult sampling were noted, with larval sampling revealing co-occurrence with native Anopheles species. The findings have implications for surveillance and control strategies, emphasizing the need for continued monitoring, refined sampling techniques to inform bionomics, and cross-border collaboration.
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要点】:本研究分析了肯尼亚入侵种埃及伊蚊(Anopheles stephensi)的地理分布、遗传多样性及传播情况,揭示了其多样的遗传组成和扩散风险,为监测与控制策略提供了重要信息。

方法】:研究通过对114个幼虫和33个成虫样本进行遗传分析,并结合空间分布模型来预测埃及伊蚊的潜在分布区域。

实验】:在肯尼亚18个调查县中的7个县沿着交通路线确认了样本,使用的数据集包括幼虫和成虫的遗传信息,实验结果揭示了不同县份中埃及伊蚊的遗传组成与多样性,以及与南方埃塞俄比亚种群的关系。