Molecular surveillance leads to the first detection of Anopheles stephensi in Kenya

Research Square (Research Square)(2023)

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摘要
Abstract Anopheles stephensi is an invasive malaria vector that is endemic to south Asia and the Arabian Peninsula. It was recently reported in the Horn of Africa countries including Djibouti (2012), Ethiopia, Sudan (2019), Somalia (2019) and most recently Nigeria (2020). This mosquito is a competent vector for both Plasmodium falciparum and P. vivax. It is characterized by a high degree of behavioral plasticity and the ability to reproduce in various types of breeding sites including containers and therefore has the potential to propagate malaria transmission in rapidly urbanizing settings with poor drainage and disposal of waste containers. The World Health Organization (WHO) has called on all countries to scale up surveillance efforts to detect and report invasion by this vector and institute appropriate and effective control mechanisms. In Kenya, the Division for National Malaria Program (DNMP) and its partners have been conducting entomological surveillance in all coastal and northern counties that are suspected to be at risk of An. stephensi invasion as well as in all counties at risk of malaria. These efforts were supported by molecular surveillance of all unidentified Anopheles mosquitoes from other studies conducted by the Kenya Medical Research Institute (KEMRI) to try and identify An. stephensi. In this article, we report the first detection of An. stephensi in two sub counties of Marsabit County, Kenya in December 2022. We used Polymerase Chain Reaction (PCR) as the primary method of identification and confirmed results using morphological keys and sequencing of the ITS2 region. With the detection of this vector in Kenya, there is an urgent need for intensified surveillance to determine its occurrence and distribution and develop tailored approaches towards control to prevent further spread.
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anopheles stephensi,molecular surveillance,kenya
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