Genomic surveillance reveals geographical heterogeneity and differences in known and novel insecticide resistance mechanisms in Anopheles arabiensis across Kenya.

IF 3.7 2区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Brian Polo, Kelly L Bennett, Sonia Barasa, Jon Brenas, Silas Agumba, Joseph Mwangangi, Lucy Wachira, Stanley Kitur, Damaris Matoke-Muhia, David M Mburu, Edith Ramaita, Elijah O Juma, Charles Mbogo, Eric Ochomo, Chris S Clarkson, Alistair Miles, Luna Kamau
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Abstract

Background: Insecticide resistance in disease vectors poses a significant threat to the control of transmission globally. In Anopheles mosquitoes, resistance has jeopardized gains made in malaria control and led to the resurgence of cases. Although Anopheles arabiensis is a major malaria vector, little is known about its genetic diversity and insecticide resistance mechanisms across geographical space. There is an urgent need to incorporate genomics in resistance monitoring to allow preemptive detection of adaptive alleles.

Methods: We analyzed whole-genome data from 498 An. arabiensis specimens collected across five regions in Kenya. Population structure was assessed and both known and novel resistance mechanisms were investigated through SNP and CNV frequency analysis, genome-wide selection scans and haplotype clustering.

Results: Analyses of whole-genome data revealed geographical population structure between the northwestern region and central coastal Kenya, which was likely influenced by the Great Rift Valley. Distinct geographical differences in insecticide resistance profiles were observed across Kenya, reflecting differences in ecology, land use and selection pressure. For instance, in central Kenya, copy number variants at the Cyp6aa/p gene cluster and carboxylesterase genes associated with metabolic resistance to pyrethroids and organophosphates are fixed. In contrast, northwestern Kenya had mutations associated with both the target site and metabolic resistance to pyrethroids and DDT at high frequencies. Vgsc-L995F mutations occurred at frequencies of up to 44%, and duplications of Cyp9k1 occurred at frequencies of up to 66%. Genome-wide selection scans identified novel candidates under selection in central Kenya, including the Keap1 gene, which is involved in the regulation of multiple detoxification genes, likely due to high insecticide pressure in the region.

Conclusion: Restricted gene flow coupled with heterogeneity in molecular insecticide resistance across Kenya suggests that localized control measures may be more effective in preventing the spread of insecticide resistance in An. arabiensis. This study highlights the importance of incorporating genomics in the routine monitoring of malaria vector populations to identify the emergence of new resistance signatures and their geographic distribution and spread.

基因组监测揭示了肯尼亚各地阿拉伯按蚊已知和新型杀虫剂抗性机制的地理异质性和差异。
背景:病媒的杀虫剂抗性对控制全球传播构成重大威胁。在按蚊中,抗药性已危及疟疾控制方面取得的成果,并导致病例死灰复燃。虽然阿拉伯按蚊是一种主要的疟疾媒介,但人们对其遗传多样性和跨地理空间的杀虫剂抗性机制知之甚少。目前迫切需要将基因组学纳入耐药性监测,以便预先检测适应性等位基因。方法:我们分析了498 An的全基因组数据。在肯尼亚五个地区收集的阿拉伯种标本。通过SNP和CNV频率分析、全基因组选择扫描和单倍型聚类,对种群结构进行了评估,并研究了已知和新的抗性机制。结果:全基因组数据分析揭示了西北地区和肯尼亚中部沿海地区之间的地理人口结构,这可能受到东非大裂谷的影响。在肯尼亚各地观察到杀虫剂抗性分布的明显地理差异,反映了生态、土地利用和选择压力的差异。例如,在肯尼亚中部,Cyp6aa/p基因簇的拷贝数变异和与对拟除虫菊酯和有机磷的代谢抗性相关的羧酸酯酶基因是固定的。相比之下,肯尼亚西北部的突变与靶位点和对拟除虫菊酯类杀虫剂和滴滴涕的代谢性抗性相关,频率很高。Vgsc-L995F突变发生率高达44%,Cyp9k1重复发生率高达66%。全基因组选择扫描在肯尼亚中部发现了新的候选者,包括Keap1基因,它参与多种解毒基因的调控,可能是由于该地区的高杀虫剂压力。结论:肯尼亚境内有限的基因流加上分子杀虫剂抗性的异质性表明,局部控制措施可能更有效地防止杀虫剂抗性在肯尼亚的传播。arabiensis。这项研究强调了将基因组学纳入疟疾病媒种群常规监测的重要性,以确定新的耐药性特征的出现及其地理分布和传播。
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来源期刊
BMC Genomics
BMC Genomics 生物-生物工程与应用微生物
CiteScore
7.40
自引率
4.50%
发文量
769
审稿时长
6.4 months
期刊介绍: BMC Genomics is an open access, peer-reviewed journal that considers articles on all aspects of genome-scale analysis, functional genomics, and proteomics. BMC Genomics is part of the BMC series which publishes subject-specific journals focused on the needs of individual research communities across all areas of biology and medicine. We offer an efficient, fair and friendly peer review service, and are committed to publishing all sound science, provided that there is some advance in knowledge presented by the work.
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