Abstract

BackgroundThe extensive use of pyrethroids for control of malaria vectors, driven by their cost, efficacy and safety, has led to widespread resistance. To favor their sustainable use, the World Health Organization (WHO) formulated an insecticide resistance management plan, which includes the identification of the mechanisms of resistance and resistance surveillance. Recognized physiological mechanisms of resistance include target site mutations in the para voltage-gated sodium channel, metabolic detoxification and penetration resistance. Such understanding of resistance mechanisms has allowed the development of resistance monitoring tools, including genotyping of the kdr mutation L1014F/S in the para gene.MethodsThe sequence-based technique RNA-seq was applied to study changes in the transcriptome of deltamethrin-resistant and -susceptible Anopheles gambiae mosquitoes from the Western Province of Kenya. The resulting gene expression profiles were compared to data in the most recent literature to derive a list of candidate resistance genes. RNA-seq data were analyzed also to identify sequence polymorphisms linked to resistance.ResultsA total of five candidate-resistance genes (AGAP04177, AGAP004572, AGAP008840, AGAP007530 and AGAP013036) were identified with altered expression between resistant and susceptible mosquitoes from West and East Africa. A change from G to C at position 36043997 of chromosome 3R resulting in A101G of the sulfotransferase gene AGAP009551 was significantly associated with the resistance phenotype (odds ratio: 5.10). The kdr L1014S mutation was detected at similar frequencies in both phenotypically resistant and susceptible mosquitoes, suggesting it is no longer fully predictive of the resistant phenotype.ConclusionsOverall, these results support the conclusion that resistance to pyrethroids is a complex and evolving phenotype, dependent on multiple gene functions including, but not limited to, metabolic detoxification. Functional convergence among metabolic detoxification genes may exist, with the role of each gene being modulated by the life history and selection pressure on mosquito populations. As a consequence, biochemical assays that quantify overall enzyme activity may be a more suitable method for predicting metabolic resistance than gene-based assays.Electronic supplementary materialThe online version of this article (doi:10.1186/s13071-015-1083-z) contains supplementary material, which is available to authorized users.

Highlights

  • The extensive use of pyrethroids for control of malaria vectors, driven by their cost, efficacy and safety, has led to widespread resistance

  • The World Health Organization (WHO) recommends the use of four classes of insecticides in indoor residual spraying (IRS), while only pyrethroids are approved for use on insecticide-treated nets (ITN) [6]

  • We examined the gene expression profile of deltamethrin-resistant and -susceptible mosquitoes from the Western Province of Kenya by RNA-seq to further the understanding of resistance mechanisms and possibly characterize markers for resistance surveillance

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Summary

Introduction

The extensive use of pyrethroids for control of malaria vectors, driven by their cost, efficacy and safety, has led to widespread resistance. To favor their sustainable use, the World Health Organization (WHO) formulated an insecticide resistance management plan, which includes the identification of the mechanisms of resistance and resistance surveillance. Several initiatives including the Global Fund, the President’s Malaria Initiative, private foundations and national governments supported a massive scale-up of antimalarial interventions in Africa [1, 2] These control programs targeted malaria vectors, through insecticide-treated nets (ITN) and indoor residual spraying (IRS), as well as human hosts by improving diagnosis and implementing artemisinin-combination treatments (ACT). The identification of the mechanisms of resistance has been important for developing molecular monitoring tools of resistance [9]

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