Combination of computational techniques and RNAi reveal targets in Anopheles gambiae for malaria vector control
Eunice O. Adedeji,
Thomas Beder,
Claudia Damiani
et al.
Abstract:Increasing reports of insecticide resistance continue to hamper the gains of vector control strategies in curbing malaria transmission. This makes identifying new insecticide targets or alternative vector control strategies necessary. CLassifier of Essentiality AcRoss EukaRyote (CLEARER), a leave-one-organism-out cross-validation machine learning classifier for essential genes, was used to predict essential genes in Anopheles gambiae and selected predicted genes experimentally validated. The CLEARER algorithm … Show more
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