4.6 Article

Identification of new Anopheles gambiae transcriptional enhancers using a cross-species prediction approach

Journal

INSECT MOLECULAR BIOLOGY
Volume 30, Issue 4, Pages 410-419

Publisher

WILEY
DOI: 10.1111/imb.12705

Keywords

malaria; mosquito control; cross‐ species enhancer discovery; computational enhancer prediction; Drosophila melanogaster; regulatory genomics; cis‐ regulatory element; vector biology

Funding

  1. NIH [R21 AI125918]

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The study successfully predicted enhancers in the A. gambiae genome using a computational method, providing new research tools for tissues affected by malaria transmission and suggesting potential directions for optimizing genetic control methods.
The success of transgenic mosquito vector control approaches relies on well-targeted gene expression, requiring the identification and characterization of a diverse set of mosquito promoters and transcriptional enhancers. However, few enhancers have been characterized in Anopheles gambiae to date. Here, we employ the SCRMshaw method we previously developed to predict enhancers in the A. gambiae genome, preferentially targeting vector-relevant tissues such as the salivary glands, midgut and nervous system. We demonstrate a high overall success rate, with at least 8 of 11 (73%) tested sequences validating as enhancers in an in vivo xenotransgenic assay. Four tested sequences drive expression in either the salivary gland or the midgut, making them directly useful for probing the biology of these infection-relevant tissues. The success of our study suggests that computational enhancer prediction should serve as an effective means for identifying A. gambiae enhancers with activity in tissues involved in malaria propagation and transmission.

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