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Predicting the age of field <i>Anopheles</i> mosquitoes using mass spectrometry and deep learning

Noshine Mohammad, Pauline Naudion, Abdoulaye Kane Dia, Pierre‐Yves Boëlle, Abdoulaye Konaté, Lassana Konaté, El Hadji Amadou Niang, Renaud Piarroux, Xavier Tannier, Cécile Nabet

2024Science Advances12 citationsDOIOpen Access PDF

Abstract

Mosquito-borne diseases like malaria are rising globally, and improved mosquito vector surveillance is needed. Survival of Anopheles mosquitoes is key for epidemiological monitoring of malaria transmission and evaluation of vector control strategies targeting mosquito longevity, as the risk of pathogen transmission increases with mosquito age. However, the available tools to estimate field mosquito age are often approximate and time-consuming. Here, we show a rapid method that combines matrix-assisted laser desorption/ionization–time-of-flight mass spectrometry with deep learning for mosquito age prediction. Using 2763 mass spectra from the head, legs, and thorax of 251 field-collected Anopheles arabiensis mosquitoes, we developed deep learning models that achieved a best mean absolute error of 1.74 days. We also demonstrate consistent performance at two ecological sites in Senegal, supported by age-related protein changes. Our approach is promising for malaria control and the field of vector biology, benefiting other disease vectors like Aedes mosquitoes.

Topics & Concepts

AnophelesMalariaVector (molecular biology)Mosquito controlBiologyTransmission (telecommunications)ZoologyComputer scienceImmunologyBiochemistryRecombinant DNAGeneTelecommunicationsMosquito-borne diseases and controlMalaria Research and ControlVibrio bacteria research studies
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