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Using mid-infrared spectroscopy and supervised machine-learning to identify vertebrate blood meals in the malaria vector, Anopheles arabiensis.

Emmanuel P MwangaSalum A MapuaDoreen J SiriaHalfan S NgowoFrancis NangachaJoseph MgandoFrancesco BaldiniMario González JiménezHeather M FergusonKlaas WynnePrashanth SelvarajSimon A BabayanFredros O Okumu
Published in: Malaria journal (2019)
Mid-infrared spectroscopy coupled with supervised machine learning can accurately identify multiple vertebrate blood meals in malaria vectors, thus potentially enabling rapid assessment of mosquito blood-feeding histories and vectorial capacities. The technique is cost-effective, fast, simple, and requires no reagents other than desiccants. However, scaling it up will require field validation of the findings and boosting relevant technical capacity in affected countries.
Keyphrases
  • machine learning
  • artificial intelligence
  • big data
  • plasmodium falciparum
  • deep learning
  • aedes aegypti
  • quantum dots