Login / Signup

Using deep learning to identify recent positive selection in malaria parasite sequence data.

Wouter DeelderErnest Diez BenaventeJody PhelanEmilia MankoSusana CampinoLuigi PallaTaane Gregory Clark
Published in: Malaria journal (2021)
The deep learning approach can detect positive selection signatures in malaria parasite WGS data. Further, as the approach is generalizable, it may be trained to detect other types of selection. With the ability to rapidly generate WGS data at low cost, machine learning approaches (e.g. DeepSweep) have the potential to assist parasite genome-based surveillance and inform malaria control decision-making.
Keyphrases