Prediction of HIV status based on socio-behavioural characteristics in East and Southern Africa.
Erol OrelRachel EsraJanne EstillAmaury ThiabaudStéphane Marchand-MailletAziza MerzoukiOlivia KeiserPublished in: PloS one (2022)
We trained a gradient boosting trees algorithm to find 95% of PLHIV with a precision twice higher than with general population testing by using only a limited number of socio-behavioural characteristics. We also successfully identified people at high risk of infection who may be offered pre-exposure prophylaxis or voluntary medical male circumcision. These findings can inform the implementation of new high-yield HIV tests and help develop very precise strategies based on low-resource settings constraints.