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Predicting HIV Status Using Machine Learning Techniques and Bio-Behavioural Data from the Zimbabwe Population-Based HIV Impact Assessment (ZIMPHIA15-16)

Innocent Chingombe, Godfrey Musuka, Elliot Mbunge, Garikayi Chemhaka, Diego F. Cuadros, Grant Murewanhema, Simbarashe Chaputsira, John Batani, Benhildah Muchemwa, Munyaradzi Mapingure, Tafadzwa Dzinamarira

2022Lecture notes in networks and systems16 citationsDOI

Topics & Concepts

Random forestPsychological interventionLogistic regressionSupport vector machinePopulationMachine learningRecallEnvironmental healthPrecision and recallArtificial intelligenceMedicineComputer sciencePsychologyNursingCognitive psychologyHIV/AIDS Research and InterventionsAdolescent Sexual and Reproductive HealthHIV, Drug Use, Sexual Risk
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