Predicting Treatment Interruption Among People Living With HIV in Nigeria: Machine Learning Approach.
Matthew-David OgbechieChrista Fischer WalkerMu-Tien LeeAmina Abba GanaAbimbola OduolaAugustine IdemudiaMatthew EdorEmily Lark HarrisJessica StephensXiaoming GaoPai-Lien ChenNavindra Etwaroo PersaudPublished in: JMIR AI (2023)
High-performing ML models to identify patients with HIV at risk of IIT can be developed using routinely collected service delivery data and integrated into routine health management information systems. Machine learning can improve the targeting of interventions through differentiated models of care before patients interrupt treatment, resulting in increased cost-effectiveness and improved patient outcomes.
Keyphrases
- machine learning
- healthcare
- end stage renal disease
- big data
- mental health
- artificial intelligence
- public health
- newly diagnosed
- chronic kidney disease
- physical activity
- hepatitis c virus
- health information
- palliative care
- prognostic factors
- hiv positive
- hiv aids
- quality improvement
- drug delivery
- combination therapy
- risk assessment
- south africa
- human health