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Optimizing HIV Patient Engagement with Reinforcement Learning in Resource-Limited Settings

Authors :
Periáñez, África
Schmitz, Kathrin
Makhupula, Lazola
Hassan, Moiz
Moleko, Moeti
del Río, Ana Fernández
Nazarov, Ivan
Rastogi, Aditya
Tang, Dexian
Publication Year :
2024

Abstract

By providing evidence-based clinical decision support, digital tools and electronic health records can revolutionize patient management, especially in resource-poor settings where fewer health workers are available and often need more training. When these tools are integrated with AI, they can offer personalized support and adaptive interventions, effectively connecting community health workers (CHWs) and healthcare facilities. The CHARM (Community Health Access & Resource Management) app is an AI-native mobile app for CHWs. Developed through a joint partnership of Causal Foundry (CF) and mothers2mothers (m2m), CHARM empowers CHWs, mainly local women, by streamlining case management, enhancing learning, and improving communication. This paper details CHARM's development, integration, and upcoming reinforcement learning-based adaptive interventions, all aimed at enhancing health worker engagement, efficiency, and patient outcomes, thereby enhancing CHWs' capabilities and community health.<br />Comment: Presented at the 7th epiDAMIK ACM SIGKDD International Workshop on Epidemiology meets Data Mining and Knowledge Discovery, August 26, 2024, Barcelona, Spain

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.07629
Document Type :
Working Paper