A longitudinal health agent framework
arXiv cs.AI / 4/15/2026
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Key Points
- The paper addresses a gap in current AI health agents by arguing they often do not properly support user intent or accountability in longitudinal (multi-session) care tasks.
- It proposes a multi-layer framework and agent architecture grounded in clinical and personal health informatics concepts to operationalize adaptation, coherence, continuity, and user agency across repeated interactions.
- The authors use representative use cases to show how longitudinal agents could maintain engagement, adapt to evolving patient goals, and support safer, more personalized decision-making over time.
- The work highlights the design complexity of moving beyond single-session interactions and provides guidance for future research and development of user-centered multi-session health AI.
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