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.

Abstract

Although artificial intelligence (AI) agents are increasingly proposed to support potentially longitudinal health tasks, such as symptom management, behavior change, and patient support, most current implementations fall short of facilitating user intent and fostering accountability. This contrasts with prior work on supporting longitudinal needs, where follow-up, coherent reasoning, and sustained alignment with individuals' goals are critical for both effectiveness and safety. In this paper, we draw on established clinical and personal health informatics frameworks to define what it would mean to orchestrate longitudinal health interactions with AI agents. We propose a multi-layer framework and corresponding agent architecture that operationalizes adaptation, coherence, continuity, and agency across repeated interactions. Through representative use cases, we demonstrate how longitudinal agents can maintain meaningful engagement, adapt to evolving goals, and support safe, personalized decision-making over time. Our findings underscore both the promise and the complexity of designing systems capable of supporting health trajectories beyond isolated interactions, and we offer guidance for future research and development in multi-session, user-centered health AI.