Preprint
An AI agent for treatment reasoning over a biomedical tool universe
- Abstract:
- Treatment reasoning underpins every therapeutic decision, integrating disease context, comorbidities, medications, contraindications, and evolving biomedical knowledge to select an appropriate therapy. It is inherently iterative: candidates are weighed against many constraints, revised as evidence emerges, and grounded in verifiable sources. Here we introduce ATHENA-R1, an AI agent for treatment reasoning across all FDA approved drugs since 1939, trained by reinforcement learning over a universe of 212 biomedical tools. At each step it identifies missing information, selects and runs relevant tools, and incorporates the evidence. To train it without human-annotated traces, we build a two-level self-learning framework: multi-agent systems construct the tools, tasks, and reasoning trajectories for supervised fine-tuning, then reinforcement learning with scientific feedback rewards reasoning quality (evidence gathering, grounded tool use, logical non-redundancy). Across five benchmarks of 3,168 drug reasoning tasks and 456 patient treatment cases, ATHENA-R1 outperforms language models and tool-use systems, reaching 94.7% accuracy on open-ended drug reasoning and 82.9% on treatment reasoning, 17.8 and 10.7 points above GPT-5. In blinded evaluations by experts from 28 rare disease organizations, it is preferred over reference models on all criteria, and physicians rated it favorably on complex hospitalized cardiovascular and infectious-disease cases. Adverse-event hypotheses it generated, tested in electronic health records from 5.4 million patients, reached adjusted odds ratios of 1.48-1.84, with no elevation among negative controls. Because it requires knowing what evidence to seek before concluding, treatment reasoning has long been hard for AI; we show it can be reframed as a learnable process of iterative evidence gathering that reinforcement learning can train AI to perform.
- Publication status:
- Published
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(Preview, Pre-print, pdf, 10.0MB, Terms of use)
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- Preprint server copy:
- 10.48550/arXiv.2606.28692
Authors
- Preprint server:
- arXiv
- Publication date:
- 2026-06-27
- DOI:
- Server owner:
- Cornell University
- Language:
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English
- Pubs id:
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2442396
- Local pid:
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pubs:2442396
- Source identifiers:
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W7166647476
- Deposit date:
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2026-07-07
- ARK identifier:
Terms of use
- Copyright holder:
- Gao et al.
- Copyright date:
- 2026
- Rights statement:
- Copyright © 2026 The Author(s). This is an open access article published under CC BY 4.0.
- Licence:
- CC Attribution (CC BY)
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