Clinical decision-making is inherently complex, often influenced by cognitive biases, incomplete information, and case ambiguity. Large Language Models (LLMs) have shown promise as tools for supporting clinical decision-making, yet their typical one-shot or limited-interaction usage may overlook the complexities of real-world medical practice. In this work, we propose a hybrid human-AI framework, MedSyn, where physicians and LLMs engage in multi-step, interactive dialogues to refine diagnoses and treatment decisions. Unlike static decision-support tools, MedSyn enables dynamic exchanges, allowing physicians to challenge LLM suggestions while the LLM highlights alternative perspectives. Through simulated physician-LLM interactions, we assess the potential of open-source LLMs as physician assistants. Results show open-source LLMs are promising as physician assistants in the real world. Future work will involve real physician interactions to further validate MedSyn’s usefulness in diagnostic accuracy and patient outcomes.

MedSyn: Enhancing Diagnostics with Human-AI Collaboration / Sayin, Burcu; Schlicht, Ipek Baris; Hong, Ngoc Vo; Allievi, Sara; Staiano, Jacopo; Minervini, Pasquale; Passerini, Andrea. - 4074:10-6(2025), pp. 494-505. (Intervento presentato al convegno Trustworthy and Collaborative Artificial Intelligence Workshop 2025 (TCAI 2025) tenutosi a Pisa, Italy nel June 2025).

MedSyn: Enhancing Diagnostics with Human-AI Collaboration

Sayin, Burcu
Primo
;
Staiano, Jacopo;Passerini, Andrea
Ultimo
2025-01-01

Abstract

Clinical decision-making is inherently complex, often influenced by cognitive biases, incomplete information, and case ambiguity. Large Language Models (LLMs) have shown promise as tools for supporting clinical decision-making, yet their typical one-shot or limited-interaction usage may overlook the complexities of real-world medical practice. In this work, we propose a hybrid human-AI framework, MedSyn, where physicians and LLMs engage in multi-step, interactive dialogues to refine diagnoses and treatment decisions. Unlike static decision-support tools, MedSyn enables dynamic exchanges, allowing physicians to challenge LLM suggestions while the LLM highlights alternative perspectives. Through simulated physician-LLM interactions, we assess the potential of open-source LLMs as physician assistants. Results show open-source LLMs are promising as physician assistants in the real world. Future work will involve real physician interactions to further validate MedSyn’s usefulness in diagnostic accuracy and patient outcomes.
2025
Proceedings of the 4th International Conference Series on Hybrid Human-Artificial Intelligence (HHAI 2025), Trustworthy and Collaborative Artificial Intelligence Workshop 2025 (TCAI 2025)
Pisa, Italy
CEUR Workshop Proceedings
Sayin, Burcu; Schlicht, Ipek Baris; Hong, Ngoc Vo; Allievi, Sara; Staiano, Jacopo; Minervini, Pasquale; Passerini, Andrea
MedSyn: Enhancing Diagnostics with Human-AI Collaboration / Sayin, Burcu; Schlicht, Ipek Baris; Hong, Ngoc Vo; Allievi, Sara; Staiano, Jacopo; Minervini, Pasquale; Passerini, Andrea. - 4074:10-6(2025), pp. 494-505. (Intervento presentato al convegno Trustworthy and Collaborative Artificial Intelligence Workshop 2025 (TCAI 2025) tenutosi a Pisa, Italy nel June 2025).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/453733
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