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Exploring the Future of AI in Clinical Collaboration: A Study on Tumor Board Case Preparation
1
Zitationen
30
Autoren
2026
Jahr
Abstract
Multidisciplinary tumor boards (MTBs) bring specialists together to identify therapies for complex cancer cases, but preparing for them is time-intensive. Clinicians must extract key details from extensive records and evaluate treatment options. While large language models (LLMs) show promise in medicine for basic tasks like summarizing notes, little is known about their role in high-stakes tasks like MTB preparation. We conducted a mixed-methods study with 16 oncologists using two AI systems to prepare patient cases for MTB: an off-the-shelf assistant (Copilot) and a task-specific multi-agent system (Healthcare Agent Orchestrator, HAO). We analyzed oncologist prompts, AI responses, and oncologists’ perception of AI. Participants showed greater willingness to adopt HAO but were often overconfident in AI summaries and skeptical of AI-recommended therapies. Trust calibration strategies, such as source links and agent-trajectories, failed to align trust with system capabilities. We conclude with how AI systems should be built to support clinicians in high-stakes tasks.
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Autoren
- Jiachen Li
- Amanda K. Hall
- Ruican Zhong
- Selin Everett
- Alyssa Unell
- Hanwen Xu
- Matthias Blondeel
- JM Carlson
- Katie Claveau
- Thulasee Jose
- Tristan Naumann
- David C. Rhew
- Naiteek Sangani
- Frank Tuan
- James N. Weinstein
- Varun Mishra
- Elizabeth D. Mynatt
- Scott Saponas
- Hao Qiu
- Leonardo Schettini
- Joseph Samuel Preston
- Aiden Gu
- Naoto Usuyama
- Zelalem Gero
- Cliff Wong
- Noel Christopher Codella
- Hoifung Poon
- Shrey Jain
- Matthew Lungren
- Eric Horvitz