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Autori principali: Ellis-Caleo, Tim, Keyes, Timothy, Ambers, Nerissa, Bekheet, Faraah, Yim, Wen-wai, Kotecha, Nikesh, Shah, Nigam H., Neal, Joel
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.12161
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author Ellis-Caleo, Tim
Keyes, Timothy
Ambers, Nerissa
Bekheet, Faraah
Yim, Wen-wai
Kotecha, Nikesh
Shah, Nigam H.
Neal, Joel
author_facet Ellis-Caleo, Tim
Keyes, Timothy
Ambers, Nerissa
Bekheet, Faraah
Yim, Wen-wai
Kotecha, Nikesh
Shah, Nigam H.
Neal, Joel
contents Tumor boards are multidisciplinary conferences dedicated to producing actionable patient care recommendations with live review of primary radiology and pathology data. Succinct patient case summaries are needed to drive efficient and accurate case discussions. We developed a manual AI-based workflow to generate patient summaries to display live at the Stanford Thoracic Tumor board. To improve on this manually intensive process, we developed several automated AI chart summarization methods and evaluated them against physician gold standard summaries and fact-based scoring rubrics. We report these comparative evaluations as well as our deployment of the final state automated AI chart summarization tool along with post-deployment monitoring. We also validate the use of an LLM as a judge evaluation strategy for fact-based scoring. This work is an example of integrating AI-based workflows into routine clinical practice.
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id arxiv_https___arxiv_org_abs_2604_12161
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Development, Evaluation, and Deployment of a Multi-Agent System for Thoracic Tumor Board
Ellis-Caleo, Tim
Keyes, Timothy
Ambers, Nerissa
Bekheet, Faraah
Yim, Wen-wai
Kotecha, Nikesh
Shah, Nigam H.
Neal, Joel
Artificial Intelligence
Tumor boards are multidisciplinary conferences dedicated to producing actionable patient care recommendations with live review of primary radiology and pathology data. Succinct patient case summaries are needed to drive efficient and accurate case discussions. We developed a manual AI-based workflow to generate patient summaries to display live at the Stanford Thoracic Tumor board. To improve on this manually intensive process, we developed several automated AI chart summarization methods and evaluated them against physician gold standard summaries and fact-based scoring rubrics. We report these comparative evaluations as well as our deployment of the final state automated AI chart summarization tool along with post-deployment monitoring. We also validate the use of an LLM as a judge evaluation strategy for fact-based scoring. This work is an example of integrating AI-based workflows into routine clinical practice.
title Development, Evaluation, and Deployment of a Multi-Agent System for Thoracic Tumor Board
topic Artificial Intelligence
url https://arxiv.org/abs/2604.12161