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Demo: Healthcare Agent Orchestrator (HAO) for Patient Summarization in Molecular Tumor Boards
Created by
Haebom
Author
Matthias Blondeel, Noel Codella, Sam Preston, Hao Qiu, Leonardo Schettini, Frank Tuan, Wen-wai Yim, Smitha Saligrama, Mert Oz, Shrey Jain, Matthew P. Lungren, Thomas Osborne
Outline
This paper presents Healthcare Agent Orchestrator (HAO), a medical AI agent based on a large-scale language model (LLM), to improve the efficiency and accuracy of patient summary generation used in multidisciplinary oncology conferences (MTBs). HAO orchestrates multi-agent clinical workflows to generate accurate and comprehensive patient summaries. It aims to address the labor-intensiveness, subjectivity, and omission of critical information inherent in traditional manual methods. Furthermore, we propose TBFact, a novel evaluation framework for assessing the completeness and conciseness of generated summaries. This "model-judge" approach enables evaluation without sharing sensitive clinical data. Experimental results show that the Patient History agent captured 94% of critical information, and TBFact achieved a recall of 0.84.
Takeaways, Limitations
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Takeaways:
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LLM-based HAO can improve the efficiency and accuracy of the MTB patient summary generation process.
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TBFact provides a novel evaluation framework for assessing the completeness and conciseness of patient summaries without sharing sensitive data.
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HAO and TBFact provide a solid foundation for reliable and scalable support for MTB.
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Limitations:
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TBFact's evaluation criteria may not be perfect, and accurate evaluation may be difficult due to various styles, orderings, use of synonyms, and differences in phraseology.
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Currently, the evaluation is based on a dataset from a specific hospital, so further research is needed to determine generalization performance to other datasets.
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Additional validation and safety evaluation are needed for practical clinical application of HAO.