在MEDIQA-Chat 2023:语境学习与GPT-4医学总结

Yash Mathur, Sanketh Rangreji, Raghav Kapoor, Medha Palavalli, Amanda Bertsch, Matthew R. Gormley
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引用次数: 4

摘要

由于医学对话的非结构化性质、在黄金摘要中使用医学术语以及需要识别跨多个症状集的关键信息,医学对话摘要具有挑战性。我们提出了一种新的MEDIQA 2023共享任务中的dialgue2note医学摘要任务系统。我们的分段总结方法(任务A)是一个两阶段的过程,选择语义相似的对话,并使用top-k相似的对话作为GPT-4的上下文示例。对于全音符总结(任务B),我们使用k=1的类似解决方案。我们在任务A中获得第3名(所有团队中第二名),在任务B中获得第4名(所有团队中第二名),在任务A中获得第15名(所有团队中第9名),在任务B中获得第8名。我们的结果强调了该任务中少射提示的有效性,尽管我们也发现了基于提示的方法的几个弱点。我们将GPT-4性能与几个微调基线进行比较。我们发现GPT-4的摘要更加抽象和简短。我们让代码公开可用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SummQA at MEDIQA-Chat 2023: In-Context Learning with GPT-4 for Medical Summarization
Medical dialogue summarization is challenging due to the unstructured nature of medical conversations, the use of medical terminologyin gold summaries, and the need to identify key information across multiple symptom sets. We present a novel system for the Dialogue2Note Medical Summarization tasks in the MEDIQA 2023 Shared Task. Our approach for sectionwise summarization (Task A) is a two-stage process of selecting semantically similar dialogues and using the top-k similar dialogues as in-context examples for GPT-4. For full-note summarization (Task B), we use a similar solution with k=1. We achieved 3rd place in Task A (2nd among all teams), 4th place in Task B Division Wise Summarization (2nd among all teams), 15th place in Task A Section Header Classification (9th among all teams), and 8th place among all teams in Task B. Our results highlight the effectiveness of few-shot prompting for this task, though we also identify several weaknesses of prompting-based approaches. We compare GPT-4 performance with several finetuned baselines. We find that GPT-4 summaries are more abstractive and shorter. We make our code publicly available.
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