用于高效医学信息提取的大型语言模型。

Navya Bhagat, Olivia Mackey, Adam Wilcox
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引用次数: 0

摘要

在医疗保健领域,从非结构化的临床叙述报告中提取有价值的见解是一项具有挑战性但又至关重要的任务,因为它能让医护人员更有效地治疗病人,并提高整体护理水平。我们采用了大语言模型(LLM)ChatGPT,并将其性能与人工审阅者进行了比较。审查主要针对四种关键病症:心脏病家族史、抑郁症、重度吸烟和癌症。对各种病史和体格检查(H&P)记录样本的评估证明了 ChatGPT 的卓越能力。值得注意的是,它对抑郁症和重度吸烟者的灵敏度以及对癌症的特异性都堪称典范。我们还发现了需要改进的地方,特别是在捕捉与心脏病和癌症家族史相关的细微语义信息方面。通过进一步研究,ChatGPT 在医疗信息提取方面具有巨大的发展潜力。
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Large Language Models for Efficient Medical Information Extraction.

Extracting valuable insights from unstructured clinical narrative reports is a challenging yet crucial task in the healthcare domain as it allows healthcare workers to treat patients more efficiently and improves the overall standard of care. We employ ChatGPT, a Large language model (LLM), and compare its performance to manual reviewers. The review focuses on four key conditions: family history of heart disease, depression, heavy smoking, and cancer. The evaluation of a diverse sample of History and Physical (H&P) Notes, demonstrates ChatGPT's remarkable capabilities. Notably, it exhibits exemplary results in sensitivity for depression and heavy smokers and specificity for cancer. We identify areas for improvement as well, particularly in capturing nuanced semantic information related to family history of heart disease and cancer. With further investigation, ChatGPT holds substantial potential for advancements in medical information extraction.

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