评估用于医学文本摘要的 LLM 的临床安全性和幻觉率的框架

Elham Asgari, Nina Montana-Brown, Magda Dubois, Saleh Khalil, Jasmine Balloch, Dominic Pimenta
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摘要

将大型语言模型(LLM)集成到医疗保健环境中,为提高临床工作流程效率和加强患者护理带来了巨大的希望,并有可能实现会诊过程中文本摘要等任务的自动化。因此,在医疗保健领域,LLM 输出与基本真实信息之间的保真度至关重要,因为医疗摘要生成中的错误会导致患者与临床医生之间的沟通不畅,从而导致错误的诊断和治疗决定,并危及患者安全。众所周知,LLM 会产生各种错误。目前,还没有成熟的临床框架来评估 LLM 生成的医疗文本的安全性和准确性。我们开发了一种新方法来:a) 在临床文档背景下对 LLM 错误进行分类;b) 建立实时使用阶段的临床安全指标;c) 提出一个名为 CREOLA 的框架来评估错误的安全风险。我们介绍了针对临床笔记生成任务的 18 种不同 LLM 实验配置的临床错误指标,其中包括 12999 个临床医生注释的句子。我们通过两个实验说明了使用我们的平台 CREOLA 对 LLM 架构进行迭代的实用性。总体而言,我们发现表现最好的实验结果优于之前报道的笔记生成文献中的模型错误率,此外还优于人类注释者。我们建议的框架可用于评估临床环境中 LLM 输出的准确性和安全性。
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A Framework to Assess Clinical Safety and Hallucination Rates of LLMs for Medical Text Summarisation
The integration of large language models (LLMs) into healthcare settings holds great promise for improving clinical workflow efficiency and enhancing patient care, with the potential to automate tasks such as text summarisation during consultations. The fidelity between LLM outputs and ground truth information is therefore paramount in healthcare, as errors in medical summary generation can lead to miscommunication between patients and clinicians, leading to incorrect diagnosis and treatment decisions and compromising patient safety. LLMs are well-known to produce a variety of errors. Currently, there is no established clinical framework for assessing the safety and accuracy of LLM-generated medical text. We have developed a new approach to: a) categorise LLM errors within the clinical documentation context, b) establish clinical safety metrics for the live usage phase, and c) suggest a framework named CREOLA for assessing the safety risk for errors. We present clinical error metrics over 18 different LLM experimental configurations for the clinical note generation task, consisting of 12,999 clinician-annotated sentences. We illustrate the utility of using our platform CREOLA for iteration over LLM architectures with two experiments. Overall, we find our best-performing experiments outperform previously reported model error rates in the note generation literature, and additionally outperform human annotators. Our suggested framework can be used to assess the accuracy and safety of LLM output in the clinical context.
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