Two Directions for Clinical Data Generation with Large Language Models: Data-to-Label and Label-to-Data.

Rumeng Li, Xun Wang, Hong Yu
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Abstract

Large language models (LLMs) can generate natural language texts for various domains and tasks, but their potential for clinical text mining, a domain with scarce, sensitive, and imbalanced medical data, is under-explored. We investigate whether LLMs can augment clinical data for detecting Alzheimer's Disease (AD)-related signs and symptoms from electronic health records (EHRs), a challenging task that requires high expertise. We create a novel pragmatic taxonomy for AD sign and symptom progression based on expert knowledge and generated three datasets: (1) a gold dataset annotated by human experts on longitudinal EHRs of AD patients; (2) a silver dataset created by the data-to-label method, which labels sentences from a public EHR collection with AD-related signs and symptoms; and (3) a bronze dataset created by the label-to-data method which generates sentences with AD-related signs and symptoms based on the label definition. We train a system to detect AD-related signs and symptoms from EHRs. We find that the silver and bronze datasets improves the system performance, outperforming the system using only the gold dataset. This shows that LLMs can generate synthetic clinical data for a complex task by incorporating expert knowledge, and our label-to-data method can produce datasets that are free of sensitive information, while maintaining acceptable quality.

使用大型语言模型生成临床数据的两个方向:数据到标签(Data-to-Label)和标签到数据(Label-to-Data)。
大语言模型(LLMs)可以为各种领域和任务生成自然语言文本,但它们在临床文本挖掘领域的潜力还未得到充分挖掘,而临床文本挖掘是一个医疗数据稀缺、敏感且不平衡的领域。我们研究了 LLM 能否增强临床数据,从电子健康记录(EHR)中检测与阿尔茨海默病(AD)相关的体征和症状,这是一项需要高度专业知识的挑战性任务。我们基于专家知识为阿兹海默病的体征和症状进展创建了一个新的实用分类法,并生成了三个数据集:(1) 由人类专家对阿兹海默病患者的纵向电子病历进行注释的金数据集;(2) 通过数据到标签方法创建的银数据集,该方法将公共电子病历收集的句子标记为阿兹海默病相关体征和症状;(3) 通过标签到数据方法创建的铜数据集,该方法根据标签定义生成阿兹海默病相关体征和症状的句子。我们对一个系统进行了训练,以便从电子病历中检测与注意力缺失症相关的体征和症状。我们发现,银色和青铜色数据集提高了系统性能,优于仅使用金色数据集的系统。这表明 LLM 可以通过结合专家知识为复杂任务生成合成临床数据,而我们的标签到数据方法可以生成不含敏感信息的数据集,同时保持可接受的质量。
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