{"title":"使用 GPT 模型从临床笔记中提取社会决定因素和家族史的零点学习(Zero-shot Learning with Minimum Instruction)。","authors":"Neel Jitesh Bhate, Ansh Mittal, Zhe He, Xiao Luo","doi":"10.1109/BigData59044.2023.10386811","DOIUrl":null,"url":null,"abstract":"<p><p>Demographics, social determinants of health, and family history documented in the unstructured text within the electronic health records are increasingly being studied to understand how this information can be utilized with the structured data to improve healthcare outcomes. After the GPT models were released, many studies have applied GPT models to extract this information from the narrative clinical notes. Different from the existing work, our research focuses on investigating the zero-shot learning on extracting this information together by providing minimum information to the GPT model. We utilize de-identified real-world clinical notes annotated for demographics, various social determinants, and family history information. Given that the GPT model might provide text different from the text in the original data, we explore two sets of evaluation metrics, including the traditional NER evaluation metrics and semantic similarity evaluation metrics, to completely understand the performance. Our results show that the GPT-3.5 method achieved an average of 0.975 F1 on demographics extraction, 0.615 F1 on social determinants extraction, and 0.722 F1 on family history extraction. We believe these results can be further improved through model fine-tuning or few-shots learning. Through the case studies, we also identified the limitations of the GPT models, which need to be addressed in future research.</p>","PeriodicalId":74501,"journal":{"name":"Proceedings : ... IEEE International Conference on Big Data. 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After the GPT models were released, many studies have applied GPT models to extract this information from the narrative clinical notes. Different from the existing work, our research focuses on investigating the zero-shot learning on extracting this information together by providing minimum information to the GPT model. We utilize de-identified real-world clinical notes annotated for demographics, various social determinants, and family history information. Given that the GPT model might provide text different from the text in the original data, we explore two sets of evaluation metrics, including the traditional NER evaluation metrics and semantic similarity evaluation metrics, to completely understand the performance. Our results show that the GPT-3.5 method achieved an average of 0.975 F1 on demographics extraction, 0.615 F1 on social determinants extraction, and 0.722 F1 on family history extraction. 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引用次数: 0
摘要
电子健康记录中的非结构化文本中记录的人口统计学、健康的社会决定因素和家族史正越来越多地被研究,以了解如何将这些信息与结构化数据一起用于改善医疗效果。在 GPT 模型发布后,许多研究都应用 GPT 模型从叙述性临床笔记中提取这些信息。与现有工作不同的是,我们的研究侧重于研究通过向 GPT 模型提供最少信息来提取这些信息的零点学习。我们利用去标识化的真实世界临床笔记,注释人口统计学、各种社会决定因素和家族史信息。鉴于 GPT 模型提供的文本可能与原始数据中的文本不同,我们探索了两套评价指标,包括传统的 NER 评价指标和语义相似性评价指标,以全面了解其性能。我们的结果表明,GPT-3.5 方法在人口统计学提取方面的平均 F1 值为 0.975,在社会决定因素提取方面的平均 F1 值为 0.615,在家族史提取方面的平均 F1 值为 0.722。我们相信,通过模型微调或少量学习,这些结果还能进一步提高。通过案例研究,我们还发现了 GPT 模型的局限性,这需要在今后的研究中加以解决。
Zero-shot Learning with Minimum Instruction to Extract Social Determinants and Family History from Clinical Notes using GPT Model.
Demographics, social determinants of health, and family history documented in the unstructured text within the electronic health records are increasingly being studied to understand how this information can be utilized with the structured data to improve healthcare outcomes. After the GPT models were released, many studies have applied GPT models to extract this information from the narrative clinical notes. Different from the existing work, our research focuses on investigating the zero-shot learning on extracting this information together by providing minimum information to the GPT model. We utilize de-identified real-world clinical notes annotated for demographics, various social determinants, and family history information. Given that the GPT model might provide text different from the text in the original data, we explore two sets of evaluation metrics, including the traditional NER evaluation metrics and semantic similarity evaluation metrics, to completely understand the performance. Our results show that the GPT-3.5 method achieved an average of 0.975 F1 on demographics extraction, 0.615 F1 on social determinants extraction, and 0.722 F1 on family history extraction. We believe these results can be further improved through model fine-tuning or few-shots learning. Through the case studies, we also identified the limitations of the GPT models, which need to be addressed in future research.