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Extracting Structured Data from Physician-Patient Conversations by Predicting Noteworthy Utterances

机译:通过预测值得注意的话语来提取医师患者对话的结构化数据

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Despite concerted efforts to mine various modalities of medical data, the conversations between physicians and patients at the time of care remain an untapped resource of insights. In this paper, we explore the possibility of leveraging this data to extract structured information that might assist physicians with post-visit documentation in electronic health records, potentially lightening the clerical burden. In this exploratory study, we describe a new dataset consisting of conversation transcripts, post-visit summaries, corresponding supporting evidence (in the transcript), and structured labels. We focus on the tasks of recognizing relevant diagnoses and abnormalities in the review of organ systems (RoS). One methodological challenge is that the conversations are long (around 1500 words) making it difficult for modern deep-learning models to use them as input. To address this challenge, we extract noteworthy utterances-parts of the conversation likely to be cited as evidence supporting some summary sentence. We find that by first filtering for (predicted) noteworthy utterances, we can significantly boost predictive performance for recognizing both diagnoses and RoS abnormalities.
机译:尽管采取了协调一致的医疗数据方式,但医生与护理时的患者之间的对话仍然是一个未开发的洞察力资源。在本文中,我们探讨了利用此数据来提取可能在电子健康记录中获得医生的结构化信息的可能性,可能会削弱职员负担。在这项探索性研究中,我们描述了一个由对话成绩单,访问后摘要,相应的支持证据(在成绩单中)以及结构化标签组成的新数据集。我们专注于在审查器官系统(ROS)中识别相关诊断和异常的任务。一种方法论挑战是,谈话很长(大约1500字),使得现代深度学习模型难以将它们用作输入。为了解决这一挑战,我们提取值得注意的话语 - 可能被引用为支持某些摘要句子的证据。我们发现,通过第一次过滤(预测)值得注意的话语,我们可以显着提高预测性能,以识别诊断和ROS异常。

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