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Extracting Symptoms and their Status from Clinical Conversations

机译:从临床对话中提取症状及其状态

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This paper describes novel models tailored for a new application, that of extracting the symptoms mentioned in clinical conversations along with their status. Lack of any publicly available corpus in this privacy-sensitive domain led us to develop our own corpus, consisting of about 3K conversations annotated by professional medical scribes. We propose two novel deep learning approaches to infer the symptom names and their status: (1) a new hierarchical span-attribute tagging (SA-T) model, trained using curriculum learning, and (2) a variant of sequence-to-sequence model which decodes the symptoms and their status from a few speaker turns within a sliding window over the conversation. This task stems from a realistic application of assisting medical providers in capturing symptoms mentioned by patients from their clinical conversations. To reflect this application, we define multiple metrics. From inter-rater agreement, we find that the task is inherently difficult. We conduct comprehensive evaluations on several contrasting conditions and observe that the performance of the models range from an F-score of 0.5 to 0.8 depending on the condition. Our analysis not only reveals the inherent challenges of the task, but also provides useful directions to improve the models.
机译:本文介绍了针对新应用量身定制的新型型号,提取临床对话中提到的症状以及其状态。在本隐私敏感域中缺乏任何公开的语料库导致我们开发自己的语料库,包括由专业医学划线的大约3K谈话。我们提出了两种新的深度学习方法来推断出症状名称及其状态:(1)新的分层跨度 - 属性标记(SA-T)模型,使用课程学习培训,(2)序列到序列的变体解码症状的模型及其在几个扬声器中的状态在对话的滑动窗口中转动。这项任务源于辅助医疗提供者在临床对话中捕捉患者提到的症状的现实应用。要反映此应用程序,我们定义了多个度量标准。从评估者协议中,我们发现这项任务本质上很难。我们对若干对比条件进行全面的评估,并观察到模型的性能范围根据条件的F分度为0.5至0.8。我们的分析不仅揭示了任务的固有挑战,还提供了改进模型的有用方向。

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