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Medication Regimen Extraction from Medical Conversations

机译:药物治疗方法提取医学谈话

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摘要

Extracting relevant information from medical conversations and providing it to doctors and patients might help in addressing doctor burnout and patient forgetfulness. In this paper, we focus on extracting the Medication Regimen (dosage and frequency for medications) discussed in a medical conversation. We frame the problem as a Question Answering (QA) task and perform comparative analysis over: a QA approach, a new combined QA and Information Extraction approach, and other baselines. We use a small corpus of 6,692 annotated doctor-patient conversations for the task. Clinical conversation corpora are costly to create, difficult to handle (because of data privacy concerns), and thus scarce. We address this data scarcity challenge through data augmentation methods, using publicly available embeddings and pre-train part of the network on a related task (summarization) to improve the model's performance. Compared to the baseline, our best-performing models improve the dosage and frequency extractions' ROUGE-1 F1 scores from 54.28 and 37.13 to 89.57 and 45.94, respectively. Using our best-performing model, we present the first fully automated system that can extract Medication Regimen tags from spontaneous doctor-patient conversations with about ~71% accuracy.
机译:从医疗对话中提取相关信息并向医生和患者提供可能有助于解决医生倦怠和患者健忘。在本文中,我们专注于提取医疗谈话中讨论的药物方案(用于药物的剂量和频率)。我们将问题框架作为一个问题应答(QA)任务,并进行比较分析:QA方法,新的QA和信息提取方法以及其他基线。我们使用6,692个注释的医生对话的小语料库进行任务。临床谈话Corpora成本昂贵,难以处理(因为数据隐私问题),因此稀缺。我们通过数据增强方法解决此数据稀缺性挑战,使用公开可用的嵌入和预先列车部分网络(摘要)以提高模型的性能。与基线相比,我们的最佳模型将分别从54.28和37.13到89.57和45.94改善剂量和频率提取物的胭脂速度。使用我们的最佳模型,我们介绍了第一个完全自动化的系统,可以从自发的医生患者对话中提取药物方案标签,精度约为71%。

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