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Weakly Supervised Medication Regimen Extraction from Medical Conversations

机译:弱监督医疗方案从医疗谈话中提取

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Automated Medication Regimen (MR) extraction from medical conversations can not only improve recall and help patients follow through with their care plan, but also reduce the documentation burden for doctors. In this paper, we focus on extracting spans for frequency, route and change, corresponding to medications discussed in the conversation. We first describe a unique dataset of annotated doctor-patient conversations and then present a weakly supervised model architecture that can perform span extraction using noisy classification data. The model utilizes an attention bottleneck inside a classification model to perform the extraction. We experiment with several variants of attention scoring and projection functions and propose a novel transformer-based attention scoring function (TAScore). The proposed combination of TAScore and Fusedmax projection achieves a 10 point increase in Longest Common Substring F1 compared to the baseline of additive scoring plus softmax projection.
机译:自动化药物方案(MR)从医疗谈话中提取不仅可以改善召回和帮助患者通过他们的护理计划,还可以减少医生的文件负担。在本文中,我们专注于提取频率,路线和变化的跨度,对应于谈话中讨论的药物。我们首先描述了一个唯一的注释的医生会话数据集,然后呈现弱监督的模型架构,可以使用噪声分类数据执行跨度提取。该模型利用分类模型内的注意瓶颈来执行提取。我们试验几种关注评分和投影功能的变体,并提出了一种基于更新的基于变压器的注意力计量功能(Tascore)。与添加剂分量的基线相比,TaScore和FusedMax投影的拟议组合实现了最长的普通亚钢板F1的10点增加,而Softmax投影的基线相比。

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