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A Study on Automatic Generation of Chinese Discharge Summary

机译:自动生成中文流量汇总的研究

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Discharge summary, which summarizes a patient's health information during hospitalization, is very important for transferring information between the hospitalist and primary care physician. Discharge summary writing is a necessary but time-consuming job for physicians. Automatically generating discharge summaries using information technology is helpful to physicians, but challenging as discharge summaries are typically long and contain amounts of information to outline patient's reason for admission, labtests, examinations, diagnostic findings, treatments, and medication care plan. In this study, we propose a framework based on deep learning methods for automatic discharge summary generation. In the framework, we split information of discharge summary into two parts: 1) history information such as reason for admission, admission diagnosis; 2) outcome information such as discharge diagnosis and medication care plan, and deploy different neural networks to generate them separately. Hierarchical sequence labeling methods are proposed to select key sentences from existing documents, e.g., admission notes, progress notes, examination reports as the history information, and multi-task learning methods to predict the outcomes, e.g., diagnosis and medication care plan. Experiments on a Chinese corpus show that our approach has the ability to generate effective discharge summaries.
机译:出院摘要汇总了住院期间的患者健康信息,对于在住院医生和初级保健医生之间传输信息非常重要。出院总结写对医生来说是一项必要但费时的工作。使用信息技术自动生成出院摘要对医生很有帮助,但由于出院摘要通常很长且包含大量信息,以概述患者入院原因,实验室检查,检查,诊断结果,治疗方法和药物治疗计划,因此具有挑战性。在这项研究中,我们提出了一个基于深度学习方法的框架,用于自动放电摘要生成。在该框架中,我们将出院摘要信息分为两部分:1)历史信息,例如入院原因,入院诊断; 2)出院信息,例如出院诊断和药物治疗计划,并部署不同的神经网络以分别生成它们。提出了分级序列标记方法,以从现有文档中选择关键句子,例如入院笔记,进度笔记,检查报告作为历史信息,以及多任务学习方法来预测结果,例如诊断和药物治疗计划。在中文语料库上进行的实验表明,我们的方法能够生成有效的放电摘要。

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