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Predicting Discharge Disposition Using Patient Complaint Notes in Electronic Medical Records

机译:使用电子病历中的患者投诉记录预测出院情况

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Overcrowding in emergency rooms is a major challenge faced by hospitals across the United States. Overcrowding can result in longer wait times, which, in turn, has been shown to adversely affect patient satisfaction, clinical outcomes, and procedure reimbursements. This paper presents research that aims to automatically predict discharge disposition of patients who received medical treatment in an emergency department. We make use of a corpus that consists of notes containing patient complaints, diagnosis information, and disposition, entered by health care providers. We use this corpus to develop a model that uses the complaint and diagnosis information to predict patient disposition. We show that the proposed model substantially outperforms the baseline of predicting the most common disposition type. The long-term goal of this research is to build a model that can be implemented as a real-time service in an application to predict disposition as patients arrive.
机译:急诊室的人满为患是美国各地医院所面临的主要挑战。人满为患会导致更长的等待时间,这反过来又显示出会对患者满意度,临床结果和手术费用产生不利影响。本文提出了旨在自动预测在急诊室接受治疗的患者出院情况的研究。我们使用的语料库由医疗保健提供者输入,其中包含笔记,其中包含患者的投诉,诊断信息和处置。我们使用该语料库来开发一个使用投诉和诊断信息来预测患者处置的模型。我们表明,所提出的模型大大优于预测最常见的处置类型的基线。这项研究的长期目标是建立一个可以作为实时服务在应用程序中实现的模型,以预测患者到达时的处置情况。

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