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Automatic ICD Code Assignment based on ICD’s Hierarchy Structure for Chinese Electronic Medical Records

机译:根据ICD的层次结构为中国电子病历自动分配ICD代码

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摘要

Medical records are text documents recording diagnoses, symptoms, examinations, etc. They are accompanied by ICD codes (International Classification of Diseases). ICD is the bedrock for health statistics, which maps human condition, injury, disease etc. to codes. It has enormous financial importance from public health investment to health insurance billing. However, assigning codes to medical records normally needs a lot of human labour and is error-prone due to its complexity. We present a 3-layer attentional convolutional network based on the hierarchy structure of ICD code that predicts ICD codes from medical records automatically. The method shows high performance, with Hit@1 of 0.6969, and Hit@5 of 0.8903, which is better than state-of-the-art method.
机译:医疗记录是记录诊断,症状,检查等内容的文本文件,并附有ICD代码(国际疾病分类)。 ICD是健康统计的基础,它将人类状况,伤害,疾病等映射到代码。从公共卫生投资到健康保险计费,它具有巨大的财务重要性。但是,将代码分配给病历通常需要大量的人工,并且由于其复杂性而容易出错。我们提出了一个基于ICD代码层次结构的3层注意力卷积网络,该网络可自动从病历中预测ICD代码。该方法具有很高的性能,Hit @ 1为0.6969,Hit @ 5为0.8903,优于最新方法。

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