Clinical Assistant Diagnosis for Electronic Medical Record Based on Convolutional Neural Network

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作者
Zhongliang Yang
Yongfeng Huang
Yiran Jiang
Yuxi Sun
Yu-Jin Zhang
Pengcheng Luo
机构
[1] Tsinghua University,Department of Electronic Engineering
[2] Tsinghua National Laboratory of Information Science and Technology,International School
[3] Beijing University of Posts and Telecommunications,Huangshi Central Hospital of Edong Healthcare Group
[4] Hubei Polytechnic University,undefined
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Automatically extracting useful information from electronic medical records along with conducting disease diagnoses is a promising task for both clinical decision support(CDS) and neural language processing(NLP). Most of the existing systems are based on artificially constructed knowledge bases, and then auxiliary diagnosis is done by rule matching. In this study, we present a clinical intelligent decision approach based on Convolutional Neural Networks(CNN), which can automatically extract high-level semantic information of electronic medical records and then perform automatic diagnosis without artificial construction of rules or knowledge bases. We use collected 18,590 copies of the real-world clinical electronic medical records to train and test the proposed model. Experimental results show that the proposed model can achieve 98.67% accuracy and 96.02% recall, which strongly supports that using convolutional neural network to automatically learn high-level semantic features of electronic medical records and then conduct assist diagnosis is feasible and effective.
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