A hybrid method of recurrent neural network and graph neural network for next-period prescription prediction

被引:0
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作者
Sicen Liu
Tao Li
Haoyang Ding
Buzhou Tang
Xiaolong Wang
Qingcai Chen
Jun Yan
Yi Zhou
机构
[1] Harbin Institute of Technology Shenzhen Graduate School,Department of Computer Science
[2] Yidu Cloud (Beijing) Technology Co.,Zhongshan School of Medicine
[3] Ltd,undefined
[4] PengCheng Laboratory,undefined
[5] Sun Yat-Sen University,undefined
关键词
Medical prediction; Recurrent neural network; Graph neural network; Next-period prescription prediction;
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学科分类号
摘要
Electronic health records (EHRs) have been widely used to help physicians to make decisions by predicting medical events such as diseases, prescriptions, outcomes, and so on. How to represent patient longitudinal medical data is the key to making these predictions. Recurrent neural network (RNN) is a popular model for patient longitudinal medical data representation from the view of patient status sequences, but it cannot represent complex interactions among different types of medical information, i.e., temporal medical event graphs, which can be represented by graph neural network (GNN). In this paper, we propose a hybrid method of RNN and GNN, called RGNN, for next-period prescription prediction from two views, where RNN is used to represent patient status sequences, and GNN is used to represent temporal medical event graphs. Experiments conducted on the public MIMIC-III ICU data show that the proposed method is effective for next-period prescription prediction, and RNN and GNN are mutually complementary.
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页码:2849 / 2856
页数:7
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