A-GSTCN: An Augmented Graph Structural–Temporal Convolution Network for Medication Recommendation Based on Electronic Health Records

Author:

Yue Weiqi1ORCID,Wang Maiqiu2ORCID,Zhang Lei12,Zhang Lijuan1ORCID,Huang Jie1,Wan Jian1,Xiong Naixue3ORCID,Vasilakos Athanasios V.4

Affiliation:

1. School of Electronic and Information Engineering, Zhejiang University of Science and Technology, Hangzhou 310023, China

2. Institute of Biochemistry, Zhejiang University of Science and Technology, Hangzhou 310023, China

3. Department of Computer Science and Mathematics, Sul Ross State University, Alpine, TX 79830, USA

4. The Center for AI Research (CAIR), University of Agder (UiA), 4879 Grimstad, Norway

Abstract

Medication recommendation based on electronic health records (EHRs) is a significant research direction in the biomedical field, which aims to provide a reasonable prescription for patients according to their historical and current health conditions. However, the existing recommended methods have many limitations in dealing with the structural and temporal characteristics of EHRs. These methods either only consider the current state while ignoring the historical situation, or fail to adequately assess the structural correlations among various medical events. These factors result in poor recommendation quality. To solve this problem, we propose an augmented graph structural–temporal convolutional network (A-GSTCN). Firstly, an augmented graph attention network is used to model the structural features among medical events of patients’ EHRs. Next, the dilated convolution combined with residual connection is applied in the proposed model, which can improve the temporal prediction capability and further reduce the complexity. Moreover, the cache memory module further enhances the model’s learning of the history of EHRs. Finally, the A-GSTCN model is compared with the baselines through experiments, and the efficiency of the A-GSTCN model is verified by Jaccard, F1 and PRAUC. Not only that, the proposed model also reduces the training parameters by an order of magnitude.

Funder

Key Research and Development Program of Zhejiang Province

National Natural Science Youth Science Foundation Project

Zhejiang Provincial Natural Science Foundation Youth Fund Project

Publisher

MDPI AG

Subject

Bioengineering

Reference41 articles.

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