Structure-aware siamese graph neural networks for encounter-level patient similarity learning.

Journal: Journal of biomedical informatics
Published Date:

Abstract

Patient similarity learning has attracted great research interest in biomedical informatics. Correctly identifying the similarity between a given patient and patient records in the database could contribute to clinical references for diagnosis and medication. The sparsity of underlying relationships between patients poses difficulties for similarity learning, which becomes more challenging when considering real-world Electronic Health Records (EHRs) with a large number of missing values. In the paper, we organize EHRs as a graph and propose a novel deep learning framework, Structure-aware Siamese Graph neural Networks (SSGNet), to perform robust encounter-level patient similarity learning while capturing the intrinsic graph structure and mitigating the influence from missing values. The proposed SSGNet regards each patient encounter as a node, and learns the node embeddings and the similarity between nodes simultaneously via Graph Neural Networks (GNNs) with siamese architecture. Further, SSGNet employs a low-rank and contrastive objective to optimize the structure of the patient graph and enhance model capacity. The extensive experiments were conducted on two publicly available datasets and a real-world dataset regarding IgA nephropathy from Peking University First Hospital, in comparison with multiple baseline and state-of-the-art methods. The significant improvement in Accuracy, Precision, Recall and F1 score on the patient encounter pairwise similarity classification task demonstrates the superiority of SSGNet. The mean average precision (mAP) of SSGNet on the similar encounter retrieval task is also better than other competitors. Furthermore, SSGNet's stable similarity classification accuracies at different missing rates of data validate the effectiveness and robustness of our proposal.

Authors

  • Yifan Gu
    Institute of Automation, Chinese Academy of Sciences, Beijing, China; University of Chinese Academy of Sciences, Beijing, China.
  • Xuebing Yang
    Institute of Automation, Chinese Academy of Sciences, Beijing, China.
  • Lei Tian
    Department of Electrical and Computer Engineering, Boston University, 8 St. Mary's Street, RM 830, Boston, Massachusetts, 02215.
  • Hongyu Yang
    Department of Pathology, St Vincent Evansville Hospital, Evansville, IN, USA.
  • Jicheng Lv
    Renal Division, Department of Medicine, Peking University First Hospital, Beijing, China.
  • Chao Yang
    Translational Institute for Cancer Pain, Chongming Hospital Affiliated to Shanghai University of Health & Medicine Sciences (Xinhua Hospital Chongming Branch), Shanghai 202155, P. R. China.
  • Jinwei Wang
    Weifang Ensign Industry Co., Ltd Weifang 250353 China.
  • Jianing Xi
    School of Artificial Intelligence, Optics and Electronics (iOPEN), Northwestern Polytechnical University, Xi'an, China.
  • Guilan Kong
    National Institute of Health Data Science, Peking University, Beijing, China. guilan.kong@hsc.pku.edu.cn.
  • Wensheng Zhang
    Department of Anesthesiology, West China Hospital, Sichuan University, Chengdu, China.