4.6 Article

MedGCN: Medication recommendation and lab test imputation via graph convolutional networks

Journal

JOURNAL OF BIOMEDICAL INFORMATICS
Volume 127, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jbi.2022.104000

Keywords

Medication recommendation; Lab test imputation; Graph convolutional networks; Multi-task learning; Electronic health records

Funding

  1. US NIH [R21LM012618, 5UL1TR001422, U01TR003528, R01LM013337]

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Laboratory testing and medication prescription are important routines in clinical practice. This study presents MedGCN, an intelligent medical system that can recommend medications based on incomplete lab tests and accurately estimate missing lab values. The system integrates multiple types of medical entities and their features in a heterogeneous graph and uses graph convolutional networks to learn distributed representations. Experimental results demonstrate that MedGCN outperforms state-of-the-art methods in both medication recommendation and lab test imputation tasks.
Laboratory testing and medication prescription are two of the most important routines in daily clinical practice. Developing an artificial intelligence system that can automatically make lab test imputations and medication recommendations can save costs on potentially redundant lab tests and inform physicians of a more effective prescription. We present an intelligent medical system (named MedGCN) that can automatically recommend the patients' medications based on their incomplete lab tests, and can even accurately estimate the lab values that have not been taken. In our system, we integrate the complex relations between multiple types of medical entities with their inherent features in a heterogeneous graph. Then we model the graph to learn a distributed representation for each entity in the graph based on graph convolutional networks (GCN). By the propagation of graph convolutional networks, the entity representations can incorporate multiple types of medical information that can benefit multiple medical tasks. Moreover, we introduce a cross regularization strategy to reduce overfitting for multi-task training by the interaction between the multiple tasks. In this study, we construct a graph to associate 4 types of medical entities, i.e., patients, encounters, lab tests, and medications, and applied a graph neural network to learn node embeddings for medication recommendation and lab test imputation. we validate our MedGCN model on two real-world datasets: NMEDW and MIMIC-III. The experimental results on both datasets demonstrate that our model can outperform the state-of-the-art in both tasks. We believe that our innovative system can provide a promising and reliable way to assist physicians to make medication prescriptions and to save costs on potentially redundant lab tests.

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