4.6 Article Proceedings Paper

Graph Neural Network-Based Diagnosis Prediction

Journal

BIG DATA
Volume 8, Issue 5, Pages 379-390

Publisher

MARY ANN LIEBERT, INC
DOI: 10.1089/big.2020.0070

Keywords

deep learning; health care informatics; medical knowledge graph

Funding

  1. National Key Research and Development Program of China [2018YFC130078]
  2. National Natural Science Foun-dation of China [61672420]
  3. Key Project of Natural Science Foundation of China [61532015]
  4. Innovation Research Team of Ministry of Education [IRT_17R86]
  5. Project of China Knowledge Center for Engineering Science and Technology, National Natural Science Foundation of China Innovation Research Team [61721002]

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Diagnosis prediction is an important predictive task in health care that aims to predict the patient future diagnosis based on their historical medical records. A crucial requirement for this task is to effectively model the high-dimensional, noisy, and temporal electronic health record (EHR) data. Existing studies fulfill this requirement by applying recurrent neural networks with attention mechanisms, but facing data insufficiency and noise problem. Recently, more accurate and robust medical knowledge-guided methods have been proposed and have achieved superior performance. These methods inject the knowledge from a graph structure medical ontology into deep models via attention mechanisms to provide supplementary information of the input data. However, these methods only partially leverage the knowledge graph and neglect the global structure information, which is an important feature. To address this problem, we propose an end-to-end robust solution, namely Graph Neural Network-Based Diagnosis Prediction (GNDP). First, we propose to utilize the medical knowledge graph as an internal information of a patient by constructing sequential patient graphs. These graphs not only carry the historical information from the EHR but also infuse with domain knowledge. Then we design a robust diagnosis prediction model based on a spatial-temporal graph convolutional network. The proposed model extracts meaningful features from sequential graph EHR data effectively through multiple spatial-temporal graph convolution units to generate robust patients' representations for accurate diagnosis predictions. We evaluate the performance of GNDP against a set of state-of-the-art methods on two real-world medical data sets, the results demonstrate that our methods can achieve a better utilization of knowledge graph and improve the accuracy on diagnosis prediction tasks.

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