Heterogeneous graph construction and HinSAGE learning from electronic medical records

Author:

Cho Ha Na,Ahn Imjin,Gwon Hansle,Kang Hee Jun,Kim Yunha,Seo Hyeram,Choi Heejung,Kim Minkyoung,Han Jiye,Kee Gaeun,Jun Tae Joon,Kim Young-Hak

Abstract

AbstractGraph representation learning is a method for introducing how to effectively construct and learn patient embeddings using electronic medical records. Adapting the integration will support and advance the previous methods to predict the prognosis of patients in network models. This study aims to address the challenge of implementing a complex and highly heterogeneous dataset, including the following: (1) demonstrating how to build a multi-attributed and multi-relational graph model (2) and applying a downstream disease prediction task of a patient’s prognosis using the HinSAGE algorithm. We present a bipartite graph schema and a graph database construction in detail. The first constructed graph database illustrates a query of a predictive network that provides analytical insights using a graph representation of a patient’s journey. Moreover, we demonstrate an alternative bipartite model where we apply the model to the HinSAGE to perform the link prediction task for predicting the event occurrence. Consequently, the performance evaluation indicated that our heterogeneous graph model was successfully predicted as a baseline model. Overall, our graph database successfully demonstrated efficient real-time query performance and showed HinSAGE implementation to predict cardiovascular disease event outcomes on supervised link prediction learning.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

Reference41 articles.

1. Snthilkumar, S. et al. Big data in healthcare management: A review of literature. Am. J. Theor. Appl. Bus. 4, 2 (2018).

2. Gopal, G., Suter-Crazzolara, C., Toldo, L. & Eberhardt, W. Digital transformation in healthcare- architectures of present and future information technologies. J. Clin. Chem. Lab. Med. 57, 3 (2019).

3. Lee, S. et al. Unlocking the potential of electronic health records for health research. Int. J. Popul. Data Sci. 30, 5 (2020).

4. Shuli, Y., Xiaoping, Y. & Huiling, L. Research on the EMR storage model. Int. Forum Comput. Sci. Technol. Appl. 61, 222–226 (2009).

5. Fang, C. et al. DeePaN: Deep patient graph convolutional network integrating clinic-genomic evidence to stratify lung cancers for immunotherapy. NPJ Digit. Med. 4, 14 (2021).

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