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Modeling electronic health record data using a knowledge-graph-embedded topic model (2206.01436v1)

Published 3 Jun 2022 in cs.LG, cs.IR, and q-bio.QM

Abstract: The rapid growth of electronic health record (EHR) datasets opens up promising opportunities to understand human diseases in a systematic way. However, effective extraction of clinical knowledge from the EHR data has been hindered by its sparsity and noisy information. We present KG-ETM, an end-to-end knowledge graph-based multimodal embedded topic model. KG-ETM distills latent disease topics from EHR data by learning the embedding from the medical knowledge graphs. We applied KG-ETM to a large-scale EHR dataset consisting of over 1 million patients. We evaluated its performance based on EHR reconstruction and drug imputation. KG-ETM demonstrated superior performance over the alternative methods on both tasks. Moreover, our model learned clinically meaningful graph-informed embedding of the EHR codes. In additional, our model is also able to discover interpretable and accurate patient representations for patient stratification and drug recommendations.

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Authors (5)
  1. Yuesong Zou (2 papers)
  2. Ahmad Pesaranghader (5 papers)
  3. Aman Verma (9 papers)
  4. David Buckeridge (9 papers)
  5. Yue Li (219 papers)
Citations (1)

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