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Exploiting hierarchy in medical concept embedding.

Anthony FinchAlexander CrowellMamta BhatiaPooja ParameshwarappaYung-Chieh ChangJose MartinezMichael A Horberg
Published in: JAMIA open (2021)
We found significant evidence that our proposed algorithms can express the hierarchical structure of medical codes more fully than ordinary Word2Vec models, and that this improvement carries forward into classification tasks. As part of this publication, we have released several sets of pretrained medical concept embeddings using the ICD-10 standard which significantly outperform other well-known pretrained vectors on our tested outcomes.
Keyphrases
  • healthcare
  • machine learning
  • deep learning
  • adipose tissue