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Model performance and interpretability of semi-supervised generative adversarial networks to predict oncogenic variants with unlabeled data.

Zilin RenQuan LiKajia CaoMarilyn M LiYunyun ZhouKai Wang
Published in: BMC bioinformatics (2023)
By incorporating much larger samples of unlabeled data, the SGAN method can improve the ability to detect novel oncogenic variants, compared to other machine-learning algorithms that use only labeled datasets. SGAN can be potentially used to predict the pathogenicity of more complex variants such as structural variants or non-coding variants, with the availability of more training samples and informative features.
Keyphrases
  • machine learning
  • copy number
  • big data
  • electronic health record
  • artificial intelligence
  • transcription factor
  • deep learning
  • gene expression
  • escherichia coli
  • genome wide
  • staphylococcus aureus
  • pet imaging
  • single cell