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Identifying clinically applicable machine learning algorithms for glioma segmentation: recent advances and discoveries.

Niklas TillmannsAvery E LumGabriel CassinelliSara MerkajTej VermaTal ZeeviLawrence StaibHarry SubramanianRyan C BaharWaverly BrimJan LostLeon JekelAlexandria BrackettSam PayabvashIchiro IkutaMingDe LinKhaled BousabarahMichele H JohnsonJin CuiJoseph SchindlerAntonio OmuroBernd TurowskiMariam S Aboian
Published in: Neuro-oncology advances (2022)
In addition, we identified that more than a third of the articles used the same publicly available BRaTS and TCIA datasets and are responsible for the majority of patient data on which ML algorithms were trained, which leads to limited generalizability and potential for overfitting and bias.
Keyphrases
  • machine learning
  • deep learning
  • big data
  • artificial intelligence
  • convolutional neural network
  • case report
  • electronic health record
  • resistance training
  • rna seq
  • risk assessment