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Using Adversarial Images to Assess the Robustness of Deep Learning Models Trained on Diagnostic Images in Oncology.

Marina Z JoelSachin UmraoEnoch ChangRachel ChoiDaniel X YangJames S DuncanAntonio OmuroRoy S HerbstHarlan M KrumholzSanjay Aneja
Published in: JCO clinical cancer informatics (2022)
DL models naively trained on oncologic images exhibited dramatic instability to small pixel-level changes resulting in substantial decreases in accuracy. Adversarial training techniques improved the stability and robustness of DL models to such pixel-level changes. Before clinical implementation, adversarial training should be considered to proposed DL models to improve overall performance and safety.
Keyphrases
  • deep learning
  • convolutional neural network
  • optical coherence tomography
  • artificial intelligence
  • healthcare
  • machine learning
  • prostate cancer
  • resistance training
  • quality improvement
  • radical prostatectomy