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Convolutional Neural Network-Based Automatic Classification of Colorectal and Prostate Tumor Biopsies Using Multispectral Imagery: System Development Study.

Rémy PeyretDuaa AlSaeedFouad KhelifiNadia Al-GhreimilHeyam H Al-BaityAhmed Bouridane
Published in: JMIR bioinformatics and biotechnology (2022)
The proposed CNN architecture was detailed and compared with previously trained network models used as feature extractors. These CNNs were also compared with other classification techniques. As opposed to pretrained CNNs and other classification approaches, the proposed CNN yielded excellent results. The computational complexity of the CNNs was also investigated, and it was shown that the proposed CNN is better at classifying images than pretrained networks because it does not require preprocessing. Thus, the overall analysis was that the proposed CNN architecture was globally the best-performing system for classifying colorectal and prostate tumor images.
Keyphrases
  • convolutional neural network
  • deep learning
  • prostate cancer
  • machine learning
  • benign prostatic hyperplasia
  • body composition
  • resistance training
  • high resolution
  • photodynamic therapy
  • optical coherence tomography