Colon cancer survival prediction from gland shapes within histology slides using deep learning.

Journal: Journal of integrative bioinformatics
Published Date:

Abstract

This study investigates the application of deep learning techniques for segmenting glands in histopathological images of colorectal cancer. We trained two convolutional neural network models, U-Net and DCAN, on a combination of the GlaS and CRAG datasets to enhance generalization across diverse histological appearances, selecting DCAN for its superior accuracy in delineating gland boundaries. The goal was to achieve robust gland segmentation applicable to whole slide images (WSIs) from The Cancer Genome Atlas (TCGA). Using the segmented glands, we extracted patient-level morphological features and used them to predict survival outcomes. A Cox proportional hazards model was trained on these features and achieved a high concordance index, indicating strong predictive performance. Patients were then stratified into high- and low-risk groups, with significant differences in survival distributions (log-rank -value: 0.01317). In addition, we benchmarked our models against state-of-the-art gland segmentation methods on GlaS and CRAG, highlighting the trade-off between domain-specific accuracy and cross-dataset robustness.

Authors

  • Rawan Gedeon
    Faculty of Applied Science, Technology and Engineering, Technology Department, 61180 Bethlehem University , Bethlehem, Palestine.
  • Atulya Nagar
    School of Mathematics, Computer Science and Engineering, Liverpool Hope University, Hope Park, Liverpool, L16 9JD, UK.

Keywords

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