3.8 Proceedings Paper

Enhancing Local Context of Histology Features in Vision Transformers

出版社

SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-031-19660-7_15

关键词

Vision Transformer; Histology; Whole slide image; Clustering

资金

  1. EPSRC Center for Doctoral Training in Health Data Science [EP/S02428X/1]
  2. Oxford CRUK Cancer Centre
  3. Promedica Foundation [F-87701-41-01]
  4. Swiss National Science Foundation [P2SKP3 168322/1, P2SKP3 168322/2]
  5. Stratification in Colorectal Cancer Consortium (S:CORT) - Medical Research Council and Cancer Research UK [MR/M016587/1]
  6. Oxford NIHR National Oxford Biomedical Research Centre
  7. PathLAKE consortium (InnovateUK)
  8. NIHR Oxford BRC
  9. Wellcome Trust [203141/Z/16/Z]

向作者/读者索取更多资源

Using deep learning approaches, this study predicts the complete response to radiotherapy in rectal cancer patients by extracting morphological features from histology biopsies. The proposed adjustments to the Vision Transformer network improve the utilization of contextual information in whole slide images. The experiments show that the PREViT and ClusterViT models demonstrate improvements in prediction over baseline models.
Predicting complete response to radiotherapy in rectal cancer patients using deep learning approaches from morphological features extracted from histology biopsies provides a quick, low-cost and effective way to assist clinical decision making. We propose adjustments to the Vision Transformer (ViT) network to improve the utilisation of contextual information present in whole slide images (WSIs). Firstly, our position restoration embedding (PRE) preserves the spatial relationship between tissue patches, using their original positions on a WSI. Secondly, a clustering analysis of extracted tissue features explores morphological motifs which capture fundamental biological processes found in the tumour micro-environment. This is introduced into the ViT network in the form of a cluster label token, helping the model to differentiate between tissue types. The proposed methods are demonstrated on two large independent rectal cancer datasets of patients selectively treated with radiotherapy and capecitabine in two UK clinical trials. Experiments demonstrate that both models, PREViT and ClusterViT, show improvements in the prediction over baseline models.

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