Scientific Reports (Jun 2022)

Deep learning for necrosis detection using canine perivascular wall tumour whole slide images

  • Taranpreet Rai,
  • Ambra Morisi,
  • Barbara Bacci,
  • Nicholas J. Bacon,
  • Michael J. Dark,
  • Tawfik Aboellail,
  • Spencer Angus Thomas,
  • Miroslaw Bober,
  • Roberto La Ragione,
  • Kevin Wells

DOI
https://doi.org/10.1038/s41598-022-13928-1
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 14

Abstract

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Abstract Necrosis seen in histopathology Whole Slide Images is a major criterion that contributes towards scoring tumour grade which then determines treatment options. However conventional manual assessment suffers from inter-operator reproducibility impacting grading precision. To address this, automatic necrosis detection using AI may be used to assess necrosis for final scoring that contributes towards the final clinical grade. Using deep learning AI, we describe a novel approach for automating necrosis detection in Whole Slide Images, tested on a canine Soft Tissue Sarcoma (cSTS) data set consisting of canine Perivascular Wall Tumours (cPWTs). A patch-based deep learning approach was developed where different variations of training a DenseNet-161 Convolutional Neural Network architecture were investigated as well as a stacking ensemble. An optimised DenseNet-161 with post-processing produced a hold-out test F1-score of 0.708 demonstrating state-of-the-art performance. This represents a novel first-time automated necrosis detection method in the cSTS domain as well specifically in detecting necrosis in cPWTs demonstrating a significant step forward in reproducible and reliable necrosis assessment for improving the precision of tumour grading.