Detection of malignancy in whole slide images of endometrial cancer biopsies using artificial intelligence.

Journal: PloS one
PMID:

Abstract

In this study we use artificial intelligence (AI) to categorise endometrial biopsy whole slide images (WSI) from digital pathology as either "malignant", "other or benign" or "insufficient". An endometrial biopsy is a key step in diagnosis of endometrial cancer, biopsies are viewed and diagnosed by pathologists. Pathology is increasingly digitised, with slides viewed as images on screens rather than through the lens of a microscope. The availability of these images is driving automation via the application of AI. A model that classifies slides in the manner proposed would allow prioritisation of these slides for pathologist review and hence reduce time to diagnosis for patients with cancer. Previous studies using AI on endometrial biopsies have examined slightly different tasks, for example using images alongside genomic data to differentiate between cancer subtypes. We took 2909 slides with "malignant" and "other or benign" areas annotated by pathologists. A fully supervised convolutional neural network (CNN) model was trained to calculate the probability of a patch from the slide being "malignant" or "other or benign". Heatmaps of all the patches on each slide were then produced to show malignant areas. These heatmaps were used to train a slide classification model to give the final slide categorisation as either "malignant", "other or benign" or "insufficient". The final model was able to accurately classify 90% of all slides correctly and 97% of slides in the malignant class; this accuracy is good enough to allow prioritisation of pathologists' workload.

Authors

  • Christina Fell
    School of Computer Science, University of St Andrews, St Andrews KY16 9SX, UK.
  • Mahnaz Mohammadi
    School of Computer Science, University of St Andrews, St Andrews KY16 9SX, UK.
  • David Morrison
    Bitefirst, South Walsham, United Kingdom.
  • Ognjen Arandjelović
    1School of Computer Science, University of St Andrews, St Andrews, KY16 9SX UK.
  • Sheeba Syed
    Department of Pathology, Queen Elizabeth University Hospital, Glasgow G51 4TF, UK.
  • Prakash Konanahalli
    Department of Pathology, Queen Elizabeth University Hospital, Glasgow G51 4TF, UK.
  • Sarah Bell
    Department of Pathology, Queen Elizabeth University Hospital, Glasgow G51 4TF, UK.
  • Gareth Bryson
    Department of Pathology, Queen Elizabeth University Hospital, Glasgow G51 4TF, UK.
  • David J Harrison
    2School of Medicine, University of St Andrews, St Andrews, KY16 9TF UK.
  • David Harris-Birtill
    School of Computer Science, University of St. Andrews, St. Andrews, Scotland.