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Enabling large-scale screening of Barrett’s esophagus using weakly supervised deep learning in histopathology

Author

Listed:
  • Kenza Bouzid

    (Microsoft Health Futures)

  • Harshita Sharma

    (Microsoft Health Futures)

  • Sarah Killcoyne

    (Cyted Ltd)

  • Daniel C. Castro

    (Microsoft Health Futures)

  • Anton Schwaighofer

    (Microsoft Health Futures)

  • Max Ilse

    (Microsoft Health Futures)

  • Valentina Salvatelli

    (Microsoft Health Futures)

  • Ozan Oktay

    (Microsoft Health Futures)

  • Sumanth Murthy

    (Cyted Ltd)

  • Lucas Bordeaux

    (Cyted Ltd)

  • Luiza Moore

    (Cambridge University NHS Foundation Trust)

  • Maria O’Donovan

    (Cyted Ltd
    Cambridge University NHS Foundation Trust)

  • Anja Thieme

    (Microsoft Health Futures)

  • Aditya Nori

    (Microsoft Health Futures)

  • Marcel Gehrung

    (Cyted Ltd)

  • Javier Alvarez-Valle

    (Microsoft Health Futures)

Abstract

Timely detection of Barrett’s esophagus, the pre-malignant condition of esophageal adenocarcinoma, can improve patient survival rates. The Cytosponge-TFF3 test, a non-endoscopic minimally invasive procedure, has been used for diagnosing intestinal metaplasia in Barrett’s. However, it depends on pathologist’s assessment of two slides stained with H&E and the immunohistochemical biomarker TFF3. This resource-intensive clinical workflow limits large-scale screening in the at-risk population. To improve screening capacity, we propose a deep learning approach for detecting Barrett’s from routinely stained H&E slides. The approach solely relies on diagnostic labels, eliminating the need for expensive localized expert annotations. We train and independently validate our approach on two clinical trial datasets, totaling 1866 patients. We achieve 91.4% and 87.3% AUROCs on discovery and external test datasets for the H&E model, comparable to the TFF3 model. Our proposed semi-automated clinical workflow can reduce pathologists’ workload to 48% without sacrificing diagnostic performance, enabling pathologists to prioritize high risk cases.

Suggested Citation

  • Kenza Bouzid & Harshita Sharma & Sarah Killcoyne & Daniel C. Castro & Anton Schwaighofer & Max Ilse & Valentina Salvatelli & Ozan Oktay & Sumanth Murthy & Lucas Bordeaux & Luiza Moore & Maria O’Donova, 2024. "Enabling large-scale screening of Barrett’s esophagus using weakly supervised deep learning in histopathology," Nature Communications, Nature, vol. 15(1), pages 1-15, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-46174-2
    DOI: 10.1038/s41467-024-46174-2
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