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Development and deployment of a histopathology-based deep learning algorithm for patient prescreening in a clinical trial

Author

Listed:
  • Albert Juan Ramon

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Chaitanya Parmar

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Oscar M. Carrasco-Zevallos

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Carlos Csiszer

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Stephen S. F. Yip

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Patricia Raciti

    (a Johnson & Johnson Company. Oncology)

  • Nicole L. Stone

    (a Johnson & Johnson Company. Oncology)

  • Spyros Triantos

    (a Johnson & Johnson Company. Oncology)

  • Michelle M. Quiroz

    (a Johnson & Johnson Company. Oncology)

  • Patrick Crowley

    (a Johnson & Johnson Company. Global Development)

  • Ashita S. Batavia

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Joel Greshock

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Tommaso Mansi

    (a Johnson & Johnson Company. Data Science and Digital Health)

  • Kristopher A. Standish

    (a Johnson & Johnson Company. Data Science and Digital Health)

Abstract

Accurate identification of genetic alterations in tumors, such as Fibroblast Growth Factor Receptor, is crucial for treating with targeted therapies; however, molecular testing can delay patient care due to the time and tissue required. Successful development, validation, and deployment of an AI-based, biomarker-detection algorithm could reduce screening cost and accelerate patient recruitment. Here, we develop a deep-learning algorithm using >3000 H&E-stained whole slide images from patients with advanced urothelial cancers, optimized for high sensitivity to avoid ruling out trial-eligible patients. The algorithm is validated on a dataset of 350 patients, achieving an area under the curve of 0.75, specificity of 31.8% at 88.7% sensitivity, and projected 28.7% reduction in molecular testing. We successfully deploy the system in a non-interventional study comprising 89 global study clinical sites and demonstrate its potential to prioritize/deprioritize molecular testing resources and provide substantial cost savings in the drug development and clinical settings.

Suggested Citation

  • Albert Juan Ramon & Chaitanya Parmar & Oscar M. Carrasco-Zevallos & Carlos Csiszer & Stephen S. F. Yip & Patricia Raciti & Nicole L. Stone & Spyros Triantos & Michelle M. Quiroz & Patrick Crowley & As, 2024. "Development and deployment of a histopathology-based deep learning algorithm for patient prescreening in a clinical trial," Nature Communications, Nature, vol. 15(1), pages 1-14, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-49153-9
    DOI: 10.1038/s41467-024-49153-9
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