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Regression-based Deep-Learning predicts molecular biomarkers from pathology slides

Author

Listed:
  • Omar S. M. El Nahhas

    (TUD Dresden University of Technology)

  • Chiara M. L. Loeffler

    (TUD Dresden University of Technology
    University Hospital and Faculty of Medicine Carl Gustav Carus, TUD Dresden University of Technology)

  • Zunamys I. Carrero

    (TUD Dresden University of Technology)

  • Marko Treeck

    (TUD Dresden University of Technology)

  • Fiona R. Kolbinger

    (TUD Dresden University of Technology
    University Hospital and Faculty of Medicine Carl Gustav Carus, TUD Dresden University of Technology)

  • Katherine J. Hewitt

    (TUD Dresden University of Technology)

  • Hannah S. Muti

    (TUD Dresden University of Technology
    University Hospital and Faculty of Medicine Carl Gustav Carus, TUD Dresden University of Technology)

  • Mara Graziani

    (University of Applied Sciences of Western Switzerland (HES-SO Valais))

  • Qinghe Zeng

    (Sorbonne Université, Université Paris Cité)

  • Julien Calderaro

    (Assistance Publique-Hôpitaux de Paris, Département de Pathologie, CHU Henri Mondor)

  • Nadina Ortiz-Brüchle

    (University Hospital RWTH Aachen
    Center for Integrated Oncology Aachen Bonn Cologne Duesseldorf (CIO ABCD))

  • Tanwei Yuan

    (German Cancer Research Center (DKFZ))

  • Michael Hoffmeister

    (German Cancer Research Center (DKFZ))

  • Hermann Brenner

    (German Cancer Research Center (DKFZ)
    German Cancer Research Center (DKFZ) and National Center for Tumor Diseases (NCT)
    German Cancer Research Center (DKFZ))

  • Alexander Brobeil

    (University Hospital Heidelberg
    University Hospital Heidelberg)

  • Jorge S. Reis-Filho

    (Memorial Sloan Kettering Cancer Center)

  • Jakob Nikolas Kather

    (TUD Dresden University of Technology
    University Hospital and Faculty of Medicine Carl Gustav Carus, TUD Dresden University of Technology
    University of Leeds
    University Hospital Heidelberg)

Abstract

Deep Learning (DL) can predict biomarkers from cancer histopathology. Several clinically approved applications use this technology. Most approaches, however, predict categorical labels, whereas biomarkers are often continuous measurements. We hypothesize that regression-based DL outperforms classification-based DL. Therefore, we develop and evaluate a self-supervised attention-based weakly supervised regression method that predicts continuous biomarkers directly from 11,671 images of patients across nine cancer types. We test our method for multiple clinically and biologically relevant biomarkers: homologous recombination deficiency score, a clinically used pan-cancer biomarker, as well as markers of key biological processes in the tumor microenvironment. Using regression significantly enhances the accuracy of biomarker prediction, while also improving the predictions’ correspondence to regions of known clinical relevance over classification. In a large cohort of colorectal cancer patients, regression-based prediction scores provide a higher prognostic value than classification-based scores. Our open-source regression approach offers a promising alternative for continuous biomarker analysis in computational pathology.

Suggested Citation

  • Omar S. M. El Nahhas & Chiara M. L. Loeffler & Zunamys I. Carrero & Marko Treeck & Fiona R. Kolbinger & Katherine J. Hewitt & Hannah S. Muti & Mara Graziani & Qinghe Zeng & Julien Calderaro & Nadina O, 2024. "Regression-based Deep-Learning predicts molecular biomarkers from pathology slides," Nature Communications, Nature, vol. 15(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-45589-1
    DOI: 10.1038/s41467-024-45589-1
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    References listed on IDEAS

    as
    1. Frederick M. Howard & James Dolezal & Sara Kochanny & Jefree Schulte & Heather Chen & Lara Heij & Dezheng Huo & Rita Nanda & Olufunmilayo I. Olopade & Jakob N. Kather & Nicole Cipriani & Robert L. Gro, 2021. "The impact of site-specific digital histology signatures on deep learning model accuracy and bias," Nature Communications, Nature, vol. 12(1), pages 1-13, December.
    2. Benoît Schmauch & Alberto Romagnoni & Elodie Pronier & Charlie Saillard & Pascale Maillé & Julien Calderaro & Aurélie Kamoun & Meriem Sefta & Sylvain Toldo & Mikhail Zaslavskiy & Thomas Clozel & Matah, 2020. "A deep learning model to predict RNA-Seq expression of tumours from whole slide images," Nature Communications, Nature, vol. 11(1), pages 1-15, December.
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