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Uncertainty-aware ensemble of foundation models differentiates glioblastoma from its mimics

Author

Listed:
  • Junhan Zhao

    (Harvard Medical School
    Harvard T.H. Chan School of Public Health)

  • Shih-Yen Lin

    (Harvard Medical School)

  • Raphaël Attias

    (Harvard Medical School)

  • Liza Mathews

    (Harvard Medical School)

  • Christian Engel

    (Harvard Medical School)

  • Guillaume Larghero

    (Harvard Medical School)

  • Dmytro Vremenko

    (Harvard Medical School)

  • Ting-Wan Kao

    (Harvard Medical School)

  • Tsung-Hua Lee

    (Harvard Medical School)

  • Yu-Hsuan Wang

    (National Cheng Kung University)

  • Cheng Che Tsai

    (Harvard Medical School)

  • Eliana Marostica

    (Harvard Medical School)

  • Ying-Chun Lo

    (Mayo Clinic)

  • David Meredith

    (Brigham and Women’s Hospital)

  • Keith L. Ligon

    (Dana-Farber Cancer Institute)

  • Omar Arnaout

    (Brigham and Women’s Hospital)

  • Thomas Roetzer-Pejrimovsky

    (Medical University of Vienna)

  • Shih-Chieh Lin

    (Taipei Veterans General Hospital)

  • Natalie NC Shih

    (Perelman School of Medicine at the University of Pennsylvania)

  • Nipon Chaisuriya

    (Mayo Clinic
    Khon Kaen University)

  • David J. Cook

    (Mayo Clinic)

  • Jung-Hsien Chiang

    (National Cheng Kung University)

  • Chia-Jen Liu

    (Harvard Medical School
    Taipei Veterans General Hospital
    National Yang-Ming University)

  • Adelheid Woehrer

    (Medical University of Vienna
    Medical University of Innsbruck)

  • Jeffrey A. Golden

    (Cedars-Sinai Medical Center)

  • MacLean P. Nasrallah

    (Perelman School of Medicine at the University of Pennsylvania)

  • Kun-Hsing Yu

    (Harvard Medical School
    Brigham and Women’s Hospital
    Harvard University
    Harvard University)

Abstract

Accurate pathological diagnosis is crucial in guiding personalized treatments for patients with central nervous system cancers. Distinguishing glioblastoma and primary central nervous system lymphoma is particularly challenging due to their overlapping pathology features, despite the distinct treatments required. To address this challenge, we establish the Pathology Image Characterization Tool with Uncertainty-aware Rapid Evaluations (PICTURE) system using 2141 pathology slides collected worldwide. PICTURE employs Bayesian inference, deep ensemble, and normalizing flow to account for the uncertainties in its predictions and training set labels. PICTURE accurately diagnoses glioblastoma and primary central nervous system lymphoma with an area under the receiver operating characteristic curve (AUROC) of 0.989, with the results validated in five independent cohorts (AUROC = 0.924-0.996). In addition, PICTURE identifies samples belonging to 67 types of rare central nervous system cancers that are neither gliomas nor lymphomas. Our approaches provide a generalizable framework for differentiating pathological mimics and enable rapid diagnoses for central nervous system cancer patients.

Suggested Citation

  • Junhan Zhao & Shih-Yen Lin & Raphaël Attias & Liza Mathews & Christian Engel & Guillaume Larghero & Dmytro Vremenko & Ting-Wan Kao & Tsung-Hua Lee & Yu-Hsuan Wang & Cheng Che Tsai & Eliana Marostica &, 2025. "Uncertainty-aware ensemble of foundation models differentiates glioblastoma from its mimics," Nature Communications, Nature, vol. 16(1), pages 1-16, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-64249-6
    DOI: 10.1038/s41467-025-64249-6
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