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Multiparametric MRI along with machine learning predicts prognosis and treatment response in pediatric low-grade glioma

Author

Listed:
  • Anahita Fathi Kazerooni

    (The Children’s Hospital of Philadelphia
    University of Pennsylvania
    University of Pennsylvania
    The Children’s Hospital of Philadelphia)

  • Adam Kraya

    (The Children’s Hospital of Philadelphia)

  • Komal S. Rathi

    (The Children’s Hospital of Philadelphia)

  • Meen Chul Kim

    (The Children’s Hospital of Philadelphia)

  • Arastoo Vossough

    (The Children’s Hospital of Philadelphia
    The Children’s Hospital of Philadelphia
    University of Pennsylvania)

  • Nastaran Khalili

    (The Children’s Hospital of Philadelphia)

  • Ariana M. Familiar

    (The Children’s Hospital of Philadelphia)

  • Deep Gandhi

    (The Children’s Hospital of Philadelphia)

  • Neda Khalili

    (The Children’s Hospital of Philadelphia)

  • Varun Kesherwani

    (The Children’s Hospital of Philadelphia)

  • Debanjan Haldar

    (The Children’s Hospital of Philadelphia
    Thomas Jefferson University)

  • Hannah Anderson

    (The Children’s Hospital of Philadelphia
    University of Pennsylvania)

  • Run Jin

    (The Children’s Hospital of Philadelphia)

  • Aria Mahtabfar

    (Thomas Jefferson University)

  • Sina Bagheri

    (The Children’s Hospital of Philadelphia
    University of Pennsylvania)

  • Yiran Guo

    (The Children’s Hospital of Philadelphia)

  • Qi Li

    (The Children’s Hospital of Philadelphia)

  • Xiaoyan Huang

    (The Children’s Hospital of Philadelphia)

  • Yuankun Zhu

    (The Children’s Hospital of Philadelphia)

  • Alex Sickler

    (The Children’s Hospital of Philadelphia
    The Children’s Hospital of Philadelphia)

  • Matthew R. Lueder

    (The Children’s Hospital of Philadelphia
    The Children’s Hospital of Philadelphia
    The Children’s Hospital of Philadelphia)

  • Saksham Phul

    (The Children’s Hospital of Philadelphia)

  • Mateusz Koptyra

    (The Children’s Hospital of Philadelphia)

  • Phillip B. Storm

    (The Children’s Hospital of Philadelphia
    University of Pennsylvania
    The Children’s Hospital of Philadelphia)

  • Jeffrey B. Ware

    (University of Pennsylvania)

  • Yuanquan Song

    (The Children’s Hospital of Philadelphia
    University of Pennsylvania)

  • Christos Davatzikos

    (University of Pennsylvania
    University of Pennsylvania)

  • Jessica B. Foster

    (The Children’s Hospital of Philadelphia
    Perelman School of Medicine, University of Pennsylvania)

  • Sabine Mueller

    (University of California San Francisco)

  • Michael J. Fisher

    (The Children’s Hospital of Philadelphia)

  • Adam C. Resnick

    (The Children’s Hospital of Philadelphia
    The Children’s Hospital of Philadelphia)

  • Ali Nabavizadeh

    (The Children’s Hospital of Philadelphia
    University of Pennsylvania)

Abstract

Pediatric low-grade gliomas (pLGGs) exhibit heterogeneous prognoses and variable responses to treatment, leading to tumor progression and adverse outcomes in cases where complete resection is unachievable. Early prediction of treatment responsiveness and suitability for immunotherapy has the potential to improve clinical management and outcomes. Here, we present a radiogenomic analysis of pLGGs, integrating MRI and RNA sequencing data. We identify three immunologically distinct clusters, with one group characterized by increased immune activity and poorer prognosis, indicating potential benefit from immunotherapies. We develop a radiomic signature that predicts these immune profiles with over 80% accuracy. Furthermore, our clinicoradiomic model predicts progression-free survival and correlates with treatment response. We also identify genetic variants and transcriptomic pathways associated with progression risk, highlighting links to tumor growth and immune response. This radiogenomic study in pLGGs provides a framework for the identification of high-risk patients who may benefit from targeted therapies.

Suggested Citation

  • Anahita Fathi Kazerooni & Adam Kraya & Komal S. Rathi & Meen Chul Kim & Arastoo Vossough & Nastaran Khalili & Ariana M. Familiar & Deep Gandhi & Neda Khalili & Varun Kesherwani & Debanjan Haldar & Han, 2025. "Multiparametric MRI along with machine learning predicts prognosis and treatment response in pediatric low-grade glioma," Nature Communications, Nature, vol. 16(1), pages 1-16, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-024-55659-z
    DOI: 10.1038/s41467-024-55659-z
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