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Integrated molecular and functional characterization of the intrinsic apoptotic machinery identifies therapeutic vulnerabilities in glioma

Author

Listed:
  • Elizabeth G. Fernandez

    (University of California Los Angeles)

  • Wilson X. Mai

    (University of California Los Angeles)

  • Kai Song

    (University of California, Los Angeles)

  • Nicholas A. Bayley

    (University of California Los Angeles)

  • Jiyoon Kim

    (Jonathan and Karin Fielding School of Public Health, Los Angeles)

  • Henan Zhu

    (University of California Los Angeles)

  • Marissa Pioso

    (University of California Los Angeles)

  • Pauline Young

    (University of California Los Angeles)

  • Cassidy L. Andrasz

    (University of California Los Angeles
    University of California)

  • Dimitri Cadet

    (University of California Los Angeles)

  • Linda M. Liau

    (University of California, Los Angeles
    University of California, Los Angeles)

  • Gang Li

    (Jonathan and Karin Fielding School of Public Health, Los Angeles)

  • William H. Yong

    (University of California, Los Angeles)

  • Fausto J. Rodriguez

    (University of California, Los Angeles)

  • Scott J. Dixon

    (Stanford University)

  • Andrew J. Souers

    (Inc.)

  • Jingyi Jessica Li

    (Jonathan and Karin Fielding School of Public Health, Los Angeles
    University of California, Los Angeles
    University of California
    University of California)

  • Thomas G. Graeber

    (University of California Los Angeles
    University of California, Los Angeles
    University of California Los Angeles
    University of California Los Angeles)

  • Timothy F. Cloughesy

    (University of California Los Angeles
    University of California, Los Angeles
    Los Angeles)

  • David A. Nathanson

    (University of California Los Angeles
    University of California, Los Angeles)

Abstract

Genomic profiling often fails to predict therapeutic outcomes in cancer. This failure is, in part, due to a myriad of genetic alterations and the plasticity of cancer signaling networks. Functional profiling, which ascertains signaling dynamics, is an alternative method to anticipate drug responses. It is unclear whether integrating genomic and functional features of solid tumours can provide unique insight into therapeutic vulnerabilities. We perform combined molecular and functional characterization, via BH3 profiling of the intrinsic apoptotic machinery, in glioma patient samples and derivative models. We identify that standard-of-care therapy rapidly rewires apoptotic signaling in a genotype-specific manner, revealing targetable apoptotic vulnerabilities in gliomas containing specific molecular features (e.g., TP53 WT). However, integration of BH3 profiling reveals high mitochondrial priming is also required to induce glioma apoptosis. Accordingly, a machine-learning approach identifies a composite molecular and functional signature that best predicts responses of diverse intracranial glioma models to standard-of-care therapies combined with ABBV-155, a clinical drug targeting intrinsic apoptosis. This work demonstrates how complementary functional and molecular data can robustly predict therapy-induced cell death.

Suggested Citation

  • Elizabeth G. Fernandez & Wilson X. Mai & Kai Song & Nicholas A. Bayley & Jiyoon Kim & Henan Zhu & Marissa Pioso & Pauline Young & Cassidy L. Andrasz & Dimitri Cadet & Linda M. Liau & Gang Li & William, 2024. "Integrated molecular and functional characterization of the intrinsic apoptotic machinery identifies therapeutic vulnerabilities in glioma," Nature Communications, Nature, vol. 15(1), pages 1-18, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-54138-9
    DOI: 10.1038/s41467-024-54138-9
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    References listed on IDEAS

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