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Integrative multi-omics networks identify PKCδ and DNA-PK as master kinases of glioblastoma subtypes and guide targeted cancer therapy

Authors :
Simona Migliozzi
Young Taek Oh
Mohammad Hasanain
Luciano Garofano
Fulvio D’Angelo
Ryan D. Najac
Alberto Picca
Franck Bielle
Anna Luisa Di Stefano
Julie Lerond
Jann N. Sarkaria
Michele Ceccarelli
Marc Sanson
Anna Lasorella
Antonio Iavarone
Migliozzi, Simona
Oh, Young Taek
Hasanain, Mohammad
Garofano, Luciano
D'Angelo, Fulvio
Najac, Ryan D
Picca, Alberto
Bielle, Franck
Di Stefano, Anna Luisa
Lerond, Julie
Sarkaria, Jann N
Ceccarelli, Michele
Sanson, Marc
Lasorella, Anna
Iavarone, Antonio
Publication Year :
2023

Abstract

Despite producing a panoply of potential cancer-specific targets, the proteogenomic characterization of human tumors has yet to demonstrate value for precision cancer medicine. Integrative multi-omics using a machine-learning network identified master kinases responsible for effecting phenotypic hallmarks of functional glioblastoma subtypes. In subtype-matched patient-derived models, we validated PKCδ and DNA-PK as master kinases of glycolytic/plurimetabolic and proliferative/progenitor subtypes, respectively, and qualified the kinases as potent and actionable glioblastoma subtype-specific therapeutic targets. Glioblastoma subtypes were associated with clinical and radiomics features, orthogonally validated by proteomics, phospho-proteomics, metabolomics, lipidomics and acetylomics analyses, and recapitulated in pediatric glioma, breast and lung squamous cell carcinoma, including subtype specificity of PKCδ and DNA-PK activity. We developed a probabilistic classification tool that performs optimally with RNA from frozen and paraffin-embedded tissues, which can be used to evaluate the association of therapeutic response with glioblastoma subtypes and to inform patient selection in prospective clinical trials.

Subjects

Subjects :
Cancer Research
Oncology

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....bc0f91991c8890f7c7036577b2ce8804