Integrative multi-omics networks identify PKCδ and DNA-PK as master kinases of glioblastoma subtypes and guide targeted cancer therapy.
Simona MigliozziYoung Taek OhMohammad HasanainLuciano GarofanoFulvio D'AngeloRyan D NajacAlberto PiccaFranck BielleAnna-Luisa Di StefanoJulie LerondJann N SarkariaMichele CeccarelliMarc SansonAnna LasorellaAntonio IavaronePublished in: Nature cancer (2023)
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.
Keyphrases
- machine learning
- cancer therapy
- squamous cell carcinoma
- circulating tumor
- papillary thyroid
- mass spectrometry
- clinical trial
- cell free
- single molecule
- lymph node metastasis
- endothelial cells
- nucleic acid
- squamous cell
- deep learning
- drug delivery
- randomized controlled trial
- single cell
- young adults
- risk assessment
- circulating tumor cells
- phase iii
- human health