4.8 Article

Interpretation of cancer mutations using a multiscale map of protein systems

Journal

SCIENCE
Volume 374, Issue 6563, Pages 51-+

Publisher

AMER ASSOC ADVANCEMENT SCIENCE
DOI: 10.1126/science.abf3067

Keywords

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Funding

  1. Cancer Cell Map Initiative [NCI U54 CA209891]
  2. National Resource for Network Biology [P41 GM103504, R01 HG009979]
  3. NIH [R01DE026870]
  4. NCI [5F30CA236404-02]
  5. NSF CAREER award [MCB-1651855]
  6. American Cancer Society Research Scholar Grant [RSG-21-033-01-CSM]
  7. Cancer Systems Biology Consortium (NCI) [U54 CA209988]
  8. NIGMS [R01 GM132322]
  9. UCSF Prostate Cancer Program
  10. Benioff Initiative for Prostate Cancer Research
  11. NIH SIG [S10 OD026929]

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This study successfully created a comprehensive map of cancer protein systems called NeST and identified 395 specific systems under mutational selection, contributing to the understanding of how disparate tumor mutations converge on protein assemblies at different scales.
A major goal of cancer research is to understand how mutations distributed across diverse genes affect common cellular systems, including multiprotein complexes and assemblies. Two challenges-how to comprehensively map such systems and how to identify which are under mutational selection-have hindered this understanding. Accordingly, we created a comprehensive map of cancer protein systems integrating both new and published multi-omic interaction data at multiple scales of analysis. We then developed a unified statistical model that pinpoints 395 specific systems under mutational selection across 13 cancer types. This map, called NeST (Nested Systems in Tumors), incorporates canonical processes and notable discoveries, including a PIK3CA-actomyosin complex that inhibits phosphatidylinositol 3-kinase signaling and recurrent mutations in collagen complexes that promote tumor proliferation. These systems can be used as clinical biomarkers and implicate a total of 548 genes in cancer evolution and progression. This work shows how disparate tumor mutations converge on protein assemblies at different scales.

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