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Pathway and network analysis of more than 2500 whole cancer genomes

Author

Listed:
  • Matthew A. Reyna

    (Princeton University
    Emory University)

  • David Haan

    (University of California, Santa Cruz)

  • Marta Paczkowska

    (Computational Biology Program, Ontario Institute for Cancer Research, Toronto)

  • Lieven P. C. Verbeke

    (Ghent University, IMEC
    Ghent University)

  • Miguel Vazquez

    (Barcelona Supercomputing Center (BSC)
    Norwegian University of Science and Technology)

  • Abdullah Kahraman

    (Institute of Molecular Life Sciences and Swiss Institute of Bioinformatics, University of Zurich
    University Hospital Zurich)

  • Sergio Pulido-Tamayo

    (Ghent University, IMEC
    Ghent University)

  • Jonathan Barenboim

    (Computational Biology Program, Ontario Institute for Cancer Research, Toronto)

  • Lina Wadi

    (Computational Biology Program, Ontario Institute for Cancer Research, Toronto)

  • Priyanka Dhingra

    (Weill Cornell Medicine)

  • Raunak Shrestha

    (Vancouver Prostate Centre)

  • Gad Getz

    (The Broad Institute of MIT and Harvard
    Massachusetts General Hospital Center for Cancer Research
    Harvard Medical School
    Massachusetts General Hospital, Department of Pathology)

  • Michael S. Lawrence

    (The Broad Institute of MIT and Harvard
    Massachusetts General Hospital Center for Cancer Research)

  • Jakob Skou Pedersen

    (Aarhus University Hospital
    Bioinformatics Research Centre (BiRC), Aarhus University)

  • Mark A. Rubin

    (Weill Cornell Medicine)

  • David A. Wheeler

    (Human Genome Sequencing Center, Baylor College of Medicine)

  • Søren Brunak

    (Technical University of Denmark, Kemitorvet
    University of Copenhagen)

  • Jose M. G. Izarzugaza

    (Technical University of Denmark, Kemitorvet
    University of Copenhagen)

  • Ekta Khurana

    (Weill Cornell Medicine)

  • Kathleen Marchal

    (Ghent University, IMEC
    Ghent University)

  • Christian von Mering

    (Institute of Molecular Life Sciences and Swiss Institute of Bioinformatics, University of Zurich)

  • S. Cenk Sahinalp

    (Vancouver Prostate Centre
    Indiana University)

  • Alfonso Valencia

    (Barcelona Supercomputing Center (BSC)
    ICREA)

  • Jüri Reimand

    (Computational Biology Program, Ontario Institute for Cancer Research, Toronto
    University of Toronto, Toronto)

  • Joshua M. Stuart

    (University of California, Santa Cruz)

  • Benjamin J. Raphael

    (Princeton University)

Abstract

The catalog of cancer driver mutations in protein-coding genes has greatly expanded in the past decade. However, non-coding cancer driver mutations are less well-characterized and only a handful of recurrent non-coding mutations, most notably TERT promoter mutations, have been reported. Here, as part of the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium, which aggregated whole genome sequencing data from 2658 cancer across 38 tumor types, we perform multi-faceted pathway and network analyses of non-coding mutations across 2583 whole cancer genomes from 27 tumor types compiled by the ICGC/TCGA PCAWG project that was motivated by the success of pathway and network analyses in prioritizing rare mutations in protein-coding genes. While few non-coding genomic elements are recurrently mutated in this cohort, we identify 93 genes harboring non-coding mutations that cluster into several modules of interacting proteins. Among these are promoter mutations associated with reduced mRNA expression in TP53, TLE4, and TCF4. We find that biological processes had variable proportions of coding and non-coding mutations, with chromatin remodeling and proliferation pathways altered primarily by coding mutations, while developmental pathways, including Wnt and Notch, altered by both coding and non-coding mutations. RNA splicing is primarily altered by non-coding mutations in this cohort, and samples containing non-coding mutations in well-known RNA splicing factors exhibit similar gene expression signatures as samples with coding mutations in these genes. These analyses contribute a new repertoire of possible cancer genes and mechanisms that are altered by non-coding mutations and offer insights into additional cancer vulnerabilities that can be investigated for potential therapeutic treatments.

Suggested Citation

  • Matthew A. Reyna & David Haan & Marta Paczkowska & Lieven P. C. Verbeke & Miguel Vazquez & Abdullah Kahraman & Sergio Pulido-Tamayo & Jonathan Barenboim & Lina Wadi & Priyanka Dhingra & Raunak Shresth, 2020. "Pathway and network analysis of more than 2500 whole cancer genomes," Nature Communications, Nature, vol. 11(1), pages 1-17, December.
  • Handle: RePEc:nat:natcom:v:11:y:2020:i:1:d:10.1038_s41467-020-14367-0
    DOI: 10.1038/s41467-020-14367-0
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