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Integrated Omic analysis of lung cancer reveals metabolism proteome signatures with prognostic impact

Author

Listed:
  • Lei Li

    (The Hospital For Sick Children)

  • Yuhong Wei

    (The Hospital For Sick Children)

  • Christine To

    (Princess Margaret Cancer Centre)

  • Chang-Qi Zhu

    (Princess Margaret Cancer Centre)

  • Jiefei Tong

    (The Hospital For Sick Children)

  • Nhu-An Pham

    (Princess Margaret Cancer Centre)

  • Paul Taylor

    (The Hospital For Sick Children)

  • Vladimir Ignatchenko

    (Princess Margaret Cancer Centre)

  • Alex Ignatchenko

    (Princess Margaret Cancer Centre)

  • Wen Zhang

    (The Hospital For Sick Children
    University of Toronto)

  • Dennis Wang

    (Princess Margaret Cancer Centre)

  • Naoki Yanagawa

    (Princess Margaret Cancer Centre)

  • Ming Li

    (Princess Margaret Cancer Centre)

  • Melania Pintilie

    (Princess Margaret Cancer Centre
    The Dalla Lana School of Public Health Sciences, University of Toronto)

  • Geoffrey Liu

    (Princess Margaret Cancer Centre
    University of Toronto)

  • Lakshmi Muthuswamy

    (University of Toronto
    Ontario Institute for Cancer Research, 661 University Avenue)

  • Frances A. Shepherd

    (Princess Margaret Cancer Centre
    University of Toronto)

  • Ming Sound Tsao

    (Princess Margaret Cancer Centre
    University of Toronto
    University of Toronto)

  • Thomas Kislinger

    (Princess Margaret Cancer Centre
    University of Toronto)

  • Michael F. Moran

    (The Hospital For Sick Children
    Princess Margaret Cancer Centre
    University of Toronto)

Abstract

Cancer results from processes prone to selective pressure and dysregulation acting along the sequence-to-phenotype continuum DNA→RNA→protein→disease. However, the extent to which cancer is a manifestation of the proteome is unknown. Here we present an integrated omic map representing non-small cell lung carcinoma. Dysregulated proteins not previously implicated as cancer drivers are encoded throughout the genome including, but not limited to, regions of recurrent DNA amplification/deletion. Clustering reveals signatures composed of metabolism proteins particularly highly recapitulated between patient-matched primary and xenograft tumours. Interrogation of The Cancer Genome Atlas reveals cohorts of patients with lung and other cancers that have DNA alterations in genes encoding the signatures, and this was accompanied by differences in survival. The recognition of genome and proteome alterations as related products of selective pressure driving the disease phenotype may be a general approach to uncover and group together cryptic, polygenic disease drivers.

Suggested Citation

  • Lei Li & Yuhong Wei & Christine To & Chang-Qi Zhu & Jiefei Tong & Nhu-An Pham & Paul Taylor & Vladimir Ignatchenko & Alex Ignatchenko & Wen Zhang & Dennis Wang & Naoki Yanagawa & Ming Li & Melania Pin, 2014. "Integrated Omic analysis of lung cancer reveals metabolism proteome signatures with prognostic impact," Nature Communications, Nature, vol. 5(1), pages 1-12, December.
  • Handle: RePEc:nat:natcom:v:5:y:2014:i:1:d:10.1038_ncomms6469
    DOI: 10.1038/ncomms6469
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    Cited by:

    1. Paul A Stewart & Katja Parapatics & Eric A Welsh & André C Müller & Haoyun Cao & Bin Fang & John M Koomen & Steven A Eschrich & Keiryn L Bennett & Eric B Haura, 2015. "A Pilot Proteogenomic Study with Data Integration Identifies MCT1 and GLUT1 as Prognostic Markers in Lung Adenocarcinoma," PLOS ONE, Public Library of Science, vol. 10(11), pages 1-18, November.
    2. Shideh Mirhadi & Shirley Tam & Quan Li & Nadeem Moghal & Nhu-An Pham & Jiefei Tong & Brian J. Golbourn & Jonathan R. Krieger & Paul Taylor & Ming Li & Jessica Weiss & Sebastiao N. Martins-Filho & Vibh, 2022. "Integrative analysis of non-small cell lung cancer patient-derived xenografts identifies distinct proteotypes associated with patient outcomes," Nature Communications, Nature, vol. 13(1), pages 1-17, December.

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