Multistate Gene Cluster Switches Determine the Adaptive Mitochondrial and Metabolic Landscape of Breast Cancer

Author:

Menegollo Michela1ORCID,Bentham Robert B.2ORCID,Henriques Tiago1ORCID,Ng Seow Q.2ORCID,Ren Ziyu2ORCID,Esculier Clarinde2ORCID,Agarwal Sia2ORCID,Tong Emily T.Y.2ORCID,Lo Clement2ORCID,Ilangovan Sanjana2ORCID,Szabadkai Zorka2ORCID,Suman Matteo1ORCID,Patani Neill23ORCID,Ghanate Avinash3ORCID,Bryson Kevin4ORCID,Stein Robert C.56ORCID,Yuneva Mariia3ORCID,Szabadkai Gyorgy123ORCID

Affiliation:

1. Department of Biomedical Sciences, University of Padova, Padova, Italy. 1

2. Department of Cell and Developmental Biology, Consortium for Mitochondrial Research, University College London, London, United Kingdom. 2

3. The Francis Crick Institute, London, United Kingdom. 6

4. Department of Computer Sciences, University College London, London, United Kingdom. 3

5. Department of Oncology, University College London Hospitals, London, United Kingdom. 4

6. UCL Cancer Institute, University College London, London, United Kingdom. 5

Abstract

Abstract Adaptive metabolic switches are proposed to underlie conversions between cellular states during normal development as well as in cancer evolution. Metabolic adaptations represent important therapeutic targets in tumors, highlighting the need to characterize the full spectrum, characteristics, and regulation of the metabolic switches. To investigate the hypothesis that metabolic switches associated with specific metabolic states can be recognized by locating large alternating gene expression patterns, we developed a method to identify interspersed gene sets by massive correlated biclustering and to predict their metabolic wiring. Testing the method on breast cancer transcriptome datasets revealed a series of gene sets with switch-like behavior that could be used to predict mitochondrial content, metabolic activity, and central carbon flux in tumors. The predictions were experimentally validated by bioenergetic profiling and metabolic flux analysis of 13C-labeled substrates. The metabolic switch positions also distinguished between cellular states, correlating with tumor pathology, prognosis, and chemosensitivity. The method is applicable to any large and heterogeneous transcriptome dataset to discover metabolic and associated pathophysiological states. Significance: A method for identifying the transcriptomic signatures of metabolic switches underlying divergent routes of cellular transformation stratifies breast cancer into metabolic subtypes, predicting their biology, architecture, and clinical outcome.

Funder

Fondazione AIRC per la Ricerca sul Cancro ETS

Biotechnology and Biological Sciences Research Council

Cancer Research UK

Francis Crick Institute

British Heart Foundation

UCLH Biomedical Research Centre

Fondazione AIRC per la ricerca sul cancro ETS

Wellcome Trust

Publisher

American Association for Cancer Research (AACR)

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