Literature DB >> 33677091

Bulk and single-cell transcriptome profiling reveal the metabolic heterogeneity in human breast cancers.

Tian-Jian Yu1, Ding Ma2, Ying-Ying Liu1, Yi Xiao2, Yue Gong2, Yi-Zhou Jiang2, Zhi-Ming Shao2, Xin Hu3, Gen-Hong Di4.   

Abstract

An emerging view regarding cancer metabolism is that it is heterogeneous and context-specific, but it remains to be elucidated in breast cancers. In this study, we characterized the energy-related metabolic features of breast cancers through integrative analyses of multiple datasets with genomics, transcriptomics, metabolomics, and single-cell transcriptome profiling. Energy-related metabolic signatures were used to stratify breast tumors into two prognostic clusters: cluster 1 exhibits high glycolytic activity and decreased survival rate, and the signatures of cluster 2 are enriched in fatty acid oxidation and glutaminolysis. The intertumoral metabolic heterogeneity was reflected by the clustering among three independent large cohorts, and the complexity was further verified at the metabolite level. In addition, we found that the metabolic status of malignant cells rather than that of nonmalignant cells is the major contributor at the single-cell resolution, and its interactions with factors derived from the tumor microenvironment are unanticipated. Notably, among various immune cells and their clusters with distinguishable metabolic features, those with immunosuppressive function presented higher metabolic activities. Collectively, we uncovered the heterogeneity in energy metabolism using a classifier with prognostic and therapeutic value. Single-cell transcriptome profiling provided novel metabolic insights that could ultimately tailor therapeutic strategies based on patient- or cell type-specific cancer metabolism.
Copyright © 2021 The American Society of Gene and Cell Therapy. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  breast cancer; metabolism; single-cell RNA sequencing

Mesh:

Substances:

Year:  2021        PMID: 33677091      PMCID: PMC8261089          DOI: 10.1016/j.ymthe.2021.03.003

Source DB:  PubMed          Journal:  Mol Ther        ISSN: 1525-0016            Impact factor:   12.910


  55 in total

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Authors:  S Y Lim; A E Yuzhalin; A N Gordon-Weeks; R J Muschel
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Journal:  J Immunother Cancer       Date:  2019-12-05       Impact factor: 13.751

9.  miRNA expression profiling of 51 human breast cancer cell lines reveals subtype and driver mutation-specific miRNAs.

Authors:  Muhammad Riaz; Marijn T M van Jaarsveld; Antoinette Hollestelle; Wendy J C Prager-van der Smissen; Anouk A J Heine; Antonius W M Boersma; Jingjing Liu; Jean Helmijr; Bahar Ozturk; Marcel Smid; Erik A Wiemer; John A Foekens; John W M Martens
Journal:  Breast Cancer Res       Date:  2013-04-19       Impact factor: 6.466

10.  A joint analysis of metabolomics and genetics of breast cancer.

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2.  Identification of UCP1 and UCP2 as Potential Prognostic Markers in Breast Cancer: A Study Based on Immunohistochemical Analysis and Bioinformatics.

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5.  Characterization of chromatin regulators identified prognosis and heterogeneity in hepatocellular carcinoma.

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6.  Investigation of the Role of PUFA Metabolism in Breast Cancer Using a Rank-Based Random Forest Algorithm.

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