4.7 Article

Cell subpopulation deconvolution reveals breast cancer heterogeneity based on DNA methylation signature

期刊

BRIEFINGS IN BIOINFORMATICS
卷 18, 期 3, 页码 426-440

出版社

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbw028

关键词

breast cancer; cell line; deconvolution; DNA methylation; heterogeneity

资金

  1. National Natural Science Foundation of China [31371334, 61403112, 81573021, 61402139]
  2. Natural Science Foundation of Heilongjiang Province [ZD2015003]
  3. Innovation and Technology special Fund for excellent academic leader of Harbin [2015RAXXJ052, 2015RAXYJ051]
  4. Innovation Research Fund for Graduate Students of Harbin Medical University [YJSCX2014-23HYD]

向作者/读者索取更多资源

Tumour heterogeneity describes the coexistence of divergent tumour cell clones within tumours, which is often caused by underlying epigenetic changes. DNA methylation is commonly regarded as a significant regulator that differs across cells and tissues. In this study, we comprehensively reviewed research progress on estimating of tumour heterogeneity. Bioinformatics-based analysis of DNA methylation has revealed the evolutionary relationships between breast cancer cell lines and tissues. Further analysis of the DNA methylation profiles in 33 breast cancer-related cell lines identified cell line-specific methylation patterns. Next, we reviewed the computational methods in inferring clonal evolution of tumours from different perspectives and then proposed a deconvolution strategy for modelling cell subclonal populations dynamics in breast cancer tissues based on DNA methylation. Further analysis of simulated cancer tissues and real cell lines revealed that this approach exhibits satisfactory performance and relative stability in estimating the composition and proportions of cellular subpopulations. The application of this strategy to breast cancer individuals of the Cancer Genome Atlas's identified different cellular subpopulations with distinct molecular phenotypes. Moreover, the current and potential future applications of this deconvolution strategy to clinical breast cancer research are discussed, and emphasis was placed on the DNA methylation-based recognition of intra-tumour heterogeneity. The wide use of these methods for estimating heterogeneity to further clinical cohorts will improve our understanding of neoplastic progression and the design of therapeutic interventions for treating breast cancer and other malignancies.

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