Abstract

Background: The aim of this paper was to identify an immunotherapy-sensitive subtype for estrogen receptor-positive breast cancer (ER+ BC) patients by exploring the relationship between cancer genetic programs and antitumor immunity via multidimensional genome-scale analyses.Methods: Multidimensional ER+ BC high-throughput data (raw count data) including gene expression profiles, copy number variation (CNV) data, single-nucleotide polymorphism mutation data, and relevant clinical information were downloaded from The Cancer Genome Atlas to explore an immune subtype sensitive to immunotherapy using the Consensus Cluster Plus algorithm based on multidimensional genome-scale analyses. One ArrayExpress dataset and eight Gene Expression Omnibus (GEO) datasets (GEO-meta dataset) as well as the Molecular Taxonomy of Breast Cancer International Consortium dataset were used as validation sets to confirm the findings regarding the immune profiles, mutational features, and survival outcomes of the three identified immune subtypes. Moreover, the development trajectory of ER+ BC patients from the single-cell resolution level was also explored.Results: Through comprehensive bioinformatics analysis, three immune subtypes of ER+ BC (C1, C2, and C3, designated the immune suppressive, activation, and neutral subtypes, respectively) were identified. C2 was associated with up-regulated immune cell signatures and immune checkpoint genes. Additionally, five tumor-related pathways (transforming growth factor, epithelial–mesenchymal transition, extracellular matrix, interferon-γ, and WNT signaling) tended to be more activated in C2 than in C1 and C3. Moreover, C2 was associated with a lower tumor mutation burden, a decreased neoantigen load, and fewer CNVs. Drug sensitivity analysis further showed that C2 may be more sensitive to immunosuppressive agents.Conclusion: C2 (the immune activation subtype) may be sensitive to immunotherapy, which provides new insights into effective treatment approaches for ER+ BC.

Highlights

  • Breast cancer (BC) is the most common cause of cancerrelated death among females worldwide (Torre et al, 2017)

  • Multidimensional estrogen receptor-positive breast cancer (ER+ BC) high-throughput data including gene expression profiles, copy number variation (CNV) data, single-nucleotide polymorphism mutation data, and relevant clinical information were downloaded from The Cancer Genome Atlas to explore an immune subtype sensitive to immunotherapy using the Consensus Cluster Plus algorithm based on multidimensional genomescale analyses

  • We excluded samples based on the following criteria: (1) incomplete overall survival (OS) or recurrence-free survival (RFS) data; (2) no ER+ BC samples; (3) para-cancer tissue samples of BC patients; and (4) datasets containing less than 40 samples

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Summary

Introduction

Breast cancer (BC) is the most common cause of cancerrelated death among females worldwide (Torre et al, 2017). Estrogen receptor-positive (ER+) BC is the most common subtype of BC, accounting for approximately 75% of all BC cases (Burstein et al, 2010). The current treatments for ER+ BC include surgery, chemotherapy, and molecular targeted therapy (Bayraktar et al, 2019). Treatment has been hindered by resistance in ER+ BC, which is related to the molecular heterogeneity and complex biological processes in these cases (Koren and Bentires-Alj, 2015). The aim of this paper was to identify an immunotherapy-sensitive subtype for estrogen receptor-positive breast cancer (ER+ BC) patients by exploring the relationship between cancer genetic programs and antitumor immunity via multidimensional genome-scale analyses

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