Abstract

Simple SummaryBreast cancer is the most commonly diagnosed cancer in women today and accounts for thousands of cancer-related deaths each year. While some breast cancer subtypes can be easily diagnosed and targeted for therapy, triple-negative breast cancer, which lacks receptor expression, is the most challenging to diagnose and treat. In this study, we use multiple RNA sequencing data to look specifically at long non-coding RNA (lncRNA) expression portraits at the transcript level and to identify lncRNA-based biomarkers associated with each breast cancer subtype. Receiver operating characteristic (ROC) analysis was used to validate their diagnostic potential, which was validated in two independent cohorts. Several lncRNA transcripts were found to be enriched in TNBC across all validation cohorts. Binary regression analysis identified a four lncRNA transcript signature with the highest diagnostic power for TNBC as potential novel biomarkers for diagnostic and therapeutic intervention. Interestingly, several of the identified lncRNAs were shown to have prognostic potential in TNBC.Breast cancer remains the world’s most prevalent cancer, responsible for around 685,000 deaths globally despite international research efforts and advances in clinical management. While estrogen receptor positive (ER+), progesterone receptor positive (PR+), and human epidermal growth factor receptor positive (HER2+) subtypes are easily classified and can be targeted, there remains no direct diagnostic test for triple-negative breast cancer (TNBC), except for the lack of receptors expression. The identification of long non-coding RNAs (lncRNAs) and the roles they play in cancer progression has recently proven to be beneficial. In the current study, we utilize RNA sequencing data to identify lncRNA-based biomarkers associated with TNBC, ER+ subtypes, and normal breast tissue. The Marker Finder algorithm identified the lncRNA transcript panel most associated with each molecular subtype and the receiver operating characteristic (ROC) analysis was used to validate the diagnostic potential (area under the curve (AUC) of ≥8.0 and p value < 0.0001). Focusing on TNBC, findings from the discovery cohort were validated in an additional two cohorts, identifying 13 common lncRNA transcripts enriched in TNBC. Binary regression analysis identified a four lncRNA transcript signature (ENST00000425820.1, ENST00000448208.5, ENST00000521666.1, and ENST00000650510.1) with the highest diagnostic power for TNBC. The ENST00000671612.1 lncRNA transcript correlated with worse refractory free survival (RFS). Our data provides a step towards finding a novel diagnostic lncRNA-based panel for TNBC with potential therapeutic implications.

Highlights

  • Despite the global drive in breast cancer (BC) research and the remarkable advances in clinical management over recent years, released figures and estimates by the AmericanCancer Society for BC in the United States (US) for 2021 show the need for continued efforts in this field

  • Raw RNA sequencing data from 42 triple-negative breast cancer (TNBC), 42 ER+, and 56 normal breast tissue samples were retrieved from the sequence read archive (SRA) database under accession no

  • The marker finder algorithm was used to identify the sets of long non-coding RNAs (lncRNAs) transcripts distinctive of each molecular subtype (TNBC, ER+, and normal)

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Summary

Introduction

Despite the global drive in breast cancer (BC) research and the remarkable advances in clinical management over recent years, released figures and estimates by the AmericanCancer Society for BC in the United States (US) for 2021 show the need for continued efforts in this field. The molecular classification of BC has been widely studied and commonly grouped into four categories based on hormone receptor expression: estrogen receptor positive (ER+); progesterone receptor positive (PR+); human epidermal growth factor receptor positive (HER2+); and triple-negative breast cancer (TNBC), which is characterized by the lack of expression of any of the mentioned receptors This lack of expression in TNBC has remarkable implications on its diagnosis and treatment as it eliminates effective therapeutic targets (i.e., PR, ER, and HER2), causing TNBC to be the most aggressive BC subtype, highly metastatic and with overall poor survival rates in around 15% of all BC cases [3]. TNBC patients do not benefit from endocrine or HER2targeted therapies; chemotherapy and surgery, which can be highly invasive, remain the main treatment modality for those patients [6]

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