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Secondary Transcriptomic Analysis of Triple-Negative Breast Cancer Reveals Reliable Universal and Subtype-Specific Mechanistic Markers.

Authors :
Rapier-Sharman, Naomi
Spendlove, Mauri Dobbs
Poulsen, Jenna Birchall
Appel, Amanda E.
Wiscovitch-Russo, Rosana
Vashee, Sanjay
Gonzalez-Juarbe, Norberto
Pickett, Brett E.
Source :
Cancers; Oct2024, Vol. 16 Issue 19, p3379, 24p
Publication Year :
2024

Abstract

Simple Summary: Breast cancer is diagnosed in 2.3 million women each year and kills 685,000 (~30% of patients) worldwide. The most dangerous breast cancer is triple-negative breast cancer (TNBC). TNBC is very diverse, with 12 underlying subtypes. This great deal of patient diversity, along with the lack of broad-application targetable mechanistic markers (such as ER, PR, and HER2, which are present in other breast cancer subtypes but missing in TNBC), gives TNBC patients the worst outcomes of any breast cancer type. We aim to remedy this by exploring the molecular mechanisms across TNBC samples and subtypes. Molecular mechanisms are potentially targetable for treatment. We explore these options as part of our RNA-sequencing analysis. Our novel findings include highly accurate mechanistic markers identified using machine learning methods, including CIDEC (97.1% accuracy alone). Additionally, we found TNBC subtype-differentiating mechanistic markers, including PDE3B, CFD, IFNG, and ADM, which are targets with known therapeutics and potential for drug repurposing. Background/Objectives: Breast cancer is diagnosed in 2.3 million women each year and kills 685,000 (~30% of patients) worldwide. The prognosis for many breast cancer subtypes has improved due to treatments targeting the estrogen receptor (ER), progesterone receptor (PR), and human epidermal growth factor receptor 2 (HER2). In contrast, patients with triple-negative breast cancer (TNBC) tumors, which lack all three commonly targeted membrane markers, more frequently relapse and have lower survival rates due to a lack of tumor-selective TNBC treatments. We aim to investigate TNBC mechanistic markers that could be targeted for treatment. Methods: We performed a secondary TNBC analysis of 196 samples across 10 publicly available bulk RNA-sequencing studies to better understand the molecular mechanism(s) of disease and predict robust mechanistic markers that could be used to improve the mechanistic understanding of and diagnostic capabilities for TNBC. Results: Our analysis identified ~12,500 significant differentially expressed genes (FDR-adjusted p-value < 0.05), including KIF14 and ELMOD3, and two significantly modulated pathways. Additionally, our novel findings include highly accurate mechanistic markers identified using machine learning methods, including CIDEC (97.1% accuracy alone), CD300LG, ASPM, and RGS1 (98.9% combined accuracy), as well as TNBC subtype-differentiating mechanistic markers, including the targets PDE3B, CFD, IFNG, and ADM, which have associated therapeutics that can potentially be repurposed to improve treatment options. We then experimentally and computationally validated a subset of these findings. Conclusions: The results of our analyses can be used to better understand the mechanism(s) of disease and contribute to the development of improved diagnostics and/or treatments for TNBC. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20726694
Volume :
16
Issue :
19
Database :
Complementary Index
Journal :
Cancers
Publication Type :
Academic Journal
Accession number :
180274276
Full Text :
https://doi.org/10.3390/cancers16193379