Abstract

Background

Dysregulated Notch signalling contributes to breast cancer development and progression, but validated tools to measure the level of Notch signalling in breast cancer subtypes and in response to systemic therapy are largely lacking. A transcriptomic signature of Notch signalling would be warranted, for example to monitor the effects of future Notch-targeting therapies and to learn whether altered Notch signalling is an off-target effect of current breast cancer therapies. In this report, we have established such a classifier.

Methods

To generate the signature, we first identified Notch-regulated genes from six basal-like breast cancer cell lines subjected to elevated or reduced Notch signalling by culturing on immobilized Notch ligand Jagged1 or blockade of Notch by γ-secretase inhibitors, respectively. From this cadre of Notch-regulated genes, we developed candidate transcriptomic signatures that were trained on a breast cancer patient dataset (the TCGA-BRCA cohort) and a broader breast cancer cell line cohort and sought to validate in independent datasets.

Results

An optimal 20-gene transcriptomic signature was selected. We validated the signature on two independent patient datasets (METABRIC and Oslo2), and it showed an improved coherence score and tumour specificity compared with previously published signatures. Furthermore, the signature score was particularly high for basal-like breast cancer, indicating an enhanced level of Notch signalling in this subtype. The signature score was increased after neoadjuvant treatment in the PROMIX and BEAUTY patient cohorts, and a lower signature score generally correlated with better clinical outcome.

Conclusions

The 20-gene transcriptional signature will be a valuable tool to evaluate the response of future Notch-targeting therapies for breast cancer, to learn about potential effects on Notch signalling from conventional breast cancer therapies and to better stratify patients for therapy considerations.

Details

Title
Identification of a Notch transcriptomic signature for breast cancer
Author
Eike-Benjamin Braune; Geist, Felix; Tang, Xiaojia; Kalari, Krishna; Boughey, Judy; Wang, Liewei; Leon-Ferre, Roberto A; Antonino B. D’Assoro; Ingle, James N; Goetz, Matthew P; Kreis, Julian; Wang, Kang; Foukakis, Theodoros; Seshire, Anita; Wienke, Dirk; Urban Lendahl
Pages
1-22
Section
Research
Publication year
2024
Publication date
2024
Publisher
BioMed Central
ISSN
1465-5411
e-ISSN
1465542X
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2914282215
Copyright
© 2024. This work is licensed under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.