Abstract 4357
Background
Triple negative breast cancers (TNBC) are enriched with cells bearing stem-like features (CSC), which underlie cancer progression, thus targeting stemness could be an interesting treatment approach. In turn, the epigenetic machinery is crucial for the maintenance of the stemness phenotype. The BET family of epigenetic readers are emerging as novel targets for cancer therapy and have shown preclinical effect in breast cancer. In this work we evaluate the effect of the BET inhibitor (BETi) JQ1 on stemness in TNBC.
Methods
Transcriptomic, functional annotation and qPCR studies were performed on JQ1-exposed TNBC cells. Results were confirmed on spheroids and spheroid-derived tumours. Limiting dilution assays, matrigel invasion experiments, immunofluorescence staining, and flow cytometry studies were also performed to evaluate the effect of JQ1 on CSC features. For the outcome analysis, the online tool Kaplan-Meier Plotter and an integrated response database were used.
Results
JQ1 can modify the expression of stemness-related genes incultured TNBC cells. Among these changes, the CD44/CD24 and ALDH1A1 expression, both classical stemness markers, were diminished by JQ1. Using a validated spheroid model, to mimic the intrinsic characteristics of CSCs, we show that JQ1 decreased surface expression of CD44, inhibited self-renewal and invasion, and induced cells arrest in G0/G1, therefore altering the stemness phenotype in TNBC. Four of the identified stemness genes, GJA1, CD24, EPCAM, and SOX9, were found to be associated with worse patient outcome in TNBC. Furthermore, ABCG2 and RUNX2 predicted low response to chemotherapy in TNBC patients.
Conclusions
In this work we show how BETi modify the stemness landscape in TNBC. Thus, we propose a novel role for JQ1 as a stemness-targeting drug. Loss of the stem cell phenotype via JQ1 treatment could lead to less aggressive and more chemo-sensitive tumours, which would reflect in better patient prognosis.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
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