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Abstract Background The cutoff of 1% positive cells to define estrogen receptor (ER) negativity by immunohistochemistry (IHC) in breast cancer (BC) is debated. We explored the tumor immune microenvironment and gene-expression profile of patients with early-stage HER2-negative ER-low (ER 1%-9%) BC, comparing them to ER-negative (ER 1%) and ER-intermediate (ER 10%-50%) tumors. Methods Among 921 patients with early-stage I-III, ER ≤50%, HER2-negative BCs, tumors were classified as ER-negative (n = 712), ER-low (n = 128), or ER-intermediate (n = 81). Tumor-infiltrating lymphocytes (TILs) were evaluated. CD8+, FOXP3+ cells, and PD-L1 status were assessed by IHC and quantified by digital pathology. We analyzed 776 BC-related genes in 116 samples. All tests were 2-sided at a .05 significance level. Results ER-low and ER-negative tumors exhibited similar median TILs, statistically significantly higher than ER-intermediate tumors. CD8/FOXP3 ratio and PD-L1 positivity rates were comparable between ER-low and ER-negative groups. These groups showed similar enrichment in basal-like intrinsic subtypes and comparable expression of immune-related genes. ER-low and ER-intermediate tumors showed significant transcriptomic differences. High TILs (≥30%) were associated with improved relapse-free survival (RFS) in ER-low (5-year RFS 78.6% vs 66.2%, log-rank P = .033, hazard ratio HR 0.37 95% CI = 0.15 to 0.96) and ER-negative patients (5-year RFS 85.2% vs 69.8%, log-rank P .001, HR 0.41 95% CI = 0.27 to 0.60). Conclusions ER-low and ER-negative tumors are similar biological and molecular entities, supporting their comparable clinical outcomes and treatment responses, including to immunotherapy. Our findings contribute to the growing evidence calling for a reevaluation of ER-positive BC classification and management, aligning ER-low and ER-negative tumors more closely.
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Massa et al. (Wed,) studied this question.
www.synapsesocial.com/papers/68e5e3dfb6db643587577f06 — DOI: https://doi.org/10.1093/jnci/djae178
Davide Massa
Claudio Vernieri
Lorenzo Nicolè
JNCI Journal of the National Cancer Institute
Inserm
University of Milan
University of Padua
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