Abstract Purpose Genomic assays are unavailable in Brazil’s public health system and are not covered in the private sector, limiting risk stratification in early stage HR+/HER2- breast cancer. Previous studies have developed machine learning tools to predict the 21-gene recurrence score directly from quantitative immunohistochemistry results and clinical factors. We evaluated this approach in a Brazilian cohort to determine the ability to predict prognosis and guide chemotherapy decisions in a resource-constrained setting without genomic testing. Patients and methods We retrospectively analyzed HR+/HER2- breast cancer patients (stage I-III, ≤3 positive nodes) treated at the Instituto Nacional de Cancer, in Brazil (INCA) from 2016 - 2018. Age, grade, histologic subtype, and quantitative ER, PR, and Ki-67 expression were used to predict the 21-gene recurrence score with the previously published machine learning tool. Patients were separated into low-risk group and a high-risk group using a predefined threshold that achieves 90% sensitivity for recurrence score 25. Disease free interval (DFI) and overall survival (OS) were estimated by Kaplan-Meier curves; hazard ratios were derived from Cox models to determine the prognostic difference of the low / high risk groups. Results We identified a sample of 299 cases for this analysis, with an average age of 59. 92 (31%) were PR negative, 212 (70%) had tumor sizer ≥ 2 cm, 163 (55%) had Ki-67 expression of 20% or higher, and 181 (61%) received chemotherapy. Median follow-up was 73 months (95% CI, 71-75). Using the 90% sensitivity threshold, 15.4% of patients were low risk. Recurrence rates were 2.2% in low-risk versus 19.4% in high-risk patients. Five-years DFI at 90% sensitivity was significantly better for low-risk versus high-risk (97.4% vs. 81.8%; long-rank p=0.0054). No significant differences in 5-year OS were observed. In multivariate analysis, stage III disease and Ki-67 ≥ 20% were also independent predictors of recurrence. Although chemotherapy was not associated with a reduction in disease free interval in either group, the excellent outcomes in the low risk cohort with (recurrence rate 6.3%) or without (recurrent rate 0%) chemotherapy, suggest this subgroup can safely forgo such treatment without genomic testing. Conclusion This machine learning prognostic tool demonstrated strong prognostic performance in a Brazilian cohort of HR+/HER2- early stage breast cancer patients, identifying a low-risk subgroup with excellent DFI and no apparent benefit from chemotherapy, and is available for use online (rsncdb.cri.uchicago.edu). These findings support its use for therapy de-escalation when genomic assays are unavailable. Further prospective studies are required to validate these findings. Citation Format: R. Moreira, D. Huo, A. Pearson, I. Small, O. Olopade, J. Bines, F. Howard. Prognostic Value of a Machine Learning Tool for Recurrence Risk Stratification in HR+/HER2- Early Breast Cancer: A Brazilian Cohort Analysis abstract. In: Proceedings of the San Antonio Breast Cancer Symposium 2025; 2025 Dec 9-12; San Antonio, TX. Philadelphia (PA): AACR; Clin Cancer Res 2026;32(4 Suppl):Abstract nr PS2-02-28.
Building similarity graph...
Analyzing shared references across papers
Loading...
R. Moreira
D. Huo
A. Pearson
Clinical Cancer Research
University of Chicago
University of Illinois Chicago
Instituto Nacional do Câncer
Building similarity graph...
Analyzing shared references across papers
Loading...
Moreira et al. (Tue,) studied this question.
www.synapsesocial.com/papers/6996a887ecb39a600b3ef570 — DOI: https://doi.org/10.1158/1557-3265.sabcs25-ps2-02-28
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: