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Integrating machine learning and clinicopathological data to stratify survival risk in young women with localized breast cancer

Bin Xu et al · Frontiers Media S.A · 2026

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BackgroundYoung women with localized breast cancer represent a clinically distinct population with heterogeneous outcomes, yet age-specific prognostic models remain limited. Conventional risk stratification tools derived from mixed-age cohorts may fail to capture the complex interactions between tumor biology and treatment response in this group.MethodsWe conducted a single-center retrospective cohort study including 1,060 women aged ≤40 years diagnosed with stage I–III breast cancer between 2000 and 2023. Overall survival (OS) was analyzed using Kaplan–Meier estimates and multivariable Cox regression. To enable data-driven risk prediction beyond linear assumptions, a machine learning–based Random Survival Forest (RSF) model was developed to identify key prognostic features, quantify variable importance, and stratify patients into distinct risk groups.ResultsAmong 1,060 eligible patients, 110 deaths (10.4%) occurred during a median follow-up of 79.8 months. Invasive pathological subtype (hazard ratio [HR] = 5.23, 95% confidence interval [CI] 1.18–23.22; p = 0.030), nipple invasion (HR = 3.95, 95% CI 2.14–7.27; p < 0.001), and advanced T stage (T2-4 vs. Tis/T1; HR = 1.60, 95% CI 1.03–2.48; p = 0.036) were independently associated with worse OS. By contrast, receipt of endocrine therapy (HR = 0.54, 95% CI 0.36–0.80; p = 0.002) and radiotherapy (HR = 0.53, 95% CI 0.32–0.86; p = 0.010) were associated with better OS. Notably, high Ki67 expression (≥35%; HR = 0.39, 95% CI 0.21–0.71; p = 0.002) was associated with improved OS. The RSF model confirmed these predictors, ranked radiotherapy as the most influential variable, and provided effective risk stratification (C-index = 0.723).ConclusionBy integrating clinicopathological variables with machine learning–based survival modeling, this study identified key prognostic factors associated with OS in young women with localized breast cancer. The findings highlight the prognostic importance of treatment-related factors and reveal an unexpected association between high Ki-67 expression and better survival in this population. These data-driven risk stratification approaches may contribute to more personalized prognostic assessment and warrant validation in prospective multicenter studies.

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APA 7

al, B. X. E. (2026). Integrating machine learning and clinicopathological data to stratify survival risk in young women with localized breast cancer. https://doi.org/10.3389/fmed.2026.1793790

MLA

al, Bin Xu et. "Integrating machine learning and clinicopathological data to stratify survival risk in young women with localized breast cancer." 2026. https://doi.org/10.3389/fmed.2026.1793790.

Chicago

al, Bin Xu et. 2026. "Integrating machine learning and clinicopathological data to stratify survival risk in young women with localized breast cancer.". https://doi.org/10.3389/fmed.2026.1793790.

Harvard

al, B. X. E. 2026, Integrating machine learning and clinicopathological data to stratify survival risk in young women with localized breast cancer, Frontiers Media S.A, available at: https://doi.org/10.3389/fmed.2026.1793790 [Accessed 29 Jun. 2026].

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Título
Integrating machine learning and clinicopathological data to stratify survival risk in young women with localized breast cancer
Autor / colaboradores
Bin Xu et al
Editorial
Frontiers Media S.A
Año de publicación
2026
ISSN
2296-858X
ISSN
2296-858X
Idioma
eng

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