Artificial Intelligence-driven analysis of local recurrence factors in nipple-sparing mastectomy for invasive tumor patients

Authors

  • Antônio Luiz Frasson Santa Casa de Porto Alegre, Centro de Mastologia, Hospital Nora Teixeira, Rede Einstein, Centro de Oncologia – Porto Alegre (RS), Brazil.
  • Matheus Dalmolin Universidade Federal do Rio Grande do Norte, Laboratory of Machine Learning and Intelligent Instrumentation – Natal (RN), Brazil.
  • Isabela Miranda Pontifícia Universidade Católica do Rio Grande do Sul, Hospital São Lucas Breast Cancer Center, Porto Alegre, RS, Brazil.
  • Ana Beatriz Falcone Hospital Israelita Albert Einstein, Breast Cancer Group – São Paulo (SP), Brazil.
  • Luiza Kobe Pontifícia Universidade Católica do Rio Grande do Sul, Hospital São Lucas Breast Cancer Center, Porto Alegre, RS, Brazil
  • Carolina Malhone Hospital Israelita Albert Einstein, Breast Cancer Group – São Paulo (SP), Brazil.
  • Martina Lichtenfels Santa Casa de Porto Alegre, Centro de Mastologia, Hospital Nora Teixeira, Rede Einstein, Centro de Oncologia – Porto Alegre (RS), Brazil.

DOI:

https://doi.org/10.29289/259453942025V35S1089

Keywords:

breast neoplasms, machine learning, subcutaneous mastectomy

Abstract

Objective: To apply a machine learning algorithm to identify risk factors for local recurrence after nipple-sparing mastectomy (NSM) with immediate reconstruction in a Brazilian breast cancer cohort. Methods: A machine learning algorithm
was employed to classify features associated with local recurrence following NSM and immediate breast reconstruction
for invasive tumors. Specifically, the XGBoost algorithm, a tree-based machine learning technique, was implemented, and
the SHAP method was used to interpret the prediction outcomes of the model. Results: The dataset comprised clinicopathological characteristics, surgical details, and outcome data from 299 breast cancer patients who underwent NSM for
invasive tumor treatment. The mean follow-up of patients was 42.3 months (2001–2020). The XGBoost algorithm achieved
an average accuracy of 95% in classifying patients into those who experienced local recurrence and those who remained
disease-free. SHAP analysis identified the risk factors that most contributed to the prediction of local recurrence in the
algorithm, including large tumors, young age, negative progesterone receptor, not undergoing radiotherapy and chemotherapy, positive lymph nodes, and tumor high grade. Additional factors, such as pre-menopausal status, history of previous breast cancer, lobular and metaplastic tumor types, and adjuvant rather than neoadjuvant treatment, also influenced the model, though to a lesser extent. Conclusion: These preliminary findings enhance the understanding of the
mechanisms underlying local recurrence after NSM in patients with invasive tumors, demonstrating the potential of the
XGBoost algorithm to personalize breast cancer treatment.

Downloads

Download data is not yet available.

Downloads

Published

2026-02-24

How to Cite

Frasson, A. L., Dalmolin, M., Miranda, I., Falcone, A. B., Kobe, L., Malhone, C., & Lichtenfels, M. (2026). Artificial Intelligence-driven analysis of local recurrence factors in nipple-sparing mastectomy for invasive tumor patients. Mastology, 35(suppl.1). https://doi.org/10.29289/259453942025V35S1089

Issue

Section

E-poster