Triple-negative breast cancer (TNBC) is an aggressive subtype with poor prognosis and limited treatments, for which accurate pre-operative prediction is essential for guiding therapy. While multiparametric MRI is highly sensitive, its use in multi-center AI workflows is hampered by inter-scanner variability. This study explores Federated Learning with radiomic features from DCE-MRI, and assesses the role of image standardization in improving TNBC classification performance. Data were split across 5 virtual clients to simulate hospitals, each training locally within a federated MLP framework. Results show that image standardization markedly improves TNBC classification, highlighting the role of preprocessing in federated AI pipelines.
De Nunzio, G., Conte, L., Taormina, V., Crisci, A., Donatiello, G.V., Rizzo, R., et al. (2026). Federated Learning for Pre-operative Detection of Triple-Negative Breast Cancer from Multiparametric MRI: Preliminary Results. In Product-Focused Software Process Improvement Industry, Doctoral-Symposium, Tutorial, and Workshop (pp. 299-305). Springer Science and Business Media Deutschland GmbH [10.1007/978-3-032-12092-2_25].
Federated Learning for Pre-operative Detection of Triple-Negative Breast Cancer from Multiparametric MRI: Preliminary Results
Conte L.;Taormina V.;Cascio D.
2026-11-18
Abstract
Triple-negative breast cancer (TNBC) is an aggressive subtype with poor prognosis and limited treatments, for which accurate pre-operative prediction is essential for guiding therapy. While multiparametric MRI is highly sensitive, its use in multi-center AI workflows is hampered by inter-scanner variability. This study explores Federated Learning with radiomic features from DCE-MRI, and assesses the role of image standardization in improving TNBC classification performance. Data were split across 5 virtual clients to simulate hospitals, each training locally within a federated MLP framework. Results show that image standardization markedly improves TNBC classification, highlighting the role of preprocessing in federated AI pipelines.| File | Dimensione | Formato | |
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