Time-Dependent DCE-MRI Radiomics to Predict Response to Neoadjuvant Therapy in Breast Cancer: A Multicenter Study with External Validation
Giulia Vatteroni, Riccardo Levi, Paola Nardi, Giulia Pruneddu, Elisa Salpietro, Federica Fici, Cinzia Monti, Rubina Manuela Trimboli, Daniela Bernardi

TL;DR
This study shows that using time-dependent MRI features can accurately predict how breast cancer patients will respond to neoadjuvant therapy, especially in identifying non-responders.
Contribution
The study introduces time-dependent radiomic features from DCE-MRI to improve prediction of neoadjuvant therapy response in breast cancer.
Findings
Time-dependent texture features were significantly associated with non-response to therapy.
The model achieved high AUC values in predicting pathological responses, especially for non-responders.
The approach performed well in both internal and external validation cohorts.
Abstract
Background: The accurate prediction of response to neoadjuvant therapy (NAT) is crucial for optimizing breast cancer management. Conventional breast Dynamic Contrast-Enhanced Magnetic Resonance Imaging (DCE-MRI) radiomics typically relies on single post-contrast phases and may not fully capture temporal enhancement patterns related to tumor heterogeneity. This study evaluated a machine learning model based on time-dependent radiomic features extracted from pre-treatment DCE-MRI for predicting NAT response in breast cancer patients. Methods: Breast DCE-MRI examinations of women scheduled for NAT, acquired on 1.5 T scanners from three different vendors, were retrospectively collected from two centers. Tumors were automatically segmented on the third post-contrast DCE image using a 3D nnUNet model trained on 30 lesions. All DCE phases were registered to the reference image, and radiomic…
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Taxonomy
TopicsMRI in cancer diagnosis · Radiomics and Machine Learning in Medical Imaging · Breast Cancer Treatment Studies
