The assessment of neoadjuvant treatment's response is critical for selecting the most suitable therapeutic options for patients with breast cancer to reduce the need for invasive local therapies. Breast magnetic resonance imaging (MRI) is so far one of the most accurate approaches for assessing pathological complete response, although this is limited by the qualitative and subjective nature of radiologists' assessment, often making it insufficient for deciding whether to forgo additional locoregional therapy measures. To increase the accuracy and prediction of radiomic MRI with the aid of machine learning models and deep learning methods, as part of artificial intelligence, have been used to analyse the different subtypes of breast cancer and the specific changes observed before and after therapy. This review discusses recent advancements in radiomic MRI models for presurgical response assessment for patients with early breast cancer receiving preoperative treatments, with a focus on their implications for clinical practice.

Gaudio, M., Vatteroni, G., De Sanctis, R., Gerosa, R., Benvenuti, C., Canzian, J., et al. (2025). Incorporating radiomic MRI models for presurgical response assessment in patients with early breast cancer undergoing neoadjuvant systemic therapy: Collaborative insights from breast oncologists and radiologists. CRITICAL REVIEWS IN ONCOLOGY HEMATOLOGY, 210(June 2025) [10.1016/j.critrevonc.2025.104681].

Incorporating radiomic MRI models for presurgical response assessment in patients with early breast cancer undergoing neoadjuvant systemic therapy: Collaborative insights from breast oncologists and radiologists

Zambelli A.
2025

Abstract

The assessment of neoadjuvant treatment's response is critical for selecting the most suitable therapeutic options for patients with breast cancer to reduce the need for invasive local therapies. Breast magnetic resonance imaging (MRI) is so far one of the most accurate approaches for assessing pathological complete response, although this is limited by the qualitative and subjective nature of radiologists' assessment, often making it insufficient for deciding whether to forgo additional locoregional therapy measures. To increase the accuracy and prediction of radiomic MRI with the aid of machine learning models and deep learning methods, as part of artificial intelligence, have been used to analyse the different subtypes of breast cancer and the specific changes observed before and after therapy. This review discusses recent advancements in radiomic MRI models for presurgical response assessment for patients with early breast cancer receiving preoperative treatments, with a focus on their implications for clinical practice.
Articolo in rivista - Review Essay
Artificial intelligence; Early breast cancer; Pathological complete response; Presurgical response assessment;
English
7-mar-2025
2025
210
June 2025
104681
none
Gaudio, M., Vatteroni, G., De Sanctis, R., Gerosa, R., Benvenuti, C., Canzian, J., et al. (2025). Incorporating radiomic MRI models for presurgical response assessment in patients with early breast cancer undergoing neoadjuvant systemic therapy: Collaborative insights from breast oncologists and radiologists. CRITICAL REVIEWS IN ONCOLOGY HEMATOLOGY, 210(June 2025) [10.1016/j.critrevonc.2025.104681].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/560259
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