Breast Cancer Neoadjuvant Chemotherapy Treatment Response Prediction Using Aligned Longitudinal MRI and Clinical Data
Rahul Ravi, Ruizhe Li, Tarek Abdelfatah, Stephen Chan, Xin Chen

TL;DR
This study develops machine learning models using aligned longitudinal MRI and clinical data to predict breast cancer treatment response, demonstrating improved accuracy with image registration and radiomics features.
Contribution
The paper introduces an image registration-based feature extraction framework that enhances predictive modeling of chemotherapy response in breast cancer.
Findings
Image registration improves predictive model performance.
Radiomics features outperform deep learning features in accuracy.
Models achieved up to 88% AUC in PCR prediction.
Abstract
Aim: This study investigates treatment response prediction to neoadjuvant chemotherapy (NACT) in breast cancer patients, using longitudinal contrast-enhanced magnetic resonance images (CE-MRI) and clinical data. The goal is to develop machine learning (ML) models to predict pathologic complete response (PCR binary classification) and 5-year relapse-free survival status (RFS binary classification). Method: The proposed framework includes tumour segmentation, image registration, feature extraction, and predictive modelling. Using the image registration method, MRI image features can be extracted and compared from the original tumour site at different time points, therefore monitoring the intratumor changes during NACT process. Four feature extractors, including one radiomics and three deep learning-based (MedicalNet, Segformer3D, SAM-Med3D) were implemented and compared. In combination…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Breast Cancer Treatment Studies · MRI in cancer diagnosis
