Adapted Foundation Models for Breast MRI Triaging in Contrast-Enhanced and Non-Contrast Enhanced Protocols
Tri-Thien Nguyen, Lorenz A. Kapsner, Tobias Hepp, Shirin Heidarikahkesh, Hannes Schreiter, Luise Brock, Dominika Skwierawska, Dominique Hadler, Julian Hossbach, Evelyn Wenkel, Sabine Ohlmeyer, Frederik B. Laun, Andrzej Liebert, Andreas Maier, Michael Uder

TL;DR
This study evaluates a deep learning model based on DINOv2 for pre-screening breast MRI scans to efficiently identify cases without significant findings, aiming to reduce radiologist workload.
Contribution
The paper introduces a novel application of adapted foundation models for breast MRI triaging across multiple protocols, demonstrating promising performance in a large retrospective dataset.
Findings
Achieved an AUC of 0.77 for triaging BI-RADS >=4 cases.
At 97.5% sensitivity, specificity was 19% for contrast-enhanced MRI.
Model attention maps were rated good or moderate in 88% of cases.
Abstract
Background: Magnetic resonance imaging (MRI) has high sensitivity for breast cancer detection, but interpretation is time-consuming. Artificial intelligence may aid in pre-screening. Purpose: To evaluate the DINOv2-based Medical Slice Transformer (MST) for ruling out significant findings (Breast Imaging Reporting and Data System [BI-RADS] >=4) in contrast-enhanced and non-contrast-enhanced abbreviated breast MRI. Materials and Methods: This institutional review board approved retrospective study included 1,847 single-breast MRI examinations (377 BI-RADS >=4) from an in-house dataset and 924 from an external validation dataset (Duke). Four abbreviated protocols were tested: T1-weighted early subtraction (T1sub), diffusion-weighted imaging with b=1500 s/mm2 (DWI1500), DWI1500+T2-weighted (T2w), and T1sub+T2w. Performance was assessed at 90%, 95%, and 97.5% sensitivity using five-fold…
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Taxonomy
TopicsMRI in cancer diagnosis · Radiomics and Machine Learning in Medical Imaging · Digital Radiography and Breast Imaging
