Radiology Advances Podcast | RSNA
This episode discusses a study from UCLA in the United States that used federated learning to train a deep learning model for automatic segmentation and quantification of visceral and subcutaneous abdominal fat in children using free-breathing 3D MRI. By leveraging a larger adult dataset alongside a small pediatric cohort, the model achieved strong agreement with expert manual segmentation in under three seconds per patient. Cross-cohort federated learning for pediatric abdominal adipose tissue segmentation and quantification using free-breathing 3D MRI. Zhang et al. Radiology Advances, 2026, 3, umag002 [https://doi.org/10.1093/radadv/umag002]
24 episodes
Comments
0Be the first to comment
Sign up now and become a member of the Radiology Advances Podcast | RSNA community!