
Healthcare AI
Meet NeuroVFM: A New Neuroimaging Foundation Model Trained With Vol-JEPA on Uncurated Clinical MRI and CT Volumes
Asif RazzaqMarkTechPost
AI Summary
NeuroVFM is a foundation model from the University of Michigan trained on 5.24M clinical MRI and CT volumes using Vol-JEPA, an extension of I-JEPA and V-JEPA for volumetric medical imaging. The model learns to understand brain anatomy and pathology without requiring radiology report labels, representing a generalist approach to neuroimaging AI.
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