Highly accelerated dynamic contrast enhanced imaging

Dynamic contrast‐enhanced imaging provides unique physiological information, notably the endothelial permeability (Ktrans), and may improve the diagnosis and management of multiple pathologies. Current acquisition methods provide limited spatial‐temporal resolution and field‐of‐view, often preventing characterization of the entire pathology and precluding measurement of the arterial input function. We present a method for highly accelerated dynamic imaging and demonstrate its utility for dynamic contrast‐enhanced modeling.

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