This study evaluates the clinical accuracy of a deep learning (DL)-based tool to segment articular cartilage and menisci on 50 knee MRI exams; detect lesions and stage its severity. An experienced MSK radiologist assessed independently the images for the presence of any lesions on the different compartments and checked the accuracy of its segmentation, resulting in no disagreement with the segmentation output in 92.8% of the compartments and correspondence in the detection of lesions in 75.94% of them. The shown results assessed the clinical potential of this tool and present a step forward into structured MSK imaging reports.
This abstract and the presentation materials are available to members only; a login is required.