The T1ρ imaging is a promising biomarker for early diagnosis of osteoarthritis, but the application of the method is hindered by its long scan time. In this work, a novel compressed sensing algorithm based on kernel-based low-rank was proposed. The algorithm was evaluated with numerical simulation and volunteer scans, where the volunteers with and without osteoarthritis was scanned with prospective downsampling to evaluate the algorithm performance regarding the presence of pathology.
This abstract and the presentation materials are available to members only; a login is required.