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Abstract #1267

Deep Learning-Based Automatic Estimation of Volume and Fat Fraction in Abductor Muscles and their Associations with T1ρ and T2 in Hip Osteoarthritis Patients

Radhika Tibrewala1, Valentina Pedoia1, Carla Kinnunen1, Tijana Popovic1, Richard Souza1,2, and Sharmila Majumdar1

1Radiology and Biomedical Imaging, University of California San Francisco, San Francisco, CA, United States, 2Physical Therapy and Rehabilitation Science, University of California San Francisco, San Francisco, CA, United States

In Osteoarthritis, cartilage degeneration can be accompanied by muscle weakness. T and T2 relaxation times have been used to probe cartilage degeneration. This study aims to develop an automatic machine-learning based segmentation and quantification pipeline to estimate the volumes and fat fractions of the three hip abductor muscles and study their associations with T and T2 relaxation times. Our results showed fast, reliable segmentations the hip abductor muscles and voxel based correlations between T and fat fraction and T2 and volumes of the muscles.

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