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8X Accelerated Intervertebral Disc Compositional Evaluation with Recurrent Encoder-Decoder Deep Learning Network

AParsimoniousAssessment ofBreastDensityClasses fromQuantitative, AI-basedFGTVolumeSegmentations

Assessment of the potential of a Deep Learning Knee Segmentation and Anomaly Detection Tool in the clinical routine

Characterizing Knee Osteoarthritis Progression with Structural Phenotypes using MRI and Deep Learning

Deep-Learning Based Image Reconstruction for Lumbar Spine MRI at 3T: Clinical Feasibility

DeepPain: Uncovering Associations Between Data-Driven Learned qMRI Biomarkers and Chronic Pain

Denoising Meniscus T2* Mapping In College Basketball Players

Fully automatic detection and voxel-wise mapping of vertebral body Modic changes using deep convolutional neural networks

Learned knee cartilage and meniscus shape features are associated with osteoarthritis incidence

Author:Claudia Iriondo  Jinhee Lee  Sharmila Majumdar  Valentina Pedoia  

Session Type:Digital Poster  

Session Date:Wednesday, 19 May 2021  

Topic:Bone, Cartilage & Joint MRI  

Session Name:Cartilage I  

Program Number:2959  

Room Session:Concurrent 4  

Institution:University of California, San Francisco  

Less is more: zero-shot detection and transfer learning for facet arthropathy localization and classification on lumbar spine MRIs

State of the ART (Adversarial Robust Training) to Reconstruct Clinically Relevant Features in Accelerated Knee MRI

Swarm intelligence: a novel clinical strategy for improving imaging annotation accuracy, using wisdom of the crowds.

T1? relaxation times for voxel-wise characterization of longitudinal changes in hip cartilage biochemistry

Author:Koren Roach  Richard Souza  Sharmila Majumdar  Valentina Pedoia  

Session Type:Digital Poster  

Session Date:Wednesday, 19 May 2021  

Topic:Bone, Cartilage & Joint MRI  

Session Name:Cartilage I  

Program Number:2948  

Room Session:Concurrent 4  

Institution:UCSF  

Towards Clinical Translation of Fully Automatic Segmentation and 3D Biomarker Extraction of Lumbar Spine MRI