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Abstract #2271

Application Research of AI-assisted Compressed Sensing Technology in MRI Scanning of the Knee Joint: 3D-MRI Perspective

Ming Ni1, Yuxin Yang2, Xiaoyi Wen3, Qiang Zhao1, and Huishu Yuan1
1Radiology, Peking University Third Hospital, BeiJing, China, 2United Imaging Research Institute of Intelligent Imaging, BeiJing, China, 3School of Biomedical Engineering, Capital Medical University, BeiJing, China

Synopsis

Keywords: Whole Joint, Machine Learning/Artificial Intelligence

Motivation: The broad clinical application of knee 3D-MRI has been constrained by scanning time.

Goal(s): To investigate the potential of AI-assisted compressed sensing (ACS) in knee MRI to optimize the scanning process.

Approach: 3D-ACS, 3D compressed sensing (CS), and 2D parallel acquisition technology (PAT) scans were performed. The 3D-ACS images underwent 3.5 mm/2.0 mm multiplanar reconstruction (MPR); radiologists evaluated the quality of images and diagnosed diseases.

Results: 3D-ACS provided poorer bone structure visualization, improved cartilage visualization, and less satisfactory axial images with 3.5 mm/2.0 mm MPR than 2D-PAT. High levels of diagnostic agreement and accuracy were observed across all diagnoses.

Impact: 3D-ACS provided poorer bone structure visualization, improved cartilage visualization, and less satisfactory axial images with 3.5 mm/2.0 mm MPR than 2D-PAT. High levels of diagnostic agreement and accuracy were observed across all diagnoses.

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