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Abstract #4693

Image Super-Resolution Using Deep Convolutional Networks Improve the Image quality of Compressed Sensing MRI for Pancreatic DWI.

Daguang Wen1, Xiaoyong Zhang2, and Chunchao Xia3
1radiology department, west China hospital of Sichuan university, chengdu, China, 2Clinical Science, Philips Health Care,Chengdu,China, chengdu, China, 3radiology Department, west China hospital of Sichuan university, chengdu, China

Synopsis

Keywords: AI/ML Image Reconstruction, Pancreas, super-resolution convolutional neural network, high-resolution diffusion weighted imaging

Motivation: Image resolution achieved with compressed sensing was inferior compared to that obtained with sense technique.Current state of the art in Super-Resolution enables enhanced image resolution at a finer level of detail.

Goal(s): Objective is to enhance visualization of anatomical details in high-resolution pancreatic DWI by leveraging SR.

Approach: In our study, we employed integrating super-resolution convolutional neural network-compressed sensing (SR-CS) algorithm and integrating artiffcial intelligence-compressed sensing (AI-CS) algorithm for the reconstruction of pancreatic HR-DWI raw data.

Results: Images with SR-CS generally exhibit superior performance compared to traditional images in terms of tumor border delineation and reduction of background noise from peritoneum and spine.

Impact: Current utilization of AI is extensive, while application of SR in medical images remains rare. Utilization of SR allows for execution of MRI within a concise timeframe, while simultaneously considering the aspect of resolution.

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Keywords