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Abstract #4667

Deep learning image formation for fast and high-resolution brain MRI at 0.055 tesla

Vick Lau1,2, Christopher Man1,2, Yujiao Zhao1,2, Linfang Xiao1,2, Alex T.L. Leong1,2, and Ed X. Wu1,2
1Laboratory of Biomedical Imaging and Signal Processing, The University of Hong Kong, Hong Kong SAR, China, 2Department of Electrical and Electronic Engineering, The University of Hong Kong, Hong Kong SAR, China

Synopsis

Keywords: AI/ML Image Reconstruction, Low-Field MRI, Brain

Motivation: High, isotropic resolution (e.g., 1mm) is desirable for lesion detection and biomarkers extraction for cognitive disorders. However, ultra-low-field (ULF) MRI severely suffers from low spatial resolution and signal-to-noise ratio.

Goal(s): To investigate the potential of 3D deep learning in generating <=1mm isotropic resolution results from 2D partial Fourier-sampled, low-resolution noisy brain images acquired from our custom-made 0.055T scanner.

Approach: We advanced 3D deep learning partial Fourier reconstruction and super-resolution method (PF-SR) to achieve 3x/4x super-resolution factors.

Results: Preliminary results indicate possibility of PF-SR with higher super-resolution factors on reconstructing experimental ULF T1w/T2w data to 1/0.75mm3 with reduced artefacts and noise.

Impact: Enhancing image resolution and fidelity for fast ultra-low-field brain imaging at 0.055T using data-driven 3D deep learning approach to <=1mm3 resolution potentially enables image-guided therapies and valuable neuroimaging analysis for assessing aging and cognitive conditions.

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Keywords