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Abstract #1136

gNET: gSlider Self-Supervised Neural Network for Accelerated Reconstruction of Super-resolution Diffusion MRI

Caique de Oliveira Kobayashi1,2,3, Yohan Jun1,4,5, Jaejin Cho1,4,5, Xiaoqing Wang4,5,6, Zihan Li7, Qiyuan Tian7, and Berkin Bilgic1,4,5
1Athinoula A. Martinos Center for Biomedical Imaging, Boston, MA, United States, 2Mechanical Engineering, Escola Politécnica da USP, São Paulo, Brazil, 3Technical University of Munich, Munich, Germany, 4Radiology, Harvard Medical School, Boston, MA, United States, 5Harvard/MIT Health Sciences and Technology, Cambridge, MA, United States, 6Boston Children’s Hospital, Boston, MA, United States, 7Department of Biomedical Engineering, Tsinghua University, Beijin, China

Synopsis

Keywords: Diffusion Reconstruction, Diffusion/other diffusion imaging techniques, gSlider, deep-learning, self-supervised, AI/ML Image Reconstruction

Motivation: gSlider utilizes radio-frequency encoding to acquire high and isotropic resolution brain diffusion-MRI with high SNR. However, this comes at the cost of prolonged acquisition time, which also increases the sensitivity to motion.

Goal(s): This work proposes gSlider Network (gNET) to accelerate gSlider from acquisitions with jointly subsampled RF- and q-space.

Approach: The self-supervised model was trained and tested on a 1mm3 resolution BUDA-gSlider dataset (Tacq = 32 min). FSL and the DIMOND self-supervised were used to estimate the diffusion parameters.

Results: gNET achieved an acceleration factor of R=2 and, when combined with DIMOND, reached a total R=4-fold (Tacq = 8 min).

Impact: gNET facilitates super-resolution dMRI by reducing the acquisition time by 4-fold with high fidelity. Its application may propel new discoveries in the neuroscientific field and the clinical translation of the gSlider framework.

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Keywords