JUST‐Net: Jointly unrolled cross‐domain optimization based spatio‐temporal reconstruction network for accelerated 3D myelin water imaging

Author:

Lee Jae‐Hun12ORCID,Kim Jae‐Yoon1,Ryu Kanghyun2,Al‐masni Mohammed A.3,Kim Tae Hyung4,Han Dongyeob5,Kim Hyun Gi6,Kim Dong‐Hyun1

Affiliation:

1. Department of Electrical and Electronic Engineering Yonsei University Seoul Republic of Korea

2. Artificial Intelligence and Robotics Institute Korea Institute of Science and Technology Seoul Republic of Korea

3. Department of Artificial Intelligence Sejong University Seoul Republic of Korea

4. Department of Computer Engineering Hongik University Seoul Republic of Korea

5. Siemens Healthineers Ltd Seoul Republic of Korea

6. Department of Radiology, Eunpyeong St. Mary's Hospital, College of Medicine The Catholic University of Korea Seoul Republic of Korea

Abstract

AbstractPurposeWe introduced a novel reconstruction network, jointly unrolled cross‐domain optimization‐based spatio‐temporal reconstruction network (JUST‐Net), aimed at accelerating 3D multi‐echo gradient‐echo (mGRE) data acquisition and improving the quality of resulting myelin water imaging (MWI) maps.MethodAn unrolled cross‐domain spatio‐temporal reconstruction network was designed. The main idea is to combine frequency and spatio‐temporal image feature representations and to sequentially implement convolution layers in both domains. The k‐space subnetwork utilizes shared information from adjacent frames, whereas the image subnetwork applies separate convolutions in both spatial and temporal dimensions. The proposed reconstruction network was evaluated for both retrospectively and prospectively accelerated acquisition. Furthermore, it was assessed in simulation studies and real‐world cases with k‐space corruptions to evaluate its potential for motion artifact reduction.ResultsThe proposed JUST‐Net enabled highly reproducible and accelerated 3D mGRE acquisition for whole‐brain MWI, reducing the acquisition time from fully sampled 15:23 to 2:22 min within a 3‐min reconstruction time. The normalized root mean squared error of the reconstructed mGRE images increased by less than 4.0%, and the correlation coefficients for MWI showed a value of over 0.68 when compared to the fully sampled reference. Additionally, the proposed method demonstrated a mitigating effect on both simulated and clinical motion‐corrupted cases.ConclusionThe proposed JUST‐Net has demonstrated the capability to achieve high acceleration factors for 3D mGRE‐based MWI, which is expected to facilitate widespread clinical applications of MWI.

Funder

Ministry of Science and ICT, South Korea

Publisher

Wiley

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