k-Space Deep Learning for Reference-free EPI Ghost Correction
Juyoung Lee, Yoseob Han, Jae-Kyun Ryu, Jang-Yeon Park, Jong Chul Ye

TL;DR
This paper introduces a deep learning method that corrects Nyquist ghost artifacts in EPI MRI scans without needing reference scans, improving image quality and speed, especially in high-field MRI settings.
Contribution
It presents a novel k-space deep learning approach that leverages data redundancy and deep neural networks for reference-free ghost correction in EPI MRI.
Findings
Outperforms existing ghost correction methods in image quality.
Reduces correction time significantly.
Effective in both accelerated and non-accelerated EPI acquisitions.
Abstract
Nyquist ghost artifacts in EPI are originated from phase mismatch between the even and odd echoes. However, conventional correction methods using reference scans often produce erroneous results especially in high-field MRI due to the non-linear and time-varying local magnetic field changes. Recently, it was shown that the problem of ghost correction can be reformulated as k-space interpolation problem that can be solved using structured low-rank Hankel matrix approaches. Another recent work showed that data driven Hankel matrix decomposition can be reformulated to exhibit similar structures as deep convolutional neural network. By synergistically combining these findings, we propose a k-space deep learning approach that immediately corrects the phase mismatch without a reference scan in both accelerated and non-accelerated EPI acquisitions. To take advantage of the even and odd-phase…
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