Abstract
Physiological and physical motions of the subjects, e.g., patients, are the primary sources of image artifacts in magnetic resonance imaging (MRI), causing geometric distortion, blurring, low signal-to-noise ratio, or ghosting. To overcome motion artifacts, various deep learning strategies, and models have been investigated to enable retrospective and prospective motion correction for MRI. This review article provides a survey on current deep learning-based rigid motion correction methods that have been used for MRI. Also, deep learning motion correction methods are compared to conventional motion correction methods and hybrid methods. Furthermore, we discuss the advantages and limitations of the current deep learning motion correction methods, leading to some suggestions for the future development of deep learning motion correction methods and their potential applications in improving clinical MRI.
Comparison of Prospective, Retrospective, and Deep Learning Motion Correction [Display omitted]
•The review investigates deep learning-based rigid motion correction techniques in MRI.•It underlines how subject motion can cause MRI artifacts like distortion, blurring, or ghosting.•Diverse deep learning approaches for MRI motion correction are reviewed.•An analysis compares deep learning, conventional, and hybrid motion correction methods.•The paper discusses pros and cons of deep learning motion correction, assessing its real-world use.