Highly efficient non-rigid registration in k-space with application to cardiac Magnetic Resonance Imaging
In Magnetic Resonance Imaging (MRI), high temporal-resolved motion can be useful for image acquisition and reconstruction, MR-guided radiotherapy, dynamic contrast-enhancement, flow and perfusion imaging, and functional assessment of motion patterns in cardiovascular, abdominal, peristaltic, fetal,...
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Zusammenfassung: | In Magnetic Resonance Imaging (MRI), high temporal-resolved motion can be
useful for image acquisition and reconstruction, MR-guided radiotherapy,
dynamic contrast-enhancement, flow and perfusion imaging, and functional
assessment of motion patterns in cardiovascular, abdominal, peristaltic, fetal,
or musculoskeletal imaging. Conventionally, these motion estimates are derived
through image-based registration, a particularly challenging task for complex
motion patterns and high dynamic resolution. The accelerated scans in such
applications result in imaging artifacts that compromise the motion estimation.
In this work, we propose a novel self-supervised deep learning-based framework,
dubbed the Local-All Pass Attention Network (LAPANet), for non-rigid motion
estimation directly from the acquired accelerated Fourier space, i.e. k-space.
The proposed approach models non-rigid motion as the cumulative sum of local
translational displacements, following the Local All-Pass (LAP) registration
technique. LAPANet was evaluated on cardiac motion estimation across various
sampling trajectories and acceleration rates. Our results demonstrate superior
accuracy compared to prior conventional and deep learning-based registration
methods, accommodating as few as 2 lines/frame in a Cartesian trajectory and 3
spokes/frame in a non-Cartesian trajectory. The achieved high temporal
resolution (less than 5 ms) for non-rigid motion opens new avenues for motion
detection, tracking and correction in dynamic and real-time MRI applications. |
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DOI: | 10.48550/arxiv.2410.18834 |