MoRe-3DGSMR: Motion-resolved reconstruction framework for free-breathing pulmonary MRI based on 3D Gaussian representation
Journal:
arXiv
Published Date:
May 8, 2025
Abstract
This study presents an unsupervised, motion-resolved reconstruction framework
for high-resolution, free-breathing pulmonary magnetic resonance imaging (MRI),
utilizing a three-dimensional Gaussian representation (3DGS). The proposed
method leverages 3DGS to address the challenges of motion-resolved 3D isotropic
pulmonary MRI reconstruction by enabling data smoothing between voxels for
continuous spatial representation. Pulmonary MRI data acquisition is performed
using a golden-angle radial sampling trajectory, with respiratory motion
signals extracted from the center of k-space in each radial spoke. Based on the
estimated motion signal, the k-space data is sorted into multiple respiratory
phases. A 3DGS framework is then applied to reconstruct a reference image
volume from the first motion state. Subsequently, a patient-specific
convolutional neural network is trained to estimate the deformation vector
fields (DVFs), which are used to generate the remaining motion states through
spatial transformation of the reference volume. The proposed reconstruction
pipeline is evaluated on six datasets from six subjects and bench-marked
against three state-of-the-art reconstruction methods. The experimental
findings demonstrate that the proposed reconstruction framework effectively
reconstructs high-resolution, motion-resolved pulmonary MR images. Compared
with existing approaches, it achieves superior image quality, reflected by
higher signal-to-noise ratio and contrast-to-noise ratio. The proposed
unsupervised 3DGS-based reconstruction method enables accurate motion-resolved
pulmonary MRI with isotropic spatial resolution. Its superior performance in
image quality metrics over state-of-the-art methods highlights its potential as
a robust solution for clinical pulmonary MR imaging.