MoRe-3DGSMR: Motion-resolved reconstruction framework for free-breathing pulmonary MRI based on 3D Gaussian representation
Tengya Peng, Ruyi Zha, Qing Zou

TL;DR
This paper introduces an unsupervised, motion-resolved 3D Gaussian representation framework for high-resolution, free-breathing pulmonary MRI, improving image quality and motion handling.
Contribution
It proposes a novel 3D Gaussian-based reconstruction method combined with neural network-estimated deformation fields for superior pulmonary MRI imaging.
Findings
Achieves higher signal-to-noise ratio and contrast-to-noise ratio than existing methods.
Effectively reconstructs high-resolution, motion-resolved pulmonary MR images.
Demonstrates robustness across six datasets from six subjects.
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…
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