Spatiotemporal Gaussian representation-based dynamic reconstruction and motion estimation framework for time-resolved volumetric MR imaging (DREME-GSMR)
Jiacheng Xie, Hua-Chieh Shao, Can Wu, Ricardo Otazo, Jie Deng, Mu-Han Lin, Tsuicheng Chiu, Jacob Buatti, Viktor Iakovenko, You Zhang

TL;DR
The paper introduces DREME-GSMR, a novel framework using spatiotemporal Gaussian representations for real-time, sub-second 3D MRI reconstruction and motion tracking during radiotherapy, without prior models.
Contribution
It develops a model that reconstructs dynamic 3D MRI and estimates motion in real-time from raw k-space data without prior anatomical or motion models.
Findings
Achieved ~400ms temporal resolution in MRI reconstruction.
Reconstructed images with high SSIM (~0.92) and low motion error (~0.5mm).
Enabled real-time intra-treatment volumetric imaging with inference time ~10ms.
Abstract
Time-resolved volumetric MR imaging that reconstructs a 3D MRI within sub-seconds to resolve deformable motion is essential for motion-adaptive radiotherapy. Representing patient anatomy and associated motion fields as 3D Gaussians, we developed a spatiotemporal Gaussian representation-based framework (DREME-GSMR), which enables time-resolved dynamic MRI reconstruction from a pre-treatment 3D MR scan without any prior anatomical/motion model. DREME-GSMR represents a reference MRI volume and a corresponding low-rank motion model (as motion-basis components) using 3D Gaussians, and incorporates a dual-path MLP/CNN motion encoder to estimate temporal motion coefficients of the motion model from raw k-space-derived signals. Furthermore, using the solved motion model, DREME-GSMR can infer motion coefficients directly from new online k-space data, allowing subsequent intra-treatment…
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