Three-Dimensional MRI Reconstruction With 3D Gaussian Representations: Tackling the Undersampling Problem.

Tengya Peng, Ruyi Zha, Zhen Li, Xiaofeng Liu, Qing Zou
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Abstract

Three-Dimensional Gaussian representation (3DGS) has shown substantial promise in the field of computer vision, but remains unexplored in the field of magnetic resonance imaging (MRI). This study explores its potential for the reconstruction of isotropic resolution 3D MRI from undersampled k-space data. We introduce a novel framework termed 3D Gaussian MRI (3DGSMR), which employs 3D Gaussian distributions as an explicit representation for MR volumes. Experimental evaluations indicate that this method can effectively reconstruct voxelized MR images, achieving a quality on par with that of well-established 3D MRI reconstruction techniques found in the literature. Notably, the 3DGSMR scheme operates under a self-supervised framework, obviating the need for extensive training datasets or prior model training. This approach introduces significant innovations to the domain, notably the adaptation of 3DGS to MRI reconstruction and the novel application of the existing 3DGS methodology to decompose MR signals, which are presented in a complex-valued format.

三维高斯表示的三维MRI重建:解决欠采样问题。
三维高斯表示(3DGS)在计算机视觉领域显示出巨大的前景,但在磁共振成像(MRI)领域仍未被探索。本研究探索其从欠采样k空间数据重建各向同性分辨率3D MRI的潜力。我们引入了一种新的框架,称为三维高斯MRI (3DGSMR),它采用三维高斯分布作为MR体积的显式表示。实验评估表明,该方法可以有效地重建体素化MR图像,达到与文献中成熟的3D MRI重建技术相当的质量。值得注意的是,3DGSMR方案在自监督框架下运行,避免了对大量训练数据集或先验模型训练的需要。该方法为该领域引入了重大创新,特别是3DGS对MRI重建的适应以及现有3DGS方法的新应用来分解以复值格式呈现的MR信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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