IEEE Trans Med Imaging. 2020 Mar;39(3):545-555. doi: 10.1109/TMI.2019.2930586. Epub 2019 Jul 23.
Magnetic resonance spectroscopic imaging (MRSI) is a powerful molecular imaging modality but has very limited speed, resolution, and SNR tradeoffs. Construction of a low-dimensional model to effectively reduce the dimensionality of the imaging problem has recently shown great promise in improving these tradeoffs. This paper presents a new approach to model and reconstruct the spectroscopic signals by learning a nonlinear low-dimensional representation of the general MR spectra. Specifically, we trained a deep neural network to capture the low-dimensional manifold, where the high-dimensional spectroscopic signals reside. A regularization formulation is proposed to effectively integrate the learned model and physics-based data acquisition model for MRSI reconstruction with the capability to incorporate additional spatiospectral constraints. An efficient numerical algorithm was developed to solve the associated optimization problem involving back-propagating the trained network. Simulation and experimental results were obtained to demonstrate the representation power of the learned model and the ability of the proposed formulation in producing SNR-enhancing reconstruction from the practical MRSI data.
磁共振波谱成像(MRSI)是一种强大的分子成像方式,但在速度、分辨率和 SNR 权衡方面非常有限。构建一个低维模型来有效降低成像问题的维度,最近在改善这些权衡方面显示出了巨大的前景。本文提出了一种新的方法,通过学习一般磁共振谱的非线性低维表示来对光谱信号进行建模和重建。具体来说,我们训练了一个深度神经网络来捕捉高维光谱信号所在的低维流形。提出了一种正则化公式,以有效地将所学习的模型和基于物理的数据采集模型集成到 MRSI 重建中,同时具有整合额外的空谱约束的能力。开发了一种有效的数值算法来解决涉及反向传播训练网络的相关优化问题。获得了仿真和实验结果,以证明所学习模型的表示能力和所提出公式在从实际 MRSI 数据中产生 SNR 增强重建的能力。