Supervised Deep-Learning (DL)-based reconstruction algorithms have shown state-of-the-art results for highly-undersampled dynamic Magnetic Resonance Imaging (MRI) reconstruction. However, the requirement of excessive high-quality ground-truth data hinders their applications due to the generalization problem. Recently, Implicit Neural Representation (INR) has appeared as a powerful DL-based tool for solving the inverse problem by characterizing the attributes of a signal as a continuous function of corresponding coordinates in an unsupervised manner. In this work, we proposed an INR-based method to improve dynamic MRI reconstruction from highly undersampled k-space data, which only takes spatiotemporal coordinates as inputs. Specifically, the proposed INR represents the dynamic MRI images as an implicit function and encodes them into neural networks. The weights of the network are learned from sparsely-acquired (k, t)-space data itself only, without external training datasets or prior images. Benefiting from the strong implicit continuity regularization of INR together with explicit regularization for low-rankness and sparsity, our proposed method outperforms the compared scan-specific methods at various acceleration factors. E.g., experiments on retrospective cardiac cine datasets show an improvement of 5.5 ~ 7.1 dB in PSNR for extremely high accelerations (up to 41.6-fold). The high-quality and inner continuity of the images provided by INR has great potential to further improve the spatiotemporal resolution of dynamic MRI, without the need of any training data.
翻译:在这项工作中,我们建议了一种基于IRI的方法,用这种方法来改进动态磁共振感应成像(MRI)重建,而该方法只是以高度低劣的 k-空间数据为基础,而该数据仅以磁共振坐标作为投入。具体地说,拟议的IRI将动态MRI图像作为一种隐含功能来表示,并将其编码到神经网络中。网络的权重仅从稀有的(k, t)空间数据本身中学习,而没有外部培训数据集或先前的图像。 利用基于IRI的强有力隐含性稳定化,同时不以清晰的动态和时空坐标坐标坐标坐标坐标作为投入。 拟议的IRIR将动态MRI图像作为一种隐含功能,将其编码到神经网络中。网络的权重仅从淡化的(k, t)空间数据本身学习,而没有外部培训数据集或先前的图像。