School of Information Technology and Electrical Engineering, the University of Queensland, Brisbane, Australia.
School of Information and Communication Technology, Griffith University, Brisbane, Australia.
Magn Reson Imaging. 2021 Apr;77:159-168. doi: 10.1016/j.mri.2020.12.019. Epub 2021 Jan 2.
Multi-contrast (MC) Magnetic Resonance Imaging (MRI) of the same patient usually requires long scanning times, despite the images sharing redundant information. In this work, we propose a new iterative network that utilizes the sharable information among MC images for MRI acceleration. The proposed network has reinforced data fidelity control and anatomy guidance through an iterative optimization procedure of Gradient Descent, leading to reduced uncertainties and improved reconstruction results. Through a convolutional network, the new method incorporates a learnable regularization unit that is capable of extracting, fusing, and mapping shareable information among different contrasts. Specifically, a dilated inception block is proposed to promote multi-scale feature extractions and increase the receptive field diversity for contextual information incorporation. Lastly, an optimal MC information feeding protocol is built through the design of a complementary feature extractor block. Comprehensive experiments demonstrated the superiority of the proposed network, both qualitatively and quantitatively.
多对比度(MC)磁共振成像(MRI)通常需要较长的扫描时间,尽管这些图像共享冗余信息。在这项工作中,我们提出了一种新的迭代网络,利用 MC 图像之间的可共享信息进行 MRI 加速。所提出的网络通过梯度下降的迭代优化过程,增强了数据保真度控制和解剖学指导,从而降低了不确定性并提高了重建结果。通过卷积网络,新方法结合了一个可学习的正则化单元,该单元能够提取、融合和映射不同对比度之间的可共享信息。具体来说,提出了一个扩张 inception 块来促进多尺度特征提取,并增加上下文信息合并的感受野多样性。最后,通过设计互补特征提取器块,构建了最优的 MC 信息馈送协议。全面的实验结果从定性和定量两个方面证明了所提出的网络的优越性。