周期一致的自我监督学习提高高加速mri重建。

Chi Zhang, Omer Burak Demirel, Mehmet Akçakaya
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摘要

物理驱动的深度学习(PD-DL)已经成为加速MRI的有力工具。近年来PD-DL的无监督学习也得到了发展,包括自监督学习。然而,在非常高的加速速率下,这种方法表现出性能下降。在这项研究中,我们建议使用循环一致性(CC)来改进高加速MRI的自监督学习。在我们提出的CC中,模拟测量是通过使用与真实分布相同的分布绘制的模式对网络输出进行欠采样来获得的。使用相同的网络获得这些模拟测量的重建,然后将其与在真实采样位置获得的数据进行比较。这种CC方法与基于掩蔽的自监督损失结合使用。结果表明,该方法可以在高加速速率下大幅减少混叠伪影,包括速率为6和8的fastMRI膝关节成像和20倍hcp式fMRI。
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CYCLE-CONSISTENT SELF-SUPERVISED LEARNING FOR IMPROVED HIGHLY-ACCELERATED MRI RECONSTRUCTION.

Physics-driven deep learning (PD-DL) has become a powerful tool for accelerated MRI. Recent developments have also developed unsupervised learning for PD-DL, including self-supervised learning. However, at very high acceleration rates, such approaches show performance deterioration. In this study, we propose to use cyclic-consistency (CC) to improve self-supervised learning for highly accelerated MRI. In our proposed CC, simulated measurements are obtained by undersampling the network output using patterns drawn from the same distribution as the true one. The reconstructions of these simulated measurements are obtained using the same network, which are then compared to the acquired data at the true sampling locations. This CC approach is used in conjunction with a masking-based self-supervised loss. Results show that the proposed method can substantially reduce aliasing artifacts at high acceleration rates, including rate 6 and 8 fastMRI knee imaging and 20-fold HCP-style fMRI.

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