Center of Functionally Integrative Neuroscience (CFIN), Department of Clinical Medicine, Faculty of Health, Aarhus University, Aarhus N, Denmark.
Physikalisch-Technische Bundesanstalt, Braunschweig and Berlin, Germany.
Magn Reson Med. 2021 Jun;85(6):3308-3317. doi: 10.1002/mrm.28667. Epub 2021 Jan 21.
Rapid 2DRF pulse design with subject-specific inhomogeneity and B off-resonance compensation at 7 T predicted from convolutional neural networks is presented.
The convolution neural network was trained on half a million single-channel transmit 2DRF pulses optimized with an optimal control method using artificial 2D targets, and B maps. Predicted pulses were tested in a phantom and in vivo at 7 T with measured and B maps from a high-resolution gradient echo sequence.
Pulse prediction by the trained convolutional neural network was done on the fly during the MR session in approximately 9 ms for multiple hand-drawn regions of interest and the measured and B maps. Compensation of inhomogeneity and B off-resonances has been confirmed in the phantom and in vivo experiments. The reconstructed image data agree well with the simulations using the acquired and B maps, and the 2DRF pulse predicted by the convolutional neural networks is as good as the conventional RF pulse obtained by optimal control.
The proposed convolutional neural network-based 2DRF pulse design method predicts 2DRF pulses with an excellent excitation pattern and compensated and B variations at 7 T. The rapid 2DRF pulse prediction (9 ms) enables subject-specific high-quality 2DRF pulses without the need to run lengthy optimizations.
提出了一种基于卷积神经网络的快速 2DRF 脉冲设计方法,可针对 7T 下的个体不均匀性和 B 离共振进行补偿。
该卷积神经网络是在半百万个单通道传输 2DRF 脉冲的基础上进行训练的,这些脉冲是使用基于人工 2D 目标和 B 图的最优控制方法进行优化的。预测的脉冲在 7T 下的体模和体内进行了测试,使用高分辨率梯度回波序列获得的实测和 B 图。
在 MR 会话期间,通过训练的卷积神经网络对多个手工绘制的感兴趣区域和实测和 B 图进行了实时的脉冲预测,大约需要 9ms。在体模和体内实验中,已经证实了对不均匀性和 B 离共振的补偿。重建的图像数据与使用采集的和 B 图进行的模拟吻合良好,并且卷积神经网络预测的 2DRF 脉冲与通过最优控制获得的传统 RF 脉冲一样好。
所提出的基于卷积神经网络的 2DRF 脉冲设计方法可在 7T 下预测具有出色激发模式和补偿和 B 变化的 2DRF 脉冲。快速的 2DRF 脉冲预测(9ms)可实现针对个体的高质量 2DRF 脉冲,而无需进行冗长的优化。