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Fast GPU Implementation of a Scan-Specific Deep Learning Reconstruction for Accelerated Magnetic Resonance Imaging

机译:用于加速磁共振成像的特定于扫描的深度学习重建的快速GPU实现

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Parallel Imaging is a technique commonly used in most clinical Magnetic Resonance Imaging (MRI) scans to mitigate the problem of long scan-times. In parallel imaging, information from multiple receiver antennas with different spatial sensitivities is combined to allow reconstruction from undersampled image information. Robust Artificial-neural-networks for k-space Interpolation (RAKI) has been recently proposed enabling parallel imaging reconstruction in MRI using convolutional neural networks (CNN) trained solely on a calibration signal corresponding to that image. While RAKI has demonstrated improved reconstruction performance compared to established techniques, its reconstruction time is prolonged due to the repeated application of the CNN, and the necessity of a training-phase for each receiver image. In this study, we propose an optimized RAKI implementation based on GPU parallel programming. The training phase duration is substantially shortened by optimizing the number of iterations and allowing for adaptively updated learning rates without compromising visual reconstruction quality. Efficient use of GPU resources was facilitated by a parallelized implementation of the training of multiple networks using CPU multiprocessing. The proposed implementation demonstrates more than 60-fold reduction in the reconstruction speed of clinical sample data compared with conventional sequential implementation, thus, easing the integration of RAKI in clinical applications.
机译:并行成像是大多数临床磁共振成像(MRI)扫描中常用的一种技术,可以缓解长时间扫描的问题。在并行成像中,来自多个具有不同空间灵敏度的接收器天线的信息被组合在一起,以允许从欠采样图像信息中重建图像。最近提出了用于k空间插值的鲁棒人工神经网络(RAKI),该技术可以使用仅在对应于该图像的校准信号上训练的卷积神经网络(CNN)在MRI中进行并行成像重建。尽管RAKI与现有技术相比已显示出改进的重建性能,但由于CNN的重复应用以及每个接收器图像需要训练阶段的缘故,其重建时间延长了。在这项研究中,我们提出了一种基于GPU并行编程的优化RAKI实现。通过优化迭代次数并允许自适应更新的学习速率,而不会影响视觉重建质量,可以大大缩短训练阶段的持续时间。通过并行执行使用CPU多处理的多个网络的训练,可以有效地利用GPU资源。所提出的实施方案证明,与传统的顺序实施方案相比,临床样品数据的重建速度降低了60倍以上,从而简化了RAKI在临床应用中的集成。

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