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Multi-channel Generative Adversarial Network for Parallel Magnetic Resonance Image Reconstruction in K-space

机译:K空间中并行磁共振图像重建的多通道生成对抗网络

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Magnetic Resonance Imaging (MRI) typically collects data below the Nyquist sampling rate for imaging acceleration. To remove aliasing artifacts, we propose a multi-channel deep generative adversarial network (GAN) model for MRI reconstruction. Because multi-channel GAN matches the parallel data acquisition system architecture on a modern MRI scanner, this model can effectively learn intrinsic data correlation associated with MRI hardware from originally-collected multichannel complex data. By estimating missing data directly with the trained network, images may be generated from undersampled multichannel raw data, providing an "end-to-end" approach to parallel MRI reconstruction. By experimentally comparing with other methods, it is demonstrated that multi-channel GAN can perform image reconstruction with an affordable computation cost and an imaging acceleration factor higher than the current clinical standard.
机译:磁共振成像(MRI)通常收集低于奈奎斯特采样率的数据以进行成像加速。为了消除混叠伪影,我们提出了一种用于MRI重建的多通道深度生成对抗网络(GAN)模型。由于多通道GAN与现代MRI扫描仪上的并行数据采集系统架构相匹配,因此该模型可以从原始收集的多通道复杂数据中有效学习与MRI硬件相关联的固有数据相关性。通过直接利用训练有素的网络估计丢失的数据,可以从欠采样的多通道原始数据生成图像,从而为并行MRI重建提供“端到端”方法。通过与其他方法的实验比较,证明了多通道GAN可以以可承受的计算成本和高于当前临床标准的成像加速因子来执行图像重建。

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