Wang Jing, Chen Zhifeng, Wang Yiran, Yuan Lixia, Xia Ling
Department of Biomedical Engineering, Zhejiang University, Hangzhou 310027, China.
Center for Brain Imaging Science and Technology, Department of Biomedical Engineering, Zhejiang University, Hangzhou, China.
Comput Math Methods Med. 2017;2017:7685208. doi: 10.1155/2017/7685208. Epub 2017 Jun 4.
Receiver arrays with a large number of coil elements are becoming progressively available because of their increased signal-to-noise ratio (SNR) and enhanced parallel imaging performance. However, longer reconstruction time and intensive computational cost have become significant concerns as the number of channels increases, especially in some iterative reconstructions. Coil compression can effectively solve this problem by linearly combining the raw data from multiple coils into fewer virtual coils. In this work, geometric-decomposition coil compression (GCC) is applied to radial sampling (both linear-angle and golden-angle patterns are discussed) for better compression. GCC, which is different from directly compressing in -space, is performed separately in each spatial location along the fully sampled directions, then followed by an additional alignment step to guarantee the smoothness of the virtual coil sensitivities. Both numerical simulation data and in vivo data were tested. Experimental results demonstrated that the GCC algorithm can achieve higher SNR and lower normalized root mean squared error values than the conventional principal component analysis approach in radial acquisitions.
由于具有大量线圈元件的接收阵列具有更高的信噪比(SNR)和增强的并行成像性能,因此越来越容易获得。然而,随着通道数量的增加,重建时间延长和计算成本过高已成为重大问题,尤其是在一些迭代重建中。线圈压缩可以通过将来自多个线圈的原始数据线性组合成较少的虚拟线圈来有效解决此问题。在这项工作中,几何分解线圈压缩(GCC)应用于径向采样(讨论了线性角度和黄金角度模式)以实现更好的压缩。GCC与直接在空间中压缩不同,它在沿完全采样方向的每个空间位置分别执行,然后进行额外的对齐步骤以确保虚拟线圈灵敏度的平滑性。对数值模拟数据和体内数据都进行了测试。实验结果表明,在径向采集中,GCC算法比传统的主成分分析方法能够实现更高的SNR和更低的归一化均方根误差值。