Title of article :
A Feasibility Study of Geometric-Decomposition Coil Compression in MRI Radial Acquisitions
Author/Authors :
Wang, Jing Department of Biomedical Engineering - Zhejiang University - Hangzhou, China , Chen, Zhifeng Department of Biomedical Engineering - Zhejiang University - Hangzhou, China , Wang, Yiran Department of Biomedical Engineering - Zhejiang University - Hangzhou, China , Yuan, Lixia Department of Biomedical Engineering - Zhejiang University - Hangzhou, China , Xia, Ling Department of Biomedical Engineering - Zhejiang University - Hangzhou, China
Pages :
9
From page :
1
To page :
9
Abstract :
Receiver arrays with a large number of coil elements are becoming progressively available because of their increased signal-tonoise 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 𝑘-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.
Keywords :
GCC , SNR , MRI , Geometric-Decomposition
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2017
Full Text URL :
Record number :
2608430
Link To Document :
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