Field Map Estimation in MRI using Compressed Sensing Algorithm

K. Yan, H. She
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Abstract

For non-cartesian magnetic resonance imaging, like spiral imaging, field inhomogeneity could cause image blurring, especially for long readout time. General correction method required field map estimation. However, when images are in low spin density, the estimated field map suffers from noise. A regularized method which utilizes the physical feature that field map is spatial smoothing, is proposed to estimate field map with little noise. The field map estimated by regularized method only have good performance while the images in low noise level. Once image suffers from severe noise, an accurate field map is still hard to obtain. In reality, to shorten scan time in spiral imaging, we would decrease the number of interleaves of sampling. As results of that, Signal-to-noise Ratio (SNR) of image gets lower, and effect of B0 inhomogeneity becomes serious problem. In such situation, a better way to calculate field map is required. In this paper, we propose optimized field map estimation method which employs compressed sensing algorithm. Actually, recovery expected signal of compressed sensing (CS) algorithm is noise reduction process, which could be used to estimate field map when images are in low SNR. The experiments show that using Wavelet transform as regularization term could perform better when images are in low Signal-to-Noise Ratio (SNR). To improve calculated field map further, both Total Variation (TV) term and Waveform term as regularization term are adapted. The method in this paper promises great field map estimation.
基于压缩感知算法的MRI场图估计
对于非笛卡儿磁共振成像,如螺旋成像,场的不均匀性可能导致图像模糊,特别是长时间读取。一般校正方法需要实地图估计。然而,当图像处于低自旋密度时,估计的场图受到噪声的影响。提出了一种利用场图空间平滑的物理特性进行场图估计的正则化方法。正则化方法估计的场图只有在低噪声条件下才有较好的性能。一旦图像受到严重的噪声影响,仍然难以获得准确的野外地图。在现实中,为了缩短螺旋成像的扫描时间,我们需要减少采样的交错次数。因此,图像的信噪比降低,B0不均匀性的影响变得严重。在这种情况下,需要一种更好的计算字段映射的方法。本文提出了一种采用压缩感知算法的优化场图估计方法。实际上,压缩感知(CS)算法的恢复期望信号是降噪过程,可用于图像低信噪比时的场图估计。实验表明,当图像信噪比较低时,采用小波变换作为正则化项能取得较好的效果。为了进一步改善计算的场图,采用了总变差项和波形项作为正则化项。本文所提出的方法具有很好的野外图估计效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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