Comparison of MRI Under-Sampling Techniques for Compressed Sensing with Translation Invariant Wavelets Using FastTestCS: A Flexible Simulation Tool

C. Baker
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引用次数: 1

Abstract

A sparsifying transform for use in Compressed Sensing (CS) is a vital piece of image reconstruction for Magnetic Resonance Imaging (MRI). Previously, Translation Invariant Wavelet Transforms (TIWT) have been shown to perform exceedingly well in CS by reducing repetitive line pattern image artifacts that may be observed when using orthogonal wavelets. To further establish its validity as a good sparsifying transform, the TIWT is comprehensively investigated and compared with Total Variation (TV), using six under-sampling patterns through simulation. Both trajectory and random mask based under-sampling of MRI data are reconstructed to demonstrate a comprehensive coverage of tests. Notably, the TIWT in CS reconstruction performs well for all varieties of under-sampling patterns tested, even for cases where TV does not improve the mean squared error. This improved Image Quality (IQ) gives confidence in applying this transform to more CS applications which will contribute to an even greater speed-up of a CS MRI scan. High vs low resolution time of flight MRI CS re-constructions are also analyzed showing how partial Fourier acquisitions must be carefully addressed in CS to prevent loss of IQ. In the spirit of reproducible research, novel software is introduced here as FastTestCS. It is a helpful tool to quickly develop and perform tests with many CS customizations. Easy integration and testing for the TIWT and TV minimization are exemplified. Simulations of 3D MRI datasets are shown to be efficiently distributed as a scalable solution for large studies. Comparisons in reconstruction computation time are made between the Wavelab toolbox and Gnu Scientific Library in FastTestCS that show a significant time savings factor of 60×. The addition of FastTestCS is proven to be a fast, flexible, portable and reproducible simulation aid for CS research.
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利用FastTestCS:一种灵活的仿真工具,比较MRI欠采样压缩感知技术与平移不变小波
用于压缩感知(CS)的稀疏化变换是磁共振成像(MRI)图像重建的关键部分。以前,平移不变小波变换(TIWT)已被证明在CS中表现非常好,通过减少使用正交小波时可能观察到的重复线条图案图像伪影。为了进一步确定其作为一种良好的稀疏化变换的有效性,我们对TIWT进行了全面的研究,并通过模拟使用了六种欠采样模式,将其与总变差(TV)进行了比较。轨迹和基于随机掩模的MRI数据欠采样重建,以展示测试的全面覆盖。值得注意的是,即使在TV不能改善均方误差的情况下,CS重构中的TIWT对所有类型的欠采样模式都表现良好。这种改进的图像质量(IQ)使我们有信心将这种转换应用于更多的CS应用,这将有助于CS MRI扫描的更快速度。高分辨率与低分辨率的飞行时间MRI CS重建也进行了分析,显示了如何在CS中仔细处理部分傅立叶采集以防止智商损失。本着可重复研究的精神,本文介绍了一种新颖的软件FastTestCS。它是一个有用的工具,可以快速开发和执行许多CS自定义的测试。简单的集成和测试TIWT和电视最小化的例子。三维MRI数据集的模拟被证明是有效分布的,作为大型研究的可扩展解决方案。在FastTestCS中,比较了wavab工具箱和Gnu Scientific Library在重构计算时间上的差异,结果表明前者节省了60倍的时间。FastTestCS的加入被证明是一种快速、灵活、便携和可重复的CS研究模拟辅助工具。
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