Department of Electrical and Computer Engineering and the Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA.
IEEE Trans Med Imaging. 2011 Apr;30(4):893-903. doi: 10.1109/TMI.2010.2085084. Epub 2010 Oct 11.
Compressed sensing (CS) has the potential to reduce magnetic resonance (MR) data acquisition time. In order for CS-based imaging schemes to be effective, the signal of interest should be sparse or compressible in a known representation, and the measurement scheme should have good mathematical properties with respect to this representation. While MR images are often compressible, the second requirement is often only weakly satisfied with respect to commonly used Fourier encoding schemes. This paper investigates the use of random encoding for CS-MRI, in an effort to emulate the "universal" encoding schemes suggested by the theoretical CS literature. This random encoding is achieved experimentally with tailored spatially-selective radio-frequency (RF) pulses. Both simulation and experimental studies were conducted to investigate the imaging properties of this new scheme with respect to Fourier schemes. Results indicate that random encoding has the potential to outperform conventional encoding in certain scenarios. However, our study also indicates that random encoding fails to satisfy theoretical sufficient conditions for stable and accurate CS reconstruction in many scenarios of interest. Therefore, there is still no general theoretical performance guarantee for CS-MRI, with or without random encoding, and CS-based methods should be developed and validated carefully in the context of specific applications.
压缩感知(CS)有可能减少磁共振(MR)数据采集时间。为了使基于 CS 的成像方案有效,感兴趣的信号应该在已知表示中是稀疏或可压缩的,并且测量方案应该具有针对该表示的良好数学性质。虽然 MR 图像通常是可压缩的,但第二个要求通常仅在常用的傅里叶编码方案方面得到弱满足。本文研究了随机编码在 CS-MRI 中的应用,以努力模拟理论 CS 文献中建议的“通用”编码方案。这种随机编码是通过专门设计的空间选择性射频(RF)脉冲在实验中实现的。进行了模拟和实验研究,以研究针对傅里叶方案的这种新方案的成像特性。结果表明,在某些情况下,随机编码有可能优于传统编码。然而,我们的研究还表明,在许多感兴趣的情况下,随机编码无法满足 CS 重建稳定和准确的理论充分条件。因此,无论是使用随机编码还是不使用随机编码,CS-MRI 都没有一般的理论性能保证,并且应该在特定应用的上下文中谨慎地开发和验证基于 CS 的方法。