Raj Ashish, Wang Yi, Zabih Ramin
Radiology Department, Weill Medical College of Cornell University, Ithaca, NY 14853, USA.
IEEE Trans Med Imaging. 2007 Aug;26(8):1046-57. doi: 10.1109/TMI.2007.897364.
Parallel imaging is a powerful technique to speed up magnetic resonance (MR) image acquisition via multiple coils. Both the received signal of each coil and its sensitivity map, which describes its spatial response, are needed during reconstruction. Widely used schemes such as SENSE assume that sensitivity maps of the coils are noiseless while the only errors are in coil outputs. In practice, however, sensitivity maps are subject to a wide variety of errors. At first glance, sensitivity noise appears to result in an errors-in-variables problem of the kind that is typically solved using total least squares (TLSs). However, existing TLS algorithms are in general inappropriate for the specific type of block structure that arises in parallel imaging. In this paper, we take a maximum likelihood approach to the problem of parallel imaging in the presence of independent Gaussian sensitivity noise. This results in a quasi-quadratic objective function, which can be efficiently minimized. Experimental evidence suggests substantial gains over conventional SENSE, especially in nonideal imaging conditions like low signal-to-noise ratio (SNR), high g-factors and large acceleration, using sensitivity maps suffering from misalignment, ringing, and random noise.
并行成像技术是一种通过多个线圈加速磁共振(MR)图像采集的强大技术。在重建过程中,需要每个线圈的接收信号及其描述空间响应的灵敏度图。诸如SENSE等广泛使用的方案假定线圈的灵敏度图无噪声,而唯一的误差在于线圈输出。然而,在实际中,灵敏度图会受到各种各样的误差影响。乍一看,灵敏度噪声似乎会导致一种通常使用总体最小二乘法(TLS)解决的变量误差问题。然而,现有的TLS算法通常不适用于并行成像中出现的特定类型的块结构。在本文中,我们针对存在独立高斯灵敏度噪声的并行成像问题采用最大似然方法。这会产生一个准二次目标函数,该函数可以有效地最小化。实验证据表明,与传统的SENSE相比有显著提升,特别是在低信噪比(SNR)、高g因子和大加速比等非理想成像条件下,使用存在失准、振铃和随机噪声的灵敏度图时。