Department of Mathematics, Statistics, and Computer Science, Marquette University, Milwaukee, WI, USA.
Magn Reson Imaging. 2012 Oct;30(8):1143-66. doi: 10.1016/j.mri.2012.04.002. Epub 2012 May 21.
The acquisition of sub-sampled data from an array of receiver coils has become a common means of reducing data acquisition time in MRI. Of the various techniques used in parallel MRI, SENSitivity Encoding (SENSE) is one of the most common, making use of a complex-valued weighted least squares estimation to unfold the aliased images. It was recently shown in Bruce et al. [Magn. Reson. Imag. 29(2011):1267-1287] that when the SENSE model is represented in terms of a real-valued isomorphism,it assumes a skew-symmetric covariance between receiver coils, as well as an identity covariance structure between voxels. In this manuscript, we show that not only is the skew-symmetric coil covariance unlike that of real data, but the estimated covariance structure between voxels over a time series of experimental data is not an identity matrix. As such, a new model, entitled SENSE-ITIVE, is described with both revised coil and voxel covariance structures. Both the SENSE and SENSE-ITIVE models are represented in terms of real-valued isomorphisms, allowing for a statistical analysis of reconstructed voxel means, variances, and correlations resulting from the use of different coil and voxel covariance structures used in the reconstruction processes to be conducted. It is shown through both theoretical and experimental illustrations that the miss-specification of the coil and voxel covariance structures in the SENSE model results in a lower standard deviation in each voxel of the reconstructed images, and thus an artificial increase in SNR, compared to the standard deviation and SNR of the SENSE-ITIVE model where both the coil and voxel covariances are appropriately accounted for. It is also shown that there are differences in the correlations induced by the reconstruction operations of both models, and consequently there are differences in the correlations estimated throughout the course of reconstructed time series. These differences in correlations could result in meaningful differences in interpretation of results.
从接收线圈阵列中获取欠采样数据已成为在 MRI 中减少数据采集时间的常用方法。在并行 MRI 中使用的各种技术中,SENSitivity Encoding(SENSE)是最常用的技术之一,它利用复值加权最小二乘估计来展开混叠图像。最近在 Bruce 等人的研究中表明 [Magn. Reson. Imag. 29(2011):1267-1287],当 SENSE 模型以实值同构表示时,它在接收线圈之间假设了一个斜对称协方差,并且在体素之间假设了一个单位协方差结构。在本文中,我们表明,不仅斜对称线圈协方差与真实数据不同,而且在实验数据的时间序列上,体素之间的估计协方差结构也不是单位矩阵。因此,描述了一种新模型,称为 SENSE-ITIVE,它具有修订后的线圈和体素协方差结构。SENSE 和 SENSE-ITIVE 模型都以实值同构表示,允许对不同线圈和体素协方差结构在重建过程中使用时导致的重建体素均值、方差和相关性进行统计分析。通过理论和实验说明表明,在 SENSE 模型中线圈和体素协方差结构的错误指定会导致重建图像中每个体素的标准偏差降低,从而与适当考虑了线圈和体素协方差的 SENSE-ITIVE 模型相比,人工增加了 SNR。还表明,两个模型的重建操作引起的相关性存在差异,因此在整个重建时间序列中估计的相关性也存在差异。这些相关性的差异可能导致对结果的解释产生有意义的差异。