Department of Mathematics, Statistics, and Computer Science, Marquette University, Milwaukee, WI 53201, USA.
Magn Reson Imaging. 2011 Nov;29(9):1267-87. doi: 10.1016/j.mri.2011.07.016. Epub 2011 Sep 9.
In magnetic resonance imaging, the parallel acquisition of subsampled spatial frequencies from an array of multiple receiver coils has become a common means of reducing data acquisition time. SENSitivity Encoding (SENSE) is a popular parallel image reconstruction model that uses a complex-valued least squares estimation process to unfold aliased images. In this article, the linear mathematical framework derived in Rowe et al. [J Neurosci Meth 159 (2007) 361-369] is built upon to perform image reconstruction with subsampled data acquired from multiple receiver coils, where the SENSE model is represented as a real-valued isomorphism. A statistical analysis is performed of the various image reconstruction operators utilized in the SENSE model, with an emphasis placed on the effects of each operator on voxel means, variances and correlations. It is shown that, despite the attractiveness of models that unfold the aliased images from subsampled data, there is an artificial correlation induced between reconstructed voxels from the different folds of aliased images. As such, the mathematical framework outlined in this manuscript could be further developed to provide a means of accounting for this unavoidable correlation induced by image reconstruction operators.
在磁共振成像中,从多个接收线圈的阵列中并行采集欠采样的空间频率已成为减少数据采集时间的常用方法。灵敏度编码(SENSE)是一种流行的并行图像重建模型,它使用复值最小二乘估计过程展开混叠图像。在本文中,建立了基于 Rowe 等人的线性数学框架[J Neurosci Meth 159(2007)361-369],以对从多个接收线圈采集的欠采样数据进行图像重建,其中 SENSE 模型表示为实值同构。对 SENSE 模型中使用的各种图像重建算子进行了统计分析,重点放在每个算子对体素均值、方差和相关性的影响上。结果表明,尽管从欠采样数据展开混叠图像的模型具有吸引力,但从混叠图像的不同折叠重建的体素之间会产生人为的相关性。因此,本文概述的数学框架可以进一步发展,以提供一种方法来解释由图像重建算子引起的这种不可避免的相关性。