Maitra Ranjan
Department of Statistics, Iowa State University, Ames, IA, USA.
Sankhya B (2008). 2013 Nov;75(2):293-318. doi: 10.1007/s13571-012-0055-y. Epub 2013 Jan 22.
Magnitude magnetic resonance (MR) images are noise-contaminated measurements of the true signal, and it is important to assess the noise in many applications. A recently introduced approach models the magnitude MR datum at each voxel in terms of a mixture of upto one Rayleigh and an unspecified number of Rice components, all with a common noise parameter. The Expectation-Maximization (EM) algorithm was developed for parameter estimation, with the mixing component membership of each voxel as the missing observation. This paper revisits the EM algorithm by introducing more missing observations into the estimation problem such that the complete (observed and missing parts) dataset can be modeled in terms of a regular exponential family. Both the EM algorithm and variance estimation are then fairly straightforward without any need for potentially unstable numerical optimization methods. Compared to local neighborhood- and wavelet-based noise-parameter estimation methods, the new EM-based approach is seen to perform well not only on simulation datasets but also on physical phantom and clinical imaging data.
磁共振(MR)图像的幅度是对真实信号的噪声污染测量,在许多应用中评估噪声很重要。最近提出的一种方法根据多达一个瑞利分量和不确定数量的莱斯分量的混合来对每个体素处的幅度MR数据进行建模,所有这些分量都具有一个共同的噪声参数。开发了期望最大化(EM)算法用于参数估计,将每个体素的混合分量隶属关系作为缺失观测值。本文通过在估计问题中引入更多缺失观测值来重新审视EM算法,以便可以根据正则指数族对完整(观测和缺失部分)数据集进行建模。然后,EM算法和方差估计都相当直接,无需任何可能不稳定的数值优化方法。与基于局部邻域和小波的噪声参数估计方法相比,新的基于EM的方法不仅在模拟数据集上表现良好,而且在物理体模和临床成像数据上也表现良好。