Ashburner J, Friston K J
Functional Imaging Laboratory, Wellcome Department of Cognitive Neurology, Institute of Neurology, London, United Kingdom.
Hum Brain Mapp. 1999;7(4):254-66. doi: 10.1002/(SICI)1097-0193(1999)7:4<254::AID-HBM4>3.0.CO;2-G.
We describe a comprehensive framework for performing rapid and automatic nonlabel-based nonlinear spatial normalizations. The approach adopted minimizes the residual squared difference between an image and a template of the same modality. In order to reduce the number of parameters to be fitted, the nonlinear warps are described by a linear combination of low spatial frequency basis functions. The objective is to determine the optimum coefficients for each of the bases by minimizing the sum of squared differences between the image and template, while simultaneously maximizing the smoothness of the transformation using a maximum a posteriori (MAP) approach. Most MAP approaches assume that the variance associated with each voxel is already known and that there is no covariance between neighboring voxels. The approach described here attempts to estimate this variance from the data, and also corrects for the correlations between neighboring voxels. This makes the same approach suitable for the spatial normalization of both high-quality magnetic resonance images, and low-resolution noisy positron emission tomography images. A fast algorithm has been developed that utilizes Taylor's theorem and the separable nature of the basis functions, meaning that most of the nonlinear spatial variability between images can be automatically corrected within a few minutes.
我们描述了一个用于执行快速且自动的基于非标签的非线性空间归一化的综合框架。所采用的方法将同一模态的图像与模板之间的残余平方差最小化。为了减少待拟合参数的数量,非线性变形由低空间频率基函数的线性组合来描述。目标是通过最小化图像与模板之间的平方差之和来确定每个基的最优系数,同时使用最大后验(MAP)方法最大化变换的平滑度。大多数MAP方法假定与每个体素相关的方差是已知的,并且相邻体素之间不存在协方差。这里描述的方法尝试从数据中估计此方差,并且还对相邻体素之间的相关性进行校正。这使得相同的方法适用于高质量磁共振图像以及低分辨率有噪声的正电子发射断层扫描图像的空间归一化。已经开发出一种快速算法,该算法利用泰勒定理和基函数的可分离特性,这意味着图像之间的大多数非线性空间变异性能够在几分钟内自动得到校正。