Miller M, Banerjee A, Christensen G, Joshi S, Khaneja N, Grenander U, Matejic L
Department of Electrical Engineering, Washington University, St Louis, Missouri 63130, USA.
Stat Methods Med Res. 1997 Sep;6(3):267-99. doi: 10.1177/096228029700600305.
This paper reviews recent developments by the Washington/Brown groups for the study of anatomical shape in the emerging new discipline of computational anatomy. Parametric representations of anatomical variation for computational anatomy are reviewed, restricted to the assumption of small deformations. The generation of covariance operators for probabilistic measures of anatomical variation on coordinatized submanifolds is formulated as an empirical procedure. Populations of brains are mapped to common coordinate systems, from which template coordinate systems are constructed which are closest to the population of anatomies in a minimum distance sense. Variation of several one-, two- and three-dimensional manifolds, i.e. sulci, surfaces and brain volumes are examined via Gaussian measures with mean and covariances estimated directly from maps of templates to targets. Methods are presented for estimating the covariances of vector fields from a family of empirically generated maps, posed as generalized spectrum estimation indexed over the submanifolds. Covariance estimation is made parametric, analogous to autoregressive modelling, by introducing small deformation linear operators for constraining the spectrum of the fields.
本文回顾了华盛顿大学/布朗大学研究团队在新兴的计算解剖学领域中,关于解剖形状研究的最新进展。本文回顾了计算解剖学中解剖变异的参数化表示,其局限于小变形假设。在坐标子流形上,将解剖变异概率测度的协方差算子生成过程,表述为一种经验性程序。将大脑群体映射到公共坐标系,据此构建模板坐标系,该坐标系在最小距离意义上最接近解剖群体。通过高斯测度研究若干一维、二维和三维流形(即脑沟、表面和脑体积)的变异,其均值和协方差直接从模板到目标的映射中估计得出。本文提出了从一组经验生成的映射中估计向量场协方差的方法,该方法被视为在子流形上索引的广义谱估计。通过引入用于约束场谱的小变形线性算子,使协方差估计参数化,类似于自回归建模。