Avants Brian, Gee James C
University of Pennsylvania, Philadelphia, PA 19104, USA.
Neuroimage. 2004;23 Suppl 1:S139-50. doi: 10.1016/j.neuroimage.2004.07.010.
The goal of this research is to promote variational methods for anatomical averaging that operate within the space of the underlying image registration problem. This approach is effective when using the large deformation viscous framework, where linear averaging is not valid, or in the elastic case. The theory behind this novel atlas building algorithm is similar to the traditional pairwise registration problem, but with single image forces replaced by average forces. These group forces drive an average transport ordinary differential equation allowing one to estimate the geodesic that moves an image toward the mean shape configuration. This model gives large deformation atlases that are optimal with respect to the shape manifold as defined by the data and the image registration assumptions. We use the techniques in the large deformation context here, but they also pertain to small deformation atlas construction. Furthermore, a natural, inherently inverse consistent image registration is gained for free, as is a tool for constant arc length geodesic shape interpolation. The geodesic atlas creation algorithm is quantitatively compared to the Euclidean anatomical average to elucidate the need for optimized atlases. The procedures generate improved average representations of highly variable anatomy from distinct populations.
本研究的目标是推广用于解剖平均的变分方法,这些方法在基础图像配准问题的空间内运行。当使用大变形粘性框架(其中线性平均无效)或弹性情况时,这种方法是有效的。这种新颖的图谱构建算法背后的理论与传统的成对配准问题相似,但用平均力取代了单图像力。这些组力驱动一个平均传输常微分方程,使人们能够估计将图像朝着平均形状配置移动的测地线。该模型给出了相对于由数据和图像配准假设定义的形状流形而言最优的大变形图谱。我们在此处使用大变形背景下的技术,但它们也适用于小变形图谱构建。此外,自然地获得了一种固有的逆一致图像配准,以及一种用于恒定弧长测地线形状插值的工具。将测地线图谱创建算法与欧几里得解剖平均值进行定量比较,以阐明对优化图谱的需求。这些程序从不同群体生成了高度可变解剖结构的改进平均表示。