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首页> 外文期刊>Journal of Neuroscience Methods >Cortical surface registration using spherical thin-plate spline with sulcal lines and mean curvature as features
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Cortical surface registration using spherical thin-plate spline with sulcal lines and mean curvature as features

机译:使用具有槽线和平均曲率的球面薄板样条进行皮质表面配准

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摘要

Analysis of cortical patterns requires accurate cortical surface registration. Many researchers map the cortical surface onto a unit sphere and perform registration of two images defined on the unit sphere. Here we have developed a novel registration framework for the cortical surface based on spherical thin-plate splines. Small-scale composition of spherical thin-plate splines was used as the geometric interpolant to avoid folding in the geometric transform. Using an automatic algorithm based on anisotropic skeletons, we extracted seven sulcal lines, which we then incorporated as landmark information. Mean curvature was chosen as an additional feature for matching between spherical maps. We employed a two-term cost function to encourage matching of both sulcal lines and the mean curvature between the spherical maps. Application of our registration framework to fifty pairwise registrations of T1-weighted MRI scans resulted in improved registration accuracy, which was computed from sulcal lines. Our registration approach was tested as an additional procedure to improve an existing surface registration algorithm. Our registration framework maintained an accurate registration over the sulcal lines while significantly increasing the cross-correlation of mean curvature between the spherical maps being registered.
机译:皮层模式分析需要准确的皮层表面定位。许多研究人员将皮质表面映射到单位球体上,并对在单位球体上定义的两个图像进行配准。在这里,我们开发了一种基于球形薄板花键的皮质表面配准框架。球形薄板花键的小比例组合用作几何插值,以避免在几何变换中发生折叠。使用基于各向异性骨架的自动算法,我们提取了七条沟渠线,然后将其合并为地标信息。选择平均曲率作为球面图之间匹配的附加特征。我们采用了两项成本函数来鼓励匹配两条沟渠线和球面图之间的平均曲率。将我们的配准框架应用于T1加权MRI扫描的50个成对配准可以提高配准精度,这是通过根管计算得出的。我们的配准方法经过测试,作为改进现有表面配准算法的附加程序。我们的配准框架在沟纹上保持了精确的配准,同时显着增加了要配准的球面图之间平均曲率的互相关性。

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