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Multimodal Surface Matching with Higher-Order Smoothness Constraints☆

机译:具有高阶平滑度约束的多峰曲面匹配☆

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摘要

In brain imaging, accurate alignment of cortical surfaces is fundamental to the statistical sensitivity and spatial localisation of group studies; and cortical surface-based alignment has generally been accepted to be superior to volume-based approaches at aligning cortical areas. However, human subjects have considerable variation in cortical folding, and in the location of functional areas relative to these folds. This makes alignment of cortical areas a challenging problem. The Multimodal Surface Matching (MSM) tool is a flexible, spherical registration approach that enables accurate registration of surfaces based on a variety of different features. Using MSM, we have previously shown that driving cross-subject surface alignment, using areal features, such as resting state-networks and myelin maps, improves group task fMRI statistics and map sharpness. However, the initial implementation of MSM’s regularisation function did not penalize all forms of surface distortion evenly. In some cases, this allowed peak distortions to exceed neurobiologically plausible limits, unless regularisation strength was increased to a level which prevented the algorithm from fully maximizing surface alignment. Here we propose and implement a new regularisation penalty, derived from physically relevant equations of strain (deformation) energy, and demonstrate that its use leads to improved and more robust alignment of multimodal imaging data. In addition, since spherical warps incorporate projection distortions that are unavoidable when mapping from a convoluted cortical surface to the sphere, we also propose constraints that enforce smooth deformation of cortical anatomies. We test the impact of this approach for longitudinal modelling of cortical development for neonates (born between 31 and 43 weeks of post-menstrual age) and demonstrate that the proposed method increases the biological interpretability of the distortion fields and improves the statistical significance of population-based analysis relative to other spherical methods.
机译:在大脑成像中,皮层表面的精确对齐对于分组研究的统计敏感性和空间定位至关重要。通常,基于皮质表面的对齐方式在对齐皮质区域方面优于基于体积的方法。然而,人类受试者在皮质折叠以及相对于这些折叠的功能区域的位置上具有相当大的变化。这使得皮质区域的对准成为挑战性的问题。多峰表面匹配(MSM)工具是一种灵活的球形配准方法,可基于多种不同功能对表面进行精确配准。使用MSM,我们以前已经证明,使用诸如休息状态网络和髓磷脂图等面状特征来驱动跨对象表面对齐,可以改善小组任务功能性MRI统计和图的清晰度。但是,MSM正则化功能的最初实现并没有均匀地惩罚所有形式的表面变形。在某些情况下,除非正则强度增加到阻止算法完全最大化表面对齐的水平,否则这将使峰值失真超过神经生物学上的合理限度。在这里,我们提出并实施了一种新的正则化罚分,它是从应变(变形)能量的物理相关方程式推导而来的,并证明了它的使用导致多模态成像数据的改进和更可靠的对准。此外,由于球面扭曲会包含从扭曲的皮质表面映射到球体时不可避免的投影变形,因此,我们还提出了强制使皮质解剖结构平滑变形的约束条件。我们测试了这种方法对新生儿(出生于月经后31至43周之间)的皮质发育的纵向建模的影响,并证明了所提出的方法增加了畸变场的生物学解释能力,并提高了人口统计学意义。基于相对于其他球形方法的分析。

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