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Nonlinear Alignment of Whole Tractograms with the Linear Assignment Problem

机译:线性分配问题的整个牵引的非线性对齐

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摘要

After registration of the imaging data of two brains, homologous anatomical structures are expected to overlap better than before registration. Diffusion magnetic resonance imaging (dMRI) techniques and tractography techniques provide a representation of the anatomical connections in the white matter, as hundreds of thousands of streamlines, forming the tractogram. The literature on methods for aligning tractograms is in active development and provides methods that operate either from voxel information, e.g. fractional anisotropy, orientation distribution function, T1-weighted MRI, or directly from streamline information. In this work, we align streamlines using the linear assignment problem (LAP) and propose a method to reduce the high computational cost of aligning whole brain tractograms. As further contribution, we present a comparison among some of the freely-available linear and nonlinear tractogram alignment methods, where we show that our LAP-based method outperforms all others. In discussing the results, we show that a main limitation of all streamline-based nonlinear registration methods is the computational cost and that addressing such problem may lead to further improvement in the quality of registration.
机译:在两个大脑的成像数据注册之后,预计同源解剖结构将重叠比注册前更好。扩散磁共振成像(DMRI)技术和牵引技术提供了白质的解剖结构的表示,为成千上万的流线,形成牵引图。对准牵引图的方法的文献在主动开发中,提供了从体素信息操作的方法,例如,分数各向异性,定向分布函数,T1加权MRI,或直接从简化信息。在这项工作中,我们使用线性分配问题(LAP)对齐流线,并提出一种方法以降低全脑牵引的高计算成本。作为进一步的贡献,我们在一些可自由的线性和非线性和非线性牵引方向对齐方法中表现出比较,在那里我们表明基于LAP的方法优于所有其他的方法。在讨论结果时,我们表明所有基于流的非线性登记方法的主要限制是计算成本,解决此类问题可能导致注册质量进一步提高。

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