Olivetti Emanuele, Sharmin Nusrat, Avesani Paolo
NeuroInformatics Laboratory, Bruno Kessler FoundationTrento, Italy; Center for Mind and Brain Sciences, University of TrentoTrento, Italy.
Front Neurosci. 2016 Dec 5;10:554. doi: 10.3389/fnins.2016.00554. eCollection 2016.
The white matter pathways of the brain can be reconstructed as 3D polylines, called streamlines, through the analysis of diffusion magnetic resonance imaging (dMRI) data. The whole set of streamlines is called tractogram and represents the structural connectome of the brain. In multiple applications, like group-analysis, segmentation, or atlasing, tractograms of different subjects need to be aligned. Typically, this is done with registration methods, that transform the tractograms in order to increase their similarity. In contrast with transformation-based registration methods, in this work we propose the concept of tractogram correspondence, whose aim is to find which streamline of one tractogram corresponds to which streamline in another tractogram, i.e., a map from one tractogram to another. As a further contribution, we propose to use the relational information of each streamline, i.e., its distances from the other streamlines in its own tractogram, as the building block to define the optimal correspondence. We provide an operational procedure to find the optimal correspondence through a combinatorial optimization problem and we discuss its similarity to the graph matching problem. In this work, we propose to represent tractograms as graphs and we adopt a recent inexact sub-graph matching algorithm to approximate the solution of the tractogram correspondence problem. On tractograms generated from the Human Connectome Project dataset, we report experimental evidence that tractogram correspondence, implemented as graph matching, provides much better alignment than affine registration and comparable if not better results than non-linear registration of volumes.
通过对扩散磁共振成像(dMRI)数据的分析,大脑的白质通路可以重建为三维折线,即流线。流线的全集称为纤维束图,它代表了大脑的结构连接组。在诸如组分析、分割或图谱绘制等多种应用中,需要对齐不同受试者的纤维束图。通常,这是通过配准方法来完成的,该方法通过变换纤维束图以提高它们的相似度。与基于变换的配准方法不同,在这项工作中,我们提出了纤维束图对应关系的概念,其目的是找出一个纤维束图中的哪条流线与另一个纤维束图中的哪条流线相对应,即从一个纤维束图到另一个纤维束图的映射。作为进一步的贡献,我们建议使用每条流线的关系信息,即它与自身纤维束图中其他流线的距离,作为定义最优对应关系的构建块。我们提供了一个通过组合优化问题找到最优对应关系的操作程序,并讨论了它与图匹配问题的相似性。在这项工作中,我们建议将纤维束图表示为图,并采用一种最近的不精确子图匹配算法来近似求解纤维束图对应问题。在从人类连接组计划数据集中生成的纤维束图上,我们报告了实验证据,即作为图匹配实现的纤维束图对应关系比仿射配准提供了更好的对齐效果,并且与体积的非线性配准相比,如果不是更好的话,也能提供相当的结果。