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Tractography Mapping for Dissimilarity Space across Subjects

机译:跨学科空间差异的地形学映射

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Structural brain connectivity can be studied with the help of diffusion magnetic resonance imaging (dMRI), through which the pathways of the neuronal axons of the white matter can be reconstructed at the millimeter scale. Such connectivity structure, called deterministic tractography, is represented as a set of polylines in 3D space, called streamlines. Streamlines have a non-homogeneous number of points and, for this reason, the dissimilarity representation (DR) has been proposed as accurate Euclidean embedding. By providing a vectorial representation of the streamlines, DR enables the use of most machine learning and pattern recognition algorithms for connectivity analysis. However, the DR is subject-specific and thus applies only to intra-subject analysis, while neuroscientific studies often address inter-subject comparisons. For this reason, in this work, we propose an algorithmic solution to build a common vectorial representation for streamlines across subjects. The core idea is based on finding a small set of corresponding streamlines, a problem known as streamline mapping. With experiments on a task of segmentation, we show that the quality of alignment of tractographies, through the common vectorial representation, is even superior to that of the traditional linear registration.
机译:可以借助扩散磁共振成像(dMRI)研究大脑的结构连通性,通过该结构可以在毫米尺度上重建白质神经元轴突的通路。这种连接性结构(称为确定性束线描记法)表示为3D空间中的一组折线(称为流线)。流线具有不均匀的点数,因此,已提出相异表示(DR)作为精确的欧几里得嵌入。通过提供流线的矢量表示,DR可以将大多数机器学习和模式识别算法用于连通性分析。但是,DR是特定于受试者的,因此仅适用于受试者内部分析,而神经科学研究通常涉及受试者之间的比较。出于这个原因,在这项工作中,我们提出了一种算法解决方案,可为跨主题的流线构建通用矢量表示。核心思想是基于找到一小部分相应的流线,即称为流线映射的问题。通过对分割任务的实验,我们表明,通过常见的矢量表示,书目的对齐质量甚至优于传统的线性配准。

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