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Mapping Topographic Structure in White Matter Pathways with Level Set Trees

机译:使用层集树在白色物质路径中映射地形结构

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摘要

Fiber tractography on diffusion imaging data offers rich potential for describing white matter pathways in the human brain, but characterizing the spatial organization in these large and complex data sets remains a challenge. We show that level set trees–which provide a concise representation of the hierarchical mode structure of probability density functions–offer a statistically-principled framework for visualizing and analyzing topography in fiber streamlines. Using diffusion spectrum imaging data collected on neurologically healthy controls (N = 30), we mapped white matter pathways from the cortex into the striatum using a deterministic tractography algorithm that estimates fiber bundles as dimensionless streamlines. Level set trees were used for interactive exploration of patterns in the endpoint distributions of the mapped fiber pathways and an efficient segmentation of the pathways that had empirical accuracy comparable to standard nonparametric clustering techniques. We show that level set trees can also be generalized to model pseudo-density functions in order to analyze a broader array of data types, including entire fiber streamlines. Finally, resampling methods show the reliability of the level set tree as a descriptive measure of topographic structure, illustrating its potential as a statistical descriptor in brain imaging analysis. These results highlight the broad applicability of level set trees for visualizing and analyzing high-dimensional data like fiber tractography output.
机译:扩散成像数据上的纤维束摄影术为描述人脑中的白质途径提供了巨大的潜力,但是在这些庞大而复杂的数据集中表征空间组织仍然是一个挑战。我们显示了水平集树,它提供了概率密度函数的分层模式结构的简洁表示,提供了一种统计原理框架,用于可视化和分析光纤流线中的地形。使用在神经系统健康的对照(N = 30)上收集的扩散光谱成像数据,我们使用确定性的束测术算法(将纤维束估计为无量纲的流线),绘制了从皮质到纹状体的白质通路。水平集树用于对映射的光纤路径的端点分布中的模式进行交互探索,以及对路径的有效分割,其经验准确性可与标准非参数聚类技术相媲美。我们显示,为了分析更广泛的数据类型(包括整个光纤流线),还可以将级别集树推广为伪密度函数模型。最后,重采样方法显示了水平集树作为地形结构描述性度量的可靠性,说明了其在脑成像分析中作为统计描述子的潜力。这些结果凸显了水平集树在可视化和分析高维数据(如纤维束摄影输出)方面的广泛适用性。

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