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AnatomiCuts: Hierarchical Clustering of Tractography Streamlines Based on Anatomical Similarity

机译:AnatomiCuts:基于解剖相似性的地层学流线分层聚类

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摘要

Diffusion MRI tractography produces massive sets of streamlines that contain a wealth of information on brain connections. The size of these datasets creates a need for automated clustering methods to group the streamlines into meaningful bundles. Conventional clustering techniques group streamlines based on their spatial coordinates. Neuroanatomists, however, define white-matter bundles based on the anatomical structures that they go through or next to, rather than their spatial coordinates. Thus we propose a similarity measure for clustering streamlines based on their position relative to cortical and subcortical brain regions. We incorporate this measure into a hierarchical clustering algorithm and compare it to a measure that relies on Euclidean distance, using data from the Human Connectome Project. We show that the anatomical similarity measure leads to a 20% improvement in the overlap of clusters with manually labeled tracts. Importantly, this is achieved without introducing any prior information from a tract atlas into the clustering algorithm, therefore without imposing the existence of any named tracts.
机译:扩散MRI MRI产生大量流线,其中包含有关大脑连接的大量信息。这些数据集的大小导致需要一种自动聚类方法,以将流线分组为有意义的捆绑。传统的聚类技术基于流线的空间坐标对流线进行分组。然而,神经解剖学家根据它们穿过或接近的解剖结构而不是其空间坐标来定义白色物质束。因此,我们提出了一种基于流线相对于皮质和皮质下脑区的位置进行聚类的相似性度量。我们使用来自人类Connectome项目的数据,将此度量合并到分层聚类算法中,并将其与依赖于欧几里得距离的度量进行比较。我们表明,解剖学上的相似性度量导致具有手动标记的束的群集的重叠率提高了20%。重要的是,这无需将道集的任何先验信息引入聚类算法即可实现,因此无需施加任何命名道的存在。

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