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Automatic fiber bundle segmentation in massive tractography datasets using a multi-subject bundle atlas

机译:使用多对象束图集在大规模束摄影数据集中进行自动纤维束分割

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摘要

This paper presents a method for automatic segmentation of white matter fiber bundles from massive dMRI tractography datasets. The method is based on a multi-subject bundle atlas derived from a two-level intra-subject and inter-subject clustering strategy. This atlas is a model of the brain white matter organization, computed for a group of subjects, made up of a set of generic fiber bundles that can be detected in most of the population. Each atlas bundle corresponds to several inter-subject clusters manually labeled to account for subdivisions of the underlying pathways often presenting large variability across subjects. An atlas bundle is represented by the multi-subject list of the centroids of all intra-subject clusters in order to get a good sampling of the shape and localization variability. The atlas, composed of 36 known deep white matter bundles and 47 superficial white matter bundles in each hemisphere, was inferred from a first database of 12 brains. It was successfully used to segment the deep white matter bundles in a second database of 20 brains and most of the superficial white matter bundles in 10 subjects of the same database.
机译:本文提出了一种从大型dMRI术谱数据集中自动分割白质纤维束的方法。该方法基于从两级受试者内和受试者间聚类策略得出的多受试者束图集。该图集是脑白质组织的模型,是针对一组对象计算的,该对象由可以在大多数人群中检测到的一组通用纤维束组成。每个图集束对应于手动标记的几个受试者间群集,以说明基础通道的细分,这些通道通常在受试者之间表现出较大的变异性。为了获得形状和位置变异性的良好采样,图集束由所有对象内群集的质心的多对象列表表示。该图集由每个半球中的36个已知的深白质束和47个表面白质束组成,是从第12个大脑的第一个数据库得出的。它已成功用于在包含20个大脑的第二个数据库中分割深层白质束,并在同一数据库的10个对象中对大多数浅层白质束进行了分割。

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