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Fast Automatic Segmentation of White Matter Streamlines Based on a Multi-Subject Bundle Atlas

机译:基于多主题束地图集的白质流线的快速自动分割

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摘要

This paper presents an algorithm for fast segmentation of white matter bundles from massive dMRI tractography datasets using a multisubject atlas. We use a distance metric to compare streamlines in a subject dataset to labeled centroids in the atlas, and label them using a per-bundle configurable threshold. In order to reduce segmentation time, the algorithm first preprocesses the data using a simplified distance metric to rapidly discard candidate streamlines in multiple stages, while guaranteeing that no false negatives are produced. The smaller set of remaining streamlines is then segmented using the original metric, thus eliminating any false positives from the preprocessing stage. As a result, a single-thread implementation of the algorithm can segment a dataset of almost 9 million streamlines in less than 6 minutes. Moreover, parallel versions of our algorithm for multicore processors and graphics processing units further reduce the segmentation time to less than 22 seconds and to 5 seconds, respectively. This performance enables the use of the algorithm in truly interactive applications for visualization, analysis, and segmentation of large white matter tractography datasets.
机译:本文介绍了一种使用多机器ATLAS从大规模DMRI牵引数据集的白质束的快速分割算法。我们使用距离度量来将主题数据集中的Streamline比较到标记为标记的ATLAS中,并使用每包可配置阈值标记它们。为了减少分割时间,算法首先使用简化的距离度量来预处理数据以在多个阶段中快速丢弃候选流线,同时保证不会产生假否定。然后使用原始度量分割较小的剩余流线程,从而消除了从预处理阶段的任何误报。结果,该算法的单线程实现可以在不到6分钟的时间内段分段近900万流线的数据集。此外,我们的多核处理器和图形处理单元的算法的并行版本进一步将分段时间减少到小于22秒和5秒。这种性能可以在真正的交互式应用中使用算法进行可视化,分析和大型白质牵引数据集的分割。

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