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Visualization, Interaction and Tractometry: Dealing with Millions of Streamlines from Diffusion MRI Tractography

机译:可视化,交互作用和牵引测量:处理来自扩散MRI牵引成像的数百万条流线

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摘要

Recently proposed tractography and connectomics approaches often require a very large number of streamlines, in the order of millions. Generating, storing and interacting with these datasets is currently quite difficult, since they require a lot of space in memory and processing time. Compression is a common approach to reduce data size. Recently such an approach has been proposed consisting in removing collinear points in the streamlines. Removing points from streamlines results in files that cannot be robustly post-processed and interacted with existing tools, which are for the most part point-based. The aim of this work is to improve visualization, interaction and tractometry algorithms to robustly handle compressed tractography datasets. Our proposed improvements are threefold: (i) An efficient loading procedure to improve visualization (reduce memory usage up to 95% for a 0.2 mm step size); (ii) interaction techniques robust to compressed tractograms; (iii) tractometry techniques robust to compressed tractograms to eliminate biased in tract-based statistics. The present work demonstrates the need of correctly handling compressed streamlines to avoid biases in future tractometry and connectomics studies.
机译:最近提出的物镜学和连接学方法通常需要大量的流水线,数量级为数百万。目前,与这些数据集进行生成,存储和交互非常困难,因为它们需要大量的内存和处理时间。压缩是减少数据大小的常用方法。最近,已经提出了一种这样的方法,该方法包括去除流线中的共线点。从流线中删除点将导致文件无法进行可靠的后处理,并且无法与现有工具(大多数情况下基于点)进行交互。这项工作的目的是要改进可视化,交互作用和物测术算法,以稳健地处理压缩的物测术数据集。我们提出的改进措施包括三个方面:(i)一种有效的加载过程以改善可视化效果(对于0.2毫米的步长,将内存使用率降低至95%); (ii)对压缩的人体图具有鲁棒性的交互技术; (iii)对压缩后的谱图具有鲁棒性的谱图测量技术,可消除基于谱图的统计数据中的偏差。目前的工作表明需要正确处理压缩流线,以避免在将来的束测法和连接学研究中产生偏差。

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