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Independent component analysis-based multifiber streamline tractography of the human brain

机译:基于独立成分分析的人脑多纤维流线描记术

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摘要

An independent component analysis-based approach has been developed to estimate the orientations of two or three crossing fibers in a voxel to conduct human brain streamline tractography from diffusion data acquired along 25 gradient directions at a b-value of 1000 sec/mm2. The approach relies on unmixing signals from fibers mixed within, and spread over, a small cluster of 11 voxels. Simulation studies of diffusion data for two or three crossing fibers at signal-to-noise ratios of 15 and 30 suggest the accuracy to determine interfiber angles with independent component analysis is similar to that attained by a gaussian mixture and other multicompartmental models but at two orders of magnitude faster computational speed. Compared to previous multicompartmental models, independent component analysis visually shows good recovery of fiber orientations and tracts in the crossing region of commonly available orthogonal and 60° phantom diffusion datasets. A 3T MRI human studies show that in contrast to conventional streamline tractography and a multicompartment model, independent component analysis shows better recovery of the continuity of fronto-occipital tracts and cingulum from regions where these tracts are mixed with corpus callosum and other pathways. Magn Reson Med, 2010. © 2010 Wiley-Liss, Inc.
机译:已经开发了一种基于独立成分分析的方法来估计体素中的两个或三个交叉纤维的方向,以从沿b值为1000秒/ mm的25个梯度方向获取的扩散数据进行人脑流线束成像。 2 。该方法依赖于从混合在11个体素的小簇中并分布在其上的纤维中分离出的信号。对两个或三个交叉光纤在信噪比为15和30时的扩散数据进行的仿真研究表明,使用独立分量分析来确定光纤间角度的精度与高斯混合和其他多隔室模型所获得的精度相似,但有两个数量级数量级更快的计算速度。与以前的多隔室模型相比,独立的组件分析从视觉上显示出在常见的正交和60°幻像扩散数据集的交叉区域中纤维方向和束的良好恢复。一项3T MRI人体研究表明,与传统的流线束摄影术和多室模型相比,独立成分分析显示,从这些束与call体和其他途径混合的区域,额枕束和扣带的连续性可以更好地恢复。 Magn Reson Med,2010年。©2010 Wiley-Liss,Inc.。

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