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Probabilistic fiber tracking using the residual bootstrap with constrained spherical deconvolution

机译:使用带有约束球面反褶积的剩余自举进行概率光纤跟踪

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摘要

Constrained spherical deconvolution (CSD) is a new technique that, based on high‐angular resolution diffusion imaging (HARDI) MR data, estimates the orientation of multiple intravoxel fiber populations within regions of complex white matter architecture, thereby overcoming the limitations of the widely used diffusion tensor imaging (DTI) technique. One of its main applications is fiber tractography. The noisy nature of diffusion‐weighted (DW) images, however, affects the estimated orientations and the resulting fiber trajectories will be subject to uncertainty. The impact of noise can be large, especially for HARDI measurements, which employ relatively high ‐values. To quantify the effects of noise on fiber trajectories, probabilistic tractography was introduced, which considers multiple possible pathways emanating from one seed point, taking into account the uncertainty of local fiber orientations. In this work, a probabilistic tractography algorithm is presented based on CSD and the residual bootstrap. CSD, which provides accurate and precise estimates of multiple fiber orientations, is used to extract the local fiber orientations. The residual bootstrap is used to estimate fiber tract probability within a clinical time frame, without prior assumptions about the form of uncertainty in the data. By means of Monte Carlo simulations, the performance of the CSD fiber pathway uncertainty estimator is measured in terms of accuracy and precision. In addition, the performance of the proposed method is compared to state‐of‐the‐art DTI residual bootstrap tractography and to an existing probabilistic CSD tractography algorithm using clinical DW data. Hum Brain Mapp, 2011. © 2010 Wiley‐Liss, Inc.
机译:约束球面解卷积(CSD)是一项基于高角度分辨率扩散成像(HARDI)MR数据的新技术,它可以估算复杂白质结构区域内多个体素纤维群体的取向,从而克服了广泛使用的局限性扩散张量成像(DTI)技术。它的主要应用之一是纤维束照相术。但是,扩散加权(DW)图像的噪声性质会影响估计的方向,并且最终的纤维轨迹将受到不确定性的影响。噪声的影响可能很大,尤其是对于采用相对较高值的HARDI测量而言。为了量化噪声对纤维轨迹的影响,引入了概率束描记法,其中考虑了局部纤维取向的不确定性,它考虑了从一个种子点发出的多种可能途径。在这项工作中,提出了一种基于CSD和残差自举的概率体检法。 CSD提供了多个纤维方向的准确和精确的估计,用于提取局部纤维方向。残留引导程序用于估计临床时间范围内的纤维束概率,而无需事先假设数据不确定性的形式。通过蒙特卡洛模拟,从准确性和精确度方面衡量了CSD光纤路径不确定度估计器的性能。此外,将所提方法的性能与最先进的DTI残留自举式超声描记术以及使用临床DW数据的现有概率CSD描记术算法进行了比较。嗡嗡的脑图,2011年。©2010 Wiley-Liss,Inc.

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