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首页> 外文期刊>NeuroImage >Resolving crossing fibres using constrained spherical deconvolution: validation using diffusion-weighted imaging phantom data.
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Resolving crossing fibres using constrained spherical deconvolution: validation using diffusion-weighted imaging phantom data.

机译:使用约束球面反褶积解决交叉纤维:使用扩散加权成像幻象数据进行验证。

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Diffusion-weighted imaging can potentially be used to infer the connectivity of the human brain in vivo using fibre-tracking techniques, and is therefore of great interest to neuroscientists and clinicians. A key requirement for fibre tracking is the accurate estimation of white matter fibre orientations within each imaging voxel. The diffusion tensor model, which is widely used for this purpose, has been shown to be inadequate in crossing fibre regions. A number of approaches have recently been proposed to address this issue, based on high angular resolution diffusion-weighted imaging (HARDI) data. In this study, an experimental model of crossing fibres, consisting of water-filled plastic capillaries, is used to thoroughly assess three such techniques: constrained spherical deconvolution (CSD), super-resolved CSD (super-CSD) and Q-ball imaging (QBI). HARDI data were acquired over a range of crossing angles and b-values, from which fibre orientations were computed using each technique. All techniques were capable of resolving the two fibre populations down to a crossing angle of 45 degrees , and down to 30 degrees for super-CSD. A bias was observed in the fibre orientations estimated by QBI for crossing angles other than 90 degrees, consistent with previous simulation results. Finally, for a 45 degrees crossing, the minimum b-value required to resolve the fibre orientations was 4000 s/mm(2) for QBI, 2000 s/mm(2) for CSD, and 1000 s/mm(2) for super-CSD. The quality of estimation of fibre orientations may profoundly affect fibre tracking attempts, and the results presented provide important additional information regarding performance characteristics of well-known methods.
机译:扩散加权成像可潜在地用于使用纤维跟踪技术来推断人脑在体内的连通性,因此,对于神经科学家和临床医生而言非常重要。纤维跟踪的一个关键要求是准确估计每个成像体素内的白质纤维取向。已经证明,为此目的广泛使用的扩散张量模型在交叉纤维区域中是不充分的。最近,基于高角度分辨率扩散加权成像(HARDI)数据,提出了许多解决此问题的方法。在这项研究中,使用由充满水的塑料毛细管构成的交叉纤维的实验模型来彻底评估以下三种技术:约束球形反褶积(CSD),超分辨CSD(super-CSD)和Q球成像( QBI)。在一定的交叉角和b值范围内获取HARDI数据,然后使用每种技术从中计算出纤维取向。所有技术都能够将两个光纤群解析为45度的交叉角,对于超级CSD则能够解析为30度。通过QBI估计,除90度以外的交叉角在纤维取向上都存在偏差,这与以前的模拟结果一致。最后,对于45度交叉,解决纤维取向所需的最小b值对于QBI为4000 s / mm(2),对于CSD为2000 s / mm(2),对于super为1000 s / mm(2) -CSD。纤维取向估计的质量可能会严重影响纤维跟踪的尝试,并且给出的结果提供了有关众所周知方法性能特征的重要附加信息。

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