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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Fitting of two-tensor models without ad hoc assumptions to detect crossing fibers using clinical DWI data
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Fitting of two-tensor models without ad hoc assumptions to detect crossing fibers using clinical DWI data

机译:无需临时假设即可拟合两张模型以使用临床DWI数据检测交叉纤维

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摘要

Analysis of crossing fibers is a challenging topic in recent diffusion-weighted imaging (DWI). Resolving crossing fibers is expected to bring major changes to present tractography results based on the standard tensor model. Model free approaches, like Q-ball or diffusion spectrum imaging, as well as multi-tensor models are used to unfold the different diffusion directions mixed in a voxel of DWI data. Due to its seeming simplicity, the two-tensor model (TTM) is applied frequently to provide two positive-definite tensors and the relative population fraction modeling two crossing fiber branches. However, problems with uniqueness and noise instability are apparent. To stabilize the fit, several of the 13 physical parameters are fixed ad hoc, before fitting the model to the data. Our analysis of the TTM aims at fitting procedures where ad hoc parameters are avoided. Revealing sources of instability, we show that the model's inherent ambiguity can be reduced to one scalar parameter which only influences the fraction and the eigenvalues of the TTM, whereas the diffusion directions are not affected. Based on this, two fitting strategies are proposed: the parsimonious strategy detects the main diffusion directions without extra parameter fixation, to determine the eigenvalues and the population fraction an empirically motivated condition must be added. The expensive strategy determines all 13 physical parameters of the TTM by a fit to DWIs alone; no additional assumption is necessary. Ill-posedness of the model in case of noisy data is cured by denoising of the data and by L-curve regularization combined with global minimization performing a least-squares fit of the full model. By model simulations and real data applications, we demonstrate the feasibility of our fitting strategies and achieve convincing results. Using clinically affordable diffusion acquisition paradigms (encoding numbers: 21, 2*15, 2*21) and b values (b=500-1500s/mm2), this methodology can place the TTM parameters involved in crossing fibers on a more empirical basis than fitting procedures with technical assumptions.
机译:在最近的扩散加权成像(DWI)中,交叉纤维的分析是一个具有挑战性的话题。基于标准张量模型,解决交叉纤维有望为当前的超声检查结果带来重大变化。使用无模型方法(例如Q球或扩散谱成像)以及多张量模型来展开DWI数据体素中混合的不同扩散方向。由于其简单的外观,经常使用两张量模型(TTM)来提供两个正定张量,并使用相对种群分数对两个交叉的纤维分支进行建模。然而,具有唯一性和噪声不稳定性的问题是显而易见的。为了稳定拟合,在将模型拟合到数据之前,临时固定了13个物理参数中的几个。我们对TTM的分析旨在避免特定参数的拟合过程。揭示不稳定性的根源,我们表明模型的固有模糊性可以减少为一个仅影响TTM的分数和特征值的标量参数,而扩散方向则不受影响。在此基础上,提出了两种拟合策略:简约策略检测主扩散方向而无需额外的参数固定,以确定特征值和总体分数,必须添加经验驱动条件。昂贵的策略仅通过适合DWI来确定TTM的所有13个物理参数。无需其他假设。通过对数据进行去噪和通过L曲线正则化结合执行最小二乘拟合的全局最小化的L曲线正则化,可以消除模型在嘈杂数据中的不适性。通过模型仿真和实际数据应用,我们证明了拟合策略的可行性并获得令人信服的结果。使用临床上可负担得起的扩散采集范例(编码数:21、2 * 15、2 * 21)和b值(b = 500-1500s / mm2),该方法可以将与光纤交叉相关的TTM参数置于比实际更多的基础上。具有技术假设的拟合程序。

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