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Robust and fast nonlinear optimization of diffusion MRI microstructure models

机译:扩散MRI微结构模型的鲁棒快速非线性优化

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摘要

Advances in biophysical multi-compartment modeling for diffusion MRI (dMRI) have gained popularity because of greater specificity than DTI in relating the dMRI signal to underlying cellular microstructure. A large range of these diffusion microstructure models have been developed and each of the popular models comes with its own, often different, optimization algorithm, noise model and initialization strategy to estimate its parameter maps. Since data fit, accuracy and precision is hard to verify, this creates additional challenges to comparability and generalization of results from diffusion microstructure models. In addition, non-linear optimization is computationally expensive leading to very long run times, which can be prohibitive in large group or population studies. In this technical note we investigate the performance of several optimization algorithms and initialization strategies over a few of the most popular diffusion microstructure models, including NODDI and CHARMED. We evaluate whether a single well performing optimization approach exists that could be applied to many models and would equate both run time and fit aspects. All models, algorithms and strategies were implemented on the Graphics Processing Unit (GPU) to remove run time constraints, with which we achieve whole brain dataset fits in seconds to minutes. We then evaluated fit, accuracy, precision and run time for different models of differing complexity against three common optimization algorithms and three parameter initialization strategies. Variability of the achieved quality of fit in actual data was evaluated on ten subjects of each of two population studies with a different acquisition protocol. We find that optimization algorithms and multi-step optimization approaches have a considerable influence on performance and stability over subjects and over acquisition protocols. The gradient-free Powell conjugate-direction algorithm was found to outperform other common algorithms in terms of run time, fit, accuracy and precision. Parameter initialization approaches were found to be relevant especially for more complex models, such as those involving several fiber orientations per voxel. For these, a fitting cascade initializing or fixing parameter values in a later optimization step from simpler models in an earlier optimization step further improved run time, fit, accuracy and precision compared to a single step fit. This establishes and makes available standards by which robust fit and accuracy can be achieved in shorter run times. This is especially relevant for the use of diffusion microstructure modeling in large group or population studies and in combining microstructure parameter maps with tractography results.
机译:由于在将dMRI信号与潜在的细胞微结构相关联方面比DTI具有更高的特异性,因此用于扩散MRI(dMRI)的生物物理多室建模技术的进展已获得普及。已经开发了各种各样的扩散微结构模型,并且每个流行的模型都有其自己的(通常是不同的)优化算法,噪声模型和初始化策略来估计其参数图。由于数据的适合性,准确性和精确性难以验证,这对扩散微结构模型的结果的可比性和泛化提出了额外的挑战。另外,非线性优化的计算量很大,导致运行时间非常长,这在大型团体或人群研究中可能是令人望而却步的。在本技术说明中,我们研究了几种最流行的扩散微结构模型(包括NODDI和CHARMED)上几种优化算法和初始化策略的性能。我们评估是否存在一种性能良好的优化方法,该方法可应用于许多模型,并且等同于运行时间和拟合方面。所有模型,算法和策略均在图形处理单元(GPU)上实施,以消除运行时约束,借助该约束,我们可以在数秒至数分钟内实现整个大脑数据集的拟合。然后,我们针对三种复杂度不同的不同模型,针对三种常见的优化算法和三种参数初始化策略,评估了拟合度,准确性,精确度和运行时间。在具有不同采集方案的两个总体研究的每一个的十个受试者上评估了实际数据中达到的拟合质量的变异性。我们发现,优化算法和多步优化方法对主题和采集协议上的性能和稳定性有很大影响。发现无梯度Powell共轭方向算法在运行时间,拟合,准确性和精度方面均优于其他常用算法。发现参数初始化方法特别适用于更复杂的模型,例如每个体素涉及多个纤维方向的模型。为此,与单步拟合相比,在较早的优化步骤中从较简单的模型在较晚的优化步骤中进行拟合级联初始化或固定参数值可进一步改善运行时间,拟合,准确性和精度。这建立并提供了可用的标准,通过这些标准可以在更短的运行时间内实现坚固的配合和精度。这对于在大型团体或人群研究中使用扩散微结构建模,以及将微结构参数图与影像学结果结合起来尤其重要。

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