利用野生非局部引导法估算白质分层图的不确定性

Pew-Thian Yap, Hongyu An, Yasheng Chen, Dinggang Shen
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摘要

从弥散核磁共振成像数据(尤其是那些与牵引成像相关的数据)中得出的统计数据通常是高度非线性和非高斯的,具有未知的复杂分布。在估计这些统计数据的采样分布时,许多现有技术都受到了限制,因为它们依赖于假定为正态的模型,而这些模型在复杂情况下还有待验证,因为在复杂情况下可能同时存在各种噪声源,如生理变化、扫描仪不稳定性和成像噪声。在这种复杂的情况下,一个可行的解决方案是自举法,由于其与分布无关的性质,它是一个很有吸引力的工具,几乎可以用来估计任何统计量的变异性,而不依赖于复杂的理论计算,而是纯粹的计算机模拟。在本文中,我们将研究一种新的引导方案,即野生非局部引导(W-NLB),是否能有效估计牵引成像数据的不确定性。与依赖于预定数据模型的残差自举法(residual bootstrap)或野性自举法(wild bootstrap),以及需要重复信号测量的重复自举法(repetition bootstrap)相比,W-NLB 并不假定数据结构的预定形式,而且无需耗时的多次采集。W-NLB 以图像中重复出现的局部成像信息为基础。这种自相似性意味着,可以利用来自空间遥远(非局部)区域的成像信息,更有效地估计感兴趣的统计数据。硅学评估表明,与传统的残差自举法相比,W-NLB 产生的分布估计值与蒙特卡罗模拟产生的分布估计值更为一致。使用体内数据进行的评估表明,W-NLB 得出的结果与我们对白质连接架构的了解一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Estimating Uncertainty in White Matter Tractography Using Wild Non-local Bootstrap.

Estimating Uncertainty in White Matter Tractography Using Wild Non-local Bootstrap.

Estimating Uncertainty in White Matter Tractography Using Wild Non-local Bootstrap.

Statistics derived from diffusion MRI data, especially those related to tractography, are often highly non-linear and non-Gaussian with unknown complex distributions. In estimating the sampling distributions of these statistics, many existing techniques are limited by their reliance on models that assume normality and that are yet to be verified in complex situations where various noise sources, such as physiologic variation, scanner instability, and imaging noise, might be simultaneously present. In complex conditions as such, a viable solution is the bootstrap, which due to its distribution-independent nature is an appealing tool for the estimation of the variability of almost any statistic, without relying on complicated theoretical calculations, but purely on computer simulation. In this paper, we will examine whether a new bootstrap scheme, called the wild non-local bootstrap (W-NLB), is effective in estimating the uncertainty in tractography data. In contrast to the residual or wild bootstrap, which relies on a predetermined data model, or the repetition bootstrap, which requires repeated signal measurements, W-NLB does not assume a predetermined form of data structure and obviates the need for time-consuming multiple acquisitions. W-NLB hinges on the observation that local imaging information recurs in the image. This self-similarity implies that imaging information coming from spatially distant (non-local) regions can be exploited for more effective estimation of statistics of interest. In silico evaluations indicate that W-NLB produces distribution estimates that are in closer agreement to those generated using Monte Carlo simulations, compared with the conventional residual bootstrap. Evaluations using in vivo data show that W-NLB produces results that are in agreement with our knowledge on the white matter connection architecture.

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