利用离群点调整图滤波提高脑结构连接的可靠性

V. Sairanen, Mario Ocampo-Pineda, C. Granziera, S. Schiavi, Alessandro Daducci
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引用次数: 2

摘要

磁共振弥散加权成像技术被用于表征脑结构,但其特异性有限。Tractogram滤波是为了解决这个问题而提出的,方法是利用微观结构信息来发现哪些流线相对于原始测量是必要的。然而,如果测量结果不可靠,由于部分体积或人为因素,如由于主体运动,过滤的结果可能会有偏差。我们提出用离群值信息增强滤波方法来调整这种不可靠性。我们在微结构信息神经束成像(COMMIT)框架的凸优化建模中实现了这一点,并对合成纤维幻影和人类连接体项目的数据进行了实验。我们的研究结果表明,当扩散加权图像受到伪影影响时,新增强的COMMIT比原始算法提供了更精确的轴突内信号分数估计。此外,我们认为这种方法可能对分辨率有限和许多不可靠测量的临床研究非常有益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Reliability Of Structural Brain Connectivity With Outlier Adjusted Tractogram Filtering
Diffusion-weighted magnetic resonance imaging tractography is used to represent brain structures but it has limited specificity. Tractogram filtering is proposed to fix this by utilizing e.g. microstructural information to find which streamlines are essential in respect to the original measurements. However, filtered results can be biased if the measurements are unreliable due to partial voluming or artifacts e.g. due to subject motion. We propose augmenting filtering methods with outlier information to adjust for such unreliability. We implemented this in the Convex Optimization modelling for Microstructure Informed Tractography (COMMIT) framework to conduct experiments on data from a synthetic fiber phantom and the Human Connectome Project. Our results demonstrate that the newly augmented COMMIT provides more precise estimations of intra-axonal signal fractions than the original algorithm when diffusion-weighted images are affected by artifacts. Furthermore, we argue this approach could be highly beneficial for clinical studies with limited resolution and numerous unreliable measurements.
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