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球谐反卷积信息过滤轨迹改变结构连接组的侧性。

Spherical-deconvolution informed filtering of tractograms changes laterality of structural connectome.

机构信息

School of Computer Science and Technology, Nanjing University of Science and Technology, Nanjing, China.

Department of Psychiatry, University of North Carolina at Chapel Hill, Chapel Hill, USA.

出版信息

Neuroimage. 2024 Dec 1;303:120904. doi: 10.1016/j.neuroimage.2024.120904. Epub 2024 Oct 28.

Abstract

Diffusion MRI-driven tractography, a non-invasive technique that reveals how the brain is connected, is widely used in brain lateralization studies. To improve the accuracy of tractography in showing the underlying anatomy of the brain, various tractography filtering methods were applied to reduce false positives. Based on different algorithms, tractography filtering methods are able to identify the fibers most consistent with the original diffusion data while removing fibers that do not align with the original signals, ensuring the tractograms are as biologically accurate as possible. However, the impact of tractography filtering on the lateralization of the brain connectome remains unclear. This study aims to investigate the relationship between fiber filtering and laterality changes in brain structural connectivity. Three typical tracking algorithms were used to construct the raw tractography, and two popular fiber filtering methods(SIFT and SIFT2) were employed to filter the tractography across a range of parameters. Laterality indices were computed for six popular biological features, including four microstructural measures (AD, FA, RD, and T1/T2 ratio) and two structural features (fiber length and connectivity) for each brain region. The results revealed that tractography filtering may cause significant laterality changes in more than 10% of connections, up to 25% for probabilistic tracking, and deterministic tracking exhibited minimal laterality changes compared to probabilistic tracking, experiencing only about 6%. Except for tracking algorithms, different fiber filtering methods, along with the various biological features themselves, displayed more variable patterns of laterality change. In conclusion, this study provides valuable insights into the intricate relationship between fiber filtering and laterality changes in brain structural connectivity. These findings can be used to develop improved tractography filtering methods, ultimately leading to more robust and reliable measurements of brain asymmetry in lateralization studies.

摘要

扩散磁共振成像(Diffusion MRI)驱动的束追踪技术是一种揭示大脑连接方式的非侵入性技术,广泛应用于大脑偏侧性研究中。为了提高束追踪技术在显示大脑内部解剖结构的准确性,应用了各种束追踪过滤方法来减少假阳性。基于不同的算法,束追踪过滤方法能够识别与原始扩散数据最一致的纤维,同时去除与原始信号不一致的纤维,以确保追踪结果尽可能符合生物学实际。然而,束追踪过滤对大脑连接组偏侧性的影响尚不清楚。本研究旨在探讨纤维过滤与大脑结构连接偏侧性变化之间的关系。使用三种典型的追踪算法构建原始束追踪,使用两种流行的纤维过滤方法(SIFT 和 SIFT2)在一系列参数下对束追踪进行过滤。针对每个脑区,计算了六个流行生物学特征的偏侧性指数,包括四个微观结构测量指标(AD、FA、RD 和 T1/T2 比值)和两个结构特征(纤维长度和连接性)。结果表明,束追踪过滤可能导致超过 10%的连接出现显著的偏侧性变化,对于概率追踪,高达 25%的连接会发生变化,与概率追踪相比,确定性追踪的偏侧性变化较小,只有约 6%。除了追踪算法之外,不同的纤维过滤方法以及各种生物学特征本身,显示出更具变异性的偏侧性变化模式。总之,本研究深入探讨了纤维过滤与大脑结构连接偏侧性变化之间的复杂关系。这些发现可用于开发改进的束追踪过滤方法,最终实现大脑偏侧性研究中更稳健和可靠的大脑不对称测量。

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