婴儿静息状态功能磁共振成像中典型多尺度内在连接网络的识别及其与年龄的关系。

Prerana Bajracharya, Ashkan Faghiri, Zening Fu, Vince D Calhoun, Sarah Shultz, Armin Iraji
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引用次数: 0

摘要

内在连接网络(ICNs)反映了负责各种认知过程的功能性大脑组织,包括感觉知觉、运动控制、记忆和注意力。在本研究中,我们采用多变量目标优化独立分量分析(MOO-ICAR)和NeuroMark 2.1(成人)模板来估计婴儿静息状态功能磁共振成像(rsfMRI)数据中的受试者特异性icn。NeuroMark 2.1模板包含105个多尺度标准ICNs,这些ICNs来自多个数据集的100k+成年人。多尺度ICNs捕获了跨大脑不同粒度水平的功能分离,揭示了功能来源及其相互作用。结果表明,婴儿的105个icn在空间上与模板中的icn一致,并在静态功能网络连接(sFNC)中显示出与年龄相关的独特模式,特别是在皮层下和高级认知领域。这项研究首次在婴儿rsfMRI数据中研究了这些多尺度icn的存在和发展。我们的研究结果证实了6个月大的婴儿中存在可识别的典型ICNs,显示了这些网络与年龄之间的强烈关联,并提示了早期识别神经发育障碍的潜在生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Canonical multi-scale Intrinsic Connectivity Networks in Infant resting-state fMRI and their Association with Age.

Intrinsic Connectivity Networks (ICNs) reflect functional brain organization responsible for various cognitive processes, including sensory perception, motor control, memory, and attention. In this study, we used the Multivariate-Objective Optimization Independent Component Analysis with Reference (MOO-ICAR) and the NeuroMark 2.1 (adult) template to estimate subject-specific ICNs in resting-state functional magnetic resonance imaging (rsfMRI) data of infants. The NeuroMark 2.1 template contains 105 multi-scale canonical ICNs derived from 100k+ adults across multiple datasets. The multi-scale ICNs capture functional segregation across various levels of granularity across brain, revealing functional sources and their interactions. The results showed that the 105 ICNs in infants were spatially aligned with those in the template and revealed age-related distinctive patterns in static Functional Network Connectivity (sFNC), particularly in the sub-cortical and high-level cognitive domains. This study is the first to investigate the presence and development of these multi-scale ICNs in infant rsfMRI data. Our findings confirmed the presence of identifiable canonical ICNs in infants as young as six months, showcasing a strong association between these networks and age and suggesting potential biomarkers for early identification of neurodevelopmental disability.

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