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任务相关激活网络的 ICA 模型阶数选择。

ICA model order selection of task co-activation networks.

机构信息

Research Imaging Institute, University of Texas Health Science Center, San Antonio TX, USA.

出版信息

Front Neurosci. 2013 Dec 10;7:237. doi: 10.3389/fnins.2013.00237. eCollection 2013.

Abstract

Independent component analysis (ICA) has become a widely used method for extracting functional networks in the brain during rest and task. Historically, preferred ICA dimensionality has widely varied within the neuroimaging community, but typically varies between 20 and 100 components. This can be problematic when comparing results across multiple studies because of the impact ICA dimensionality has on the topology of its resultant components. Recent studies have demonstrated that ICA can be applied to peak activation coordinates archived in a large neuroimaging database (i.e., BrainMap Database) to yield whole-brain task-based co-activation networks. A strength of applying ICA to BrainMap data is that the vast amount of metadata in BrainMap can be used to quantitatively assess tasks and cognitive processes contributing to each component. In this study, we investigated the effect of model order on the distribution of functional properties across networks as a method for identifying the most informative decompositions of BrainMap-based ICA components. Our findings suggest dimensionality of 20 for low model order ICA to examine large-scale brain networks, and dimensionality of 70 to provide insight into how large-scale networks fractionate into sub-networks. We also provide a functional and organizational assessment of visual, motor, emotion, and interoceptive task co-activation networks as they fractionate from low to high model-orders.

摘要

独立成分分析(ICA)已成为一种广泛用于提取静息和任务状态下大脑功能网络的方法。在神经影像学领域,历史上首选的 ICA 维度差异很大,但通常在 20 到 100 个分量之间变化。当在多个研究中比较结果时,这可能会产生问题,因为 ICA 维度会影响其结果分量的拓扑结构。最近的研究表明,ICA 可以应用于大型神经影像学数据库(即 BrainMap 数据库)中存档的峰值激活坐标,以产生基于全脑任务的共激活网络。将 ICA 应用于 BrainMap 数据的一个优势是,BrainMap 中大量的元数据可用于定量评估每个分量所涉及的任务和认知过程。在这项研究中,我们研究了模型阶数对网络中功能特性分布的影响,以此作为识别 BrainMap 基于 ICA 分量的最具信息量分解的方法。我们的研究结果表明,低阶模型 ICA 的维度为 20,用于检查大规模脑网络,维度为 70,用于深入了解大规模网络如何分裂为子网络。我们还提供了视觉、运动、情感和内脏感觉任务共激活网络的功能和组织评估,这些网络从低阶到高阶模型阶数进行了分裂。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30a1/3857551/3c257b0a1e3f/fnins-07-00237-g0001.jpg

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