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The effect of respiration variations on independent component analysis results of resting state functional connectivity.

机译:呼吸变化对静止状态功能连接的独立成分分析结果的影响。

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摘要

The analysis of functional connectivity in fMRI can be severely affected by cardiac and respiratory fluctuations. While some of these artifactual signal changes can be reduced by physiological noise correction routines, signal fluctuations induced by slower breath-to-breath changes in the depth and rate of breathing are typically not removed. These slower respiration-induced signal changes occur at low frequencies and spatial locations similar to the fluctuations used to infer functional connectivity, and have been shown to significantly affect seed-ROI or seed-voxel based functional connectivity analysis, particularly in the default mode network. In this study, we investigate the effect of respiration variations on functional connectivity maps derived from independent component analysis (ICA) of resting-state data. Regions of the default mode network were identified by deactivations during a lexical decision task. Variations in respiration were measured independently and correlated with the MRI time series data. ICA appears to separate the default mode network and the respiration-related changes in most cases. In some cases, however, the component automatically identified as the default mode network was the same as the component identified as respiration-related. Furthermore, in most cases the time series associated with the default mode network component was still significantly correlated with changes in respiration volume per time, suggesting that current methods of ICA may not completely separate respiration from the default mode network. An independent measure of the respiration provides valuable information to help distinguish the default mode network from respiration-related signal changes, and to assess the degree of residual respiration related effects.
机译:功能磁共振成像中的功能连通性分析可能会受到心脏和呼吸波动的严重影响。尽管可以通过生理噪声校正例程来减少某些人为信号变化,但通常不会消除因呼吸深度与呼吸速率之间的呼吸变化而引起的信号波动。这些较慢的呼吸诱导信号变化发生在低频和空间位置,类似于用于推断功能连接性的波动,并且已显示出会显着影响基于种子ROI或基于种子体素的功能连接性分析,尤其是在默认模式网络中。在这项研究中,我们调查了呼吸变化对源自静息状态数据的独立成分分析(ICA)的功能连接图的影响。默认模式网络的区域是通过词汇决策任务期间的停用来标识的。分别测量呼吸变化并与MRI时间序列数据相关。在大多数情况下,ICA似乎将默认模式网络和与呼吸相关的更改区分开来。但是,在某些情况下,自动识别为默认模式网络的组件与识别为与呼吸有关的组件相同。此外,在大多数情况下,与默认模式网络组件相关的时间序列仍与每次呼吸量的变化显着相关,这表明当前的ICA方法可能无法将呼吸与默认模式网络完全分开。呼吸的独立测量可提供有价值的信息,以帮助区分默认模式网络和与呼吸相关的信号变化,并评估与呼吸相关的残余效应的程度。

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