首页> 美国卫生研究院文献>Frontiers in Human Neuroscience >Correcting for Blood Arrival Time in Global Mean Regression Enhances Functional Connectivity Analysis of Resting State fMRI-BOLD Signals
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Correcting for Blood Arrival Time in Global Mean Regression Enhances Functional Connectivity Analysis of Resting State fMRI-BOLD Signals

机译:校正全局均值回归中的血液到达时间可增强静止状态fMRI-BOLD信号的功能连通性分析

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摘要

Resting state functional connectivity analysis is a widely used method for mapping intrinsic functional organization of the brain. Global signal regression (GSR) is commonly employed for removing systemic global variance from resting state BOLD-fMRI data; however, recent studies have demonstrated that GSR may introduce spurious negative correlations within and between functional networks, calling into question the meaning of anticorrelations reported between some networks. In the present study, we propose that global signal from resting state fMRI is composed primarily of systemic low frequency oscillations (sLFOs) that propagate with cerebral blood circulation throughout the brain. We introduce a novel systemic noise removal strategy for resting state fMRI data, “dynamic global signal regression” (dGSR), which applies a voxel-specific optimal time delay to the global signal prior to regression from voxel-wise time series. We test our hypothesis on two functional systems that are suggested to be intrinsically organized into anticorrelated networks: the default mode network (DMN) and task positive network (TPN). We evaluate the efficacy of dGSR and compare its performance with the conventional “static” global regression (sGSR) method in terms of (i) explaining systemic variance in the data and (ii) enhancing specificity and sensitivity of functional connectivity measures. dGSR increases the amount of BOLD signal variance being modeled and removed relative to sGSR while reducing spurious negative correlations introduced in reference regions by sGSR, and attenuating inflated positive connectivity measures. We conclude that incorporating time delay information for sLFOs into global noise removal strategies is of crucial importance for optimal noise removal from resting state functional connectivity maps.
机译:静止状态功能连接性分析是一种广泛使用的方法,用于映射大脑的固有功能组织。全局信号回归(GSR)通常用于从静息状态BOLD-fMRI数据中去除系统性全局差异。但是,最近的研究表明,GSR可能会在功能网络内部和功能网络之间引入虚假的负相关性,这使一些网络之间报告的反相关的含义产生了疑问。在本研究中,我们建议来自静止状态功能磁共振成像的全局信号主要由随着整个大脑血液循环传播的系统性低频振荡(sLFO)组成。我们针对静息状态fMRI数据引入了一种新的系统性噪声消除策略,即“动态全局信号回归”(dGSR),该策略在从体素时间序列回归之前将体素特定的最佳时间延迟应用于全局信号。我们在两个建议将其固有地组织为反相关网络的功能系统上测试我们的假设:默认模式网络(DMN)和任务肯定网络(TPN)。我们评估dGSR的功效并将其性能与传统的“静态”全局回归(sGSR)方法进行比较(i)解释数据中的系统差异,以及(ii)增强功能连接性度量的特异性和敏感性。相对于sGSR,dGSR增加了要建模和消除的BOLD信号方差量,同时减少了sGSR在参考区域引入的虚假负相关,并减弱了膨胀的正连通性度量。我们得出的结论是,将sLFO的时延信息纳入全局噪声消除策略对于从静止状态功能连接图中最佳去除噪声至关重要。

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