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Group Inference of Default-Mode Networks from Functional Magnetic Resonance Imaging Data:Comparison of Random- and Mixed-Effects Group Statistics

机译:功能磁共振成像数据对默认模式网络的组推断:随机效应和混合效应组统计的比较

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Default-mode network (DMN) activity measured with functional magnetic resonance imaging (fMRI) represents dominant intrinsic neuronal activations of the human brain during rest as opposed to task periods. Previous studies have demonstrated the utility of DMNs in identifying characteristic traits such as hyperactiva-tion and hypoactivation from group-level fMRI data. However, these group-level spatial patterns (SPs) were mostly based on random-effect (RFX) statistics determined using only the intersubject variability. To reduce the potentially significant level of variability in group-level SPs in RFX due to intrasubject variability, we were motivated to adopt a mixed-effects (MFX) statistics that is using both intrasubject and intersubject variability. Publicly available group fMRI database during resting state was analyzed using a temporal concatenation-based group independent component (IC) analysis, and DMN-related ICs at the group-level were automatically selected. The individual-level SPs of these DMN-related ICs were subsequently estimated using a dual-regression approach. Using these individual-level SPs, we evaluated the reproducibility and potential variability of the DMNs from the RFX and MFX statistics using performance measures including (1) neuronal activation levels, (2) percentages of overlap, (3) Pearson's spatial correlation coefficients, and (4) the distances between center-of-clusters. The resulting SPs from the MFX-based group inference showed a significantly greater level of reproducibility than those from the RFX-based group inference as tested in a bootstrapping framework Family-wise error (FWE)-corrected p < 10 ~(10), one-way analysis of variance (ANOVA)). The reported findings may provide a valuable supplemental option for investigating the neuropsychiatric group- or condition-dependent characteristic traits implicated in DMNs.
机译:用功能磁共振成像(fMRI)测量的默认模式网络(DMN)活动代表休息期间与任务时期相反的人类大脑的主要固有神经元激活。先前的研究表明,DMNs可用于从群体水平的fMRI数据中识别特征性特征,例如过度激活和过度激活。但是,这些组级别的空间模式(SP)主要基于仅使用对象间变异性确定的随机效应(RFX)统计数据。为了减少由于对象内部的可变性而在RFX中的组级SP中潜在的显着水平的可变性,我们被激励采用同时使用对象内部和对象间可变性的混合效应(MFX)统计数据。使用基于时间级联的基于组的独立成分(IC)分析来分析处于静止状态的公共可用组fMRI数据库,并自动选择组级别的DMN相关IC。随后使用双回归方法估算了这些DMN相关IC的个体级SP。使用这些个体级别的SP,我们使用性能指标从RFX和MFX统计数据评估了DMN的可再现性和潜在变异性,这些指标包括(1)神经元激活水平,(2)重叠百分比,(3)Pearson的空间相关系数和(4)群集中心之间的距离。在自举框架(FWE)校正的p <10〜(10)中测试,基于MFX的小组推论得出的SP的可再现性比基于RFX的小组推论得出的SP显着更高。方差分析(ANOVA))。报告的发现可能为调查DMN中牵涉的神经精神病学组或病情依赖性特征提供了有价值的补充选择。

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