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Evaluating the effects of systemic low frequency oscillations measured in the periphery on the independent component analysis results of resting state networks

机译:评估周边在休息状态网络的独立分析结果中测量的系统低频振荡的影响

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摘要

Independent component analysis (ICA) is widely used in resting state functional connectivity studies. ICA is a data-driven method, which uses no a priori anatomical or functional assumptions. However, as a result, it still relies on the user to distinguish the independent components (ICs) corresponding to neuronal activation, peripherally originating signals (without directly attributable neuronal origin, such as respiration, cardiac pulsation and Mayer wave), and acquisition artifacts. In this concurrent near infrared spectroscopy (NIRS)/functional MRI (fMRI) resting state study, we developed a method to systematically and quantitatively identify the ICs that show strong contributions from signals originating in the periphery. We applied group ICA (MELODIC from FSL) to the resting state data of 10 healthy participants. The systemic low frequency oscillation (LFO) detected simultaneously at each participant’s fingertip by NIRS was used as a regressor to correlate with every subject-specific IC timecourse. The ICs that had high correlation with the systemic LFO were those closely associated with previously described sensorimotor, visual, and auditory networks. The ICs associated with the default mode and frontoparietal networks were less affected by the peripheral signals. The consistency and reproducibility of the results were evaluated using bootstrapping. This result demonstrates that systemic, low frequency oscillations in hemodynamic properties overlay the timecourses of many spatial patterns identified in ICA analyses, which complicates the detection and interpretation of connectivity in these regions of the brain
机译:独立成分分析(ICA)被广泛用于静止状态功能连接性研究。 ICA是一种数据驱动的方法,它不使用先验的解剖或功能假设。但是,结果是,它仍然依赖于用户来区分与神经元激活,外周起源信号(无直接归因于神经元起源,如呼吸,心脏搏动和Mayer波)和采集伪像相对应的独立组件(IC)。在这项并发的近红外光谱(NIRS)/功能性MRI(fMRI)静止状态研究中,我们开发了一种方法,可以系统地和定量地识别那些显示出来自外围信号的强大贡献的IC。我们将ICA组(来自FSL的MELODIC)应用于10名健康参与者的静息状态数据。 NIRS在每个参与者的指尖同时检测到的系统低频振荡(LFO)被用作回归指标,以与每个受试者特定的IC时间过程相关。与系统性LFO高度相关的IC是与先前描述的感觉运动,视觉和听觉网络紧密相关的IC。与默认模式和前额叶网络相关的IC受外围信号的影响较小。使用自举法评估结果的一致性和可重复性。该结果表明,血液动力学特性的系统性低频振荡覆盖了ICA分析中确定的许多空间模式的时程,这使大脑这些区域的连通性检测和解释变得复杂

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