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Partitioning of physiological noise signals in the brain with concurrent near-infrared spectroscopy and fMRI

机译:并发近红外光谱和功能磁共振成像对大脑中的生理噪声信号进行分区

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摘要

The blood–oxygen level dependent (BOLD) signals measured by functional magnetic resonance imaging (fMRI) are contaminated with noise from various physiological processes, such as spontaneous low-frequency oscillations (LFOs), respiration, and cardiac pulsation. These processes are coupled to the BOLD signal by different mechanisms, and represent variations with very different frequency content; however, because of the low sampling rate of fMRI, these signals are generally not separable by frequency, as the cardiac and respiratory waveforms alias into the LFO band. In this study, we investigated the spatial and temporal characteristics of the individual noise processes by conducting concurrent near-infrared spectroscopy (NIRS) and fMRI studies on six subjects during a resting state acquisition. Three time series corresponding to LFO, respiration, and cardiac pulsation were extracted by frequency from the NIRS signal (which has sufficient temporal resolution to critically sample the cardiac waveform) and used as regressors in a BOLD fMRI analysis. Our results suggest that LFO and cardiac signals modulate the BOLD signal independently through the circulatory system. The spatiotemporal evolution of the LFO signal in the BOLD data correlates with the global cerebral blood flow. Near-infrared spectroscopy can be used to partition these contributing factors and independently determine their contribution to the BOLD signal.
机译:通过功能性磁共振成像(fMRI)测量的血氧水平依赖性(BOLD)信号被来自各种生理过程的噪声污染,例如自发低频振荡(LFO),呼吸和心脏搏动。这些过程通过不同的机制耦合到BOLD信号,并代表具有非常不同的频率含量的变化。但是,由于fMRI的采样率低,这些信号通常无法按频率分离,因为心脏和呼吸波形会混入LFO频段。在这项研究中,我们通过在静止状态获取期间对六个对象进行同时的近红外光谱(NIRS)和fMRI研究,研究了各个噪声过程的时空特征。通过频率从NIRS信号(具有足够的时间分辨率以严格采样心脏波形)中提取与LFO,呼吸和心脏搏动相对应的三个时间序列,并将其用作BOLD fMRI分析的回归指标。我们的结果表明,LFO和心脏信号通过循环系统独立调节BOLD信号。 BOLD数据中LFO信号的时空演变与整体脑血流相关。近红外光谱可用于划分这些影响因素,并独立确定其对BOLD信号的影响。

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