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Independent Component Analysis of Multi-channel Near-Infrared Spectroscopic Signals by Time-Delayed Decorrelation

机译:时滞解相关的多通道近红外光谱信号独立分量分析

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Multi-channel near-infrared spectroscopy (NIRS) is increasingly used in empirical studies monitoring human brain activity. In a recent study, an independent component analysis (ICA) technique using time-delayed decorrelation was applied to NIRS signals since those signals reflect cerebral blood flow changes caused by task-induced responses as well as various artifacts. The decorrelation technique is important in NIRS-based analyses and may facilitate accurate separation of independent signals generated by oxygenated/deoxygenated hemoglobin concentration changes. We introduce an algorithm using time-delayed correlations that enable estimation of independent components (ICs) in which the number of components is fewer than that of observed sources; the conventional approach using a larger number of components may deteriorate settling of the solution. In a simulation, the algorithm was shown capable of estimating the number of ICs of virtually observed signals set by an experimenter, with the simulation reproducing seven sources where each was a mixture of three ICs and white noises. In addition, the algorithm was introduced in an experiment using ICs of NIRS signals observed during finger-tapping movements. Experimental results showed consistency and reproducibility of the estimated ICs that are attributed to patterns in the spatial distribution and temporal structure.
机译:多通道近红外光谱法(NIRS)越来越多地用于监测人脑活动的实证研究中。在最近的一项研究中,使用延迟去相关的独立成分分析(ICA)技术已应用于NIRS信号,因为这些信号反映了由任务诱发的反应以及各种伪像引起的脑血流变化。去相关技术在基于NIRS的分析中很重要,并且可能有助于准确分离由氧化/脱氧血红蛋白浓度变化产生的独立信号。我们介绍了一种使用时延相关的算法,该算法能够估计独立分量(IC),其中独立分量的数量少于观察到的源的数量;使用大量组分的常规方法可能会使溶液的沉降变差。在仿真中,显示了该算法能够估算由实验人员设置的虚拟观测信号的IC数量,该仿真可重现七个信号源,每个信号源都是三个IC和白噪声的混合。此外,该算法是在实验中引入的,它使用了在敲击手指时观察到的NIRS信号的IC。实验结果表明,估计的IC的一致性和可重复性归因于空间分布和时间结构中的模式。

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