Chan Jasmine Y, Hssayeni Murtadha D, Wilcox Teresa, Ghoraani Behnaz
Department of Psychology, Florida Atlantic University, Boca Raton, FL, United States.
Department of Computer and Electrical Engineering and Computer Science, Florida Atlantic University, Boca Raton, FL, United States.
Front Neurosci. 2023 Aug 10;17:1180293. doi: 10.3389/fnins.2023.1180293. eCollection 2023.
The analysis of functional near-infrared spectroscopy (fNIRS) signals has not kept pace with the increased use of fNIRS in the behavioral and brain sciences. The popular grand averaging method collapses the oxygenated hemoglobin data within a predefined time of interest window and across multiple channels within a region of interest, potentially leading to a loss of important temporal and spatial information. On the other hand, the tensor decomposition method can reveal patterns in the data without making prior assumptions of the hemodynamic response and without losing temporal and spatial information. The aim of the current study was to examine whether the tensor decomposition method could identify significant effects and novel patterns compared to the commonly used grand averaging method for fNIRS signal analysis. We used two infant fNIRS datasets and applied tensor decomposition (i.e., canonical polyadic and Tucker decompositions) to analyze the significant differences in the hemodynamic response patterns across conditions. The codes are publicly available on GitHub. Bayesian analyses were performed to understand interaction effects. The results from the tensor decomposition method replicated the findings from the grand averaging method and uncovered additional patterns not detected by the grand averaging method. Our findings demonstrate that tensor decomposition is a feasible alternative method for analyzing fNIRS signals, offering a more comprehensive understanding of the data and its underlying patterns.
功能近红外光谱(fNIRS)信号的分析未能跟上fNIRS在行为科学和脑科学中使用增加的步伐。流行的总体平均方法会在预定义的感兴趣时间窗口内以及感兴趣区域内的多个通道上汇总氧合血红蛋白数据,这可能会导致重要的时间和空间信息丢失。另一方面,张量分解方法可以揭示数据中的模式,而无需对血液动力学响应进行先验假设,也不会丢失时间和空间信息。本研究的目的是检验与常用的fNIRS信号分析总体平均方法相比,张量分解方法是否能够识别显著效应和新的模式。我们使用了两个婴儿fNIRS数据集,并应用张量分解(即典范多向分解和塔克分解)来分析不同条件下血液动力学响应模式的显著差异。代码可在GitHub上公开获取。进行贝叶斯分析以了解交互效应。张量分解方法的结果重复了总体平均方法的发现,并揭示了总体平均方法未检测到的其他模式。我们的研究结果表明,张量分解是一种可行的fNIRS信号分析替代方法,能更全面地理解数据及其潜在模式。