Andrea Bizzego, Atiqah Azhari, Gianluca Esposito
Department of Psychology and Cognitive Science, University of Trento, Trento, Italy.
Psychology Program, School of Social Sciences, Nanyang Technological University, Singapore, Singapore.
Neuroinformatics. 2022 Jul;20(3):665-675. doi: 10.1007/s12021-021-09551-6. Epub 2021 Oct 29.
Despite a huge advancement in neuroimaging techniques and growing importance of inter-personal brain research, few studies assess the most appropriate computational methods to measure brain-brain coupling. Here, we focus on the signal processing methods to detect brain-coupling in dyads. From a public dataset of functional Near Infra-Red Spectroscopy signals (N=24 dyads), we derived a synthetic control condition by randomization, we investigated the effectiveness of four most used signal similarity metrics: Cross Correlation, Mutual Information, Wavelet Coherence and Dynamic Time Warping. We also accounted for temporal variations between signals by allowing for misalignments up to a maximum lag. Starting from the observed effect sizes, computed in terms of Cohen's d, the power analysis indicated that a high sample size ([Formula: see text]) would be required to detect significant brain-coupling. We therefore discuss the need for specialized statistical approaches and propose bootstrap as an alternative method to avoid over-penalizing the results. In our settings, and based on bootstrap analyses, Cross Correlation and Dynamic Time Warping outperform Mutual Information and Wavelet Coherence for all considered maximum lags, with reproducible results. These results highlight the need to set specific guidelines as the high degree of customization of the signal processing procedures prevents the comparability between studies, their reproducibility and, ultimately, undermines the possibility of extracting new knowledge.
尽管神经成像技术取得了巨大进步,人际大脑研究的重要性也日益凸显,但很少有研究评估测量脑-脑耦合最合适的计算方法。在这里,我们专注于检测二元组中脑耦合的信号处理方法。从一个功能性近红外光谱信号的公共数据集(N = 24个二元组)中,我们通过随机化得出了一个合成对照条件,我们研究了四种最常用的信号相似性度量的有效性:互相关、互信息、小波相干和动态时间规整。我们还通过允许最大滞后范围内的未对齐来考虑信号之间的时间变化。从以科恩d计算的观察效应大小开始,功效分析表明需要高样本量([公式:见正文])才能检测到显著的脑耦合。因此,我们讨论了采用专门统计方法的必要性,并提出自助法作为一种替代方法,以避免对结果过度惩罚。在我们的设置中,基于自助法分析,对于所有考虑的最大滞后,互相关和动态时间规整的性能优于互信息和小波相干,结果具有可重复性。这些结果凸显了制定特定指南的必要性,因为信号处理程序的高度定制性妨碍了研究之间的可比性、可重复性,最终削弱了提取新知识的可能性。