Li Xuan, Wu Yunqiao, Wei Mengting, Guo Yiyun, Yu Zhenhua, Wang Haixian, Li Zhanli, Fan Hui
Key Laboratory of Child Development and Learning Science of Ministry of Education, School of Biological Science and Medical Engineering, Southeast University, Nanjing, 210096 Jiangsu People's Republic of China.
Institute of Psychology, Chinese Academy of Sciences, Beijing, 100101 People's Republic of China.
Cogn Neurodyn. 2021 Aug;15(4):621-636. doi: 10.1007/s11571-020-09646-x. Epub 2020 Nov 4.
Phase synchronization has been an effective measurement of functional connectivity, detecting similar dynamics over time among distinct brain regions. However, traditional phase synchronization-based functional connectivity indices have been proved to have some drawbacks. For example, the phase locking value (PLV) index is sensitive to volume conduction, while the phase lag index (PLI) and the weighted phase lag index (wPLI) are easily affected by noise perturbations. In addition, thresholds need to be applied to these indices to obtain the binary adjacency matrix that determines the connections. However, the selection of the thresholds is generally arbitrary. To address these issues, in this paper we propose a novel index of functional connectivity, named the phase lag based on the Wilcoxon signed-rank test (PLWT). Specifically, it characterizes the functional connectivity based on the phase lag with a weighting procedure to reduce the influence of volume conduction and noise. Besides, it automatically identifies the important connections without relying on thresholds, by taking advantage of the framework of the Wilcoxon signed-rank test. The performance of the proposed PLWT index is evaluated on simulated electroencephalograph (EEG) datasets, as well as on two resting-state EEG datasets. The experimental results on the simulated EEG data show that the PLWT index is robust to volume conduction and noise. Furthermore, the brain functional networks derived by PLWT on the real EEG data exhibit a reasonable scale-free characteristic and high test-retest (TRT) reliability of graph measures. We believe that the proposed PLWT index provides a useful and reliable tool to identify the underlying neural interactions, while effectively diminishing the influence of volume conduction and noise.
相位同步一直是功能连接性的一种有效测量方法,可检测不同脑区随时间的相似动态。然而,传统的基于相位同步的功能连接性指标已被证明存在一些缺点。例如,相位锁定值(PLV)指标对容积传导敏感,而相位滞后指标(PLI)和加权相位滞后指标(wPLI)容易受到噪声干扰的影响。此外,需要对这些指标应用阈值以获得确定连接的二元邻接矩阵。然而,阈值的选择通常是任意的。为了解决这些问题,在本文中我们提出了一种新的功能连接性指标,称为基于威尔科克森符号秩检验的相位滞后(PLWT)。具体而言,它基于相位滞后并通过加权程序来表征功能连接性,以减少容积传导和噪声的影响。此外,它利用威尔科克森符号秩检验的框架,无需依赖阈值即可自动识别重要连接。在模拟脑电图(EEG)数据集以及两个静息态EEG数据集上评估了所提出的PLWT指标的性能。模拟EEG数据的实验结果表明,PLWT指标对容积传导和噪声具有鲁棒性。此外,PLWT在真实EEG数据上导出的脑功能网络表现出合理的无标度特性和图测度的高重测(TRT)可靠性。我们相信,所提出的PLWT指标提供了一个有用且可靠的工具来识别潜在的神经相互作用,同时有效减少容积传导和噪声的影响。