Suppr超能文献

脑电图(EEG)参考选择对EEG信号复杂性和整合性的信息论测度的影响

The Effect of Electroencephalogram (EEG) Reference Choice on Information-Theoretic Measures of the Complexity and Integration of EEG Signals.

作者信息

Trujillo Logan T, Stanfield Candice T, Vela Ruben D

机构信息

Department of Psychology, Texas State UniversitySan Marcos, TX, United States.

出版信息

Front Neurosci. 2017 Jul 25;11:425. doi: 10.3389/fnins.2017.00425. eCollection 2017.

Abstract

Converging evidence suggests that human cognition and behavior emerge from functional brain networks interacting on local and global scales. We investigated two information-theoretic measures of functional brain segregation and integration-interaction complexity C (X), and integration I(X)-as applied to electroencephalographic (EEG) signals and how these measures are affected by choice of EEG reference. C(X) is a statistical measure of the system entropy accounted for by interactions among its elements, whereas I(X) indexes the overall deviation from statistical independence of the individual elements of a system. We recorded 72 channels of scalp EEG from human participants who sat in a wakeful resting state (interleaved counterbalanced eyes-open and eyes-closed blocks). C(X) and I(X) of the EEG signals were computed using four different EEG references: linked-mastoids (LM) reference, average (AVG) reference, a Laplacian (LAP) "reference-free" transformation, and an infinity (INF) reference estimated via the Reference Electrode Standardization Technique (REST). Fourier-based power spectral density (PSD), a standard measure of resting state activity, was computed for comparison and as a check of data integrity and quality. We also performed dipole source modeling in order to assess the accuracy of neural source C(X) and I(X) estimates obtained from scalp-level EEG signals. C(X) was largest for the LAP transformation, smallest for the LM reference, and at intermediate values for the AVG and INF references. I(X) was smallest for the LAP transformation, largest for the LM reference, and at intermediate values for the AVG and INF references. Furthermore, across all references, C(X) and I(X) reliably distinguished between resting-state conditions (larger values for eyes-open vs. eyes-closed). These findings occurred in the context of the overall expected pattern of resting state PSD. Dipole modeling showed that simulated scalp EEG-level C(X) and I(X) reflected changes in underlying neural source dependencies, but only for higher levels of integration and with highest accuracy for the LAP transformation. Our observations suggest that the Laplacian-transformation should be preferred for the computation of scalp-level C(X) and I(X) due to its positive impact on EEG signal quality and statistics, reduction of volume-conduction, and the higher accuracy this provides when estimating scalp-level EEG complexity and integration.

摘要

越来越多的证据表明,人类的认知和行为源自于在局部和全局尺度上相互作用的功能性脑网络。我们研究了两种用于功能性脑分离和整合的信息论度量——交互复杂性C(X)和整合度I(X),并将其应用于脑电图(EEG)信号,以及这些度量如何受到EEG参考选择的影响。C(X)是一种统计度量,用于衡量系统元素之间相互作用所导致的系统熵,而I(X)则表示系统单个元素与统计独立性的总体偏差。我们记录了处于清醒静息状态(睁眼和闭眼状态交替平衡)的人类参与者的72导头皮脑电图。使用四种不同的EEG参考计算EEG信号的C(X)和I(X):双乳突( LM)参考、平均(AVG)参考、拉普拉斯(LAP)“无参考”变换以及通过参考电极标准化技术(REST)估计的无穷大(INF)参考。计算基于傅里叶的功率谱密度(PSD),这是一种静息状态活动的标准度量,用于比较并检查数据的完整性和质量。我们还进行了偶极子源建模,以评估从头皮水平EEG信号获得的神经源C(X)和I(X)估计的准确性。对于LAP变换,C(X)最大;对于LM参考,C(X)最小;对于AVG和INF参考,C(X)处于中间值。对于LAP变换,I(X)最小;对于LM参考,I(X)最大;对于AVG和INF参考,I(X)处于中间值。此外,在所有参考条件下,C(X)和I(X)都能可靠地区分静息状态条件(睁眼时的值大于闭眼时)。这些发现出现在静息状态PSD的总体预期模式背景下。偶极子建模表明,模拟的头皮EEG水平的C(X)和I(X)反映了潜在神经源依赖性的变化,但仅适用于更高水平的整合,并且对于LAP变换具有最高的准确性。我们的观察结果表明,由于拉普拉斯变换对EEG信号质量和统计有积极影响,减少了容积传导,并且在估计头皮水平EEG复杂性和整合度时提供了更高准确性,因此在计算头皮水平的C(X)和I(X)时应优先选择拉普拉斯变换。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c2af/5524886/de68b7768263/fnins-11-00425-g0001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验