Cerquera Alexander, Vollebregt Madelon A, Arns Martijn
1 School of Electronics and Biomedical Engineering, Research Group Complex Systems, Universidad Antonio Nariño, Bogota, Colombia.
2 J. Crayton Pruitt Family Department of Biomedical Engineering, Brain Mapping Lab, University of Florida, Gainesville, FL, USA.
Clin EEG Neurosci. 2018 Mar;49(2):71-78. doi: 10.1177/1550059417724695. Epub 2017 Aug 14.
Nonlinear analysis of EEG recordings allows detection of characteristics that would probably be neglected by linear methods. This study aimed to determine a suitable epoch length for nonlinear analysis of EEG data based on its recurrence rate in EEG alpha activity (electrodes Fz, Oz, and Pz) from 28 healthy and 64 major depressive disorder subjects. Two nonlinear metrics, Lempel-Ziv complexity and scaling index, were applied in sliding windows of 20 seconds shifted every 1 second and in nonoverlapping windows of 1 minute. In addition, linear spectral analysis was carried out for comparison with the nonlinear results. The analysis with sliding windows showed that the cortical dynamics underlying alpha activity had a recurrence period of around 40 seconds in both groups. In the analysis with nonoverlapping windows, long-term nonstationarities entailed changes over time in the nonlinear dynamics that became significantly different between epochs across time, which was not detected with the linear spectral analysis. Findings suggest that epoch lengths shorter than 40 seconds neglect information in EEG nonlinear studies. In turn, linear analysis did not detect characteristics from long-term nonstationarities in EEG alpha waves of control subjects and patients with major depressive disorder patients. We recommend that application of nonlinear metrics in EEG time series, particularly of alpha activity, should be carried out with epochs around 60 seconds. In addition, this study aimed to demonstrate that long-term nonlinearities are inherent to the cortical brain dynamics regardless of the presence or absence of a mental disorder.
脑电图记录的非线性分析能够检测出线性方法可能会忽略的特征。本研究旨在根据28名健康受试者和64名重度抑郁症患者脑电图α活动(电极Fz、Oz和Pz)中的递归率,确定适合脑电图数据非线性分析的时段长度。在每1秒移动一次的20秒滑动窗口和1分钟的非重叠窗口中应用了两种非线性指标,即莱姆尔-齐夫复杂度和标度指数。此外,还进行了线性频谱分析以与非线性结果进行比较。滑动窗口分析表明,两组中α活动背后的皮层动力学都有一个约40秒的递归周期。在非重叠窗口分析中,长期的非平稳性导致非线性动力学随时间发生变化,不同时段之间存在显著差异,而线性频谱分析未检测到这一点。研究结果表明,在脑电图非线性研究中,短于40秒的时段长度会忽略信息。反过来,线性分析未检测到健康受试者和重度抑郁症患者脑电图α波中来自长期非平稳性的特征。我们建议,在脑电图时间序列,特别是α活动的时间序列中应用非线性指标时,应采用约60秒的时段。此外,本研究旨在证明,无论是否存在精神障碍,长期非线性都是皮层脑动力学所固有的。