Parameshwaran Dhanya, Thiagarajan Tara C
Sapien Labs, 1201 Wilson Blvd, 27th Floor, Arlington, VA 22209, USA.
Brain Sci. 2023 Oct 30;13(11):1528. doi: 10.3390/brainsci13111528.
To describe a novel measure of EEG signal variability that distinguishes cognitive brain states.
We describe a novel characterization of amplitude variability in the EEG signal termed "High Variability Periods" or "HVPs", defined as segments when the standard deviation of a moving window is continuously higher than the quartile cutoff. We characterize the parameter space of the metric in terms of window size, overlap, and threshold to suggest ideal parameter choice and compare its performance as a discriminator of brain state to alternate single channel measures of variability such as entropy, complexity, harmonic regression fit, and spectral measures.
We show that the average HVP duration provides a substantially distinct view of the signal relative to alternate metrics of variability and, when used in combination with these metrics, significantly enhances the ability to predict whether an individual has their eyes open or closed and is performing a working memory and Raven's pattern completion task. In addition, HVPs disappear under anesthesia and do not reappear in early periods of recovery.
HVP metrics enhance the discrimination of various brain states and are fast to estimate.
HVP metrics can provide an additional view of signal variability that has potential clinical application in the rapid discrimination of brain states.
描述一种区分认知脑状态的脑电图(EEG)信号变异性的新测量方法。
我们描述了一种脑电图信号幅度变异性的新特征,称为“高变异性时段”(HVPs),定义为移动窗口的标准差持续高于四分位数临界值的时间段。我们根据窗口大小、重叠和阈值来描述该指标的参数空间,以建议理想的参数选择,并将其作为脑状态判别指标的性能与其他单通道变异性测量方法进行比较,如熵、复杂度、谐波回归拟合和频谱测量。
我们表明,平均HVP持续时间相对于其他变异性指标能提供对信号的显著不同视角,并且当与这些指标结合使用时,能显著提高预测个体眼睛是睁开还是闭合以及是否正在执行工作记忆和瑞文图形完成任务的能力。此外,HVP在麻醉状态下消失,且在恢复早期不会再次出现。
HVP指标增强了对各种脑状态的区分能力,且估计速度快。
HVP指标可以提供信号变异性的另一种视角,在快速区分脑状态方面具有潜在的临床应用价值。