Monarch Research Institute, Monarch Mental Health Group, Sydney, NSW, Australia; School of Medicine and Psychology, The Australian National University, Canberra, ACT, Australia; Central Clinical School, Department of Psychiatry, Monash University, Victoria, Australia.
School of Physics, University of Sydney, Camperdown, NSW, Australia.
Neural Netw. 2024 Mar;171:171-185. doi: 10.1016/j.neunet.2023.12.007. Epub 2023 Dec 6.
Previous research has examined resting electroencephalographic (EEG) data to explore brain activity related to meditation. However, previous research has mostly examined power in different frequency bands. The practical objective of this study was to comprehensively test whether other types of time-series analysis methods are better suited to characterize brain activity related to meditation. To achieve this, we compared >7000 time-series features of the EEG signal to comprehensively characterize brain activity differences in meditators, using many measures that are novel in meditation research. Eyes-closed resting-state EEG data from 49 meditators and 46 non-meditators was decomposed into the top eight principal components (PCs). We extracted 7381 time-series features from each PC and each participant and used them to train classification algorithms to identify meditators. Highly differentiating individual features from successful classifiers were analysed in detail. Only the third PC (which had a central-parietal maximum) showed above-chance classification accuracy (67 %, p = 0.007), for which 405 features significantly distinguished meditators (all p < 0.05). Top-performing features indicated that meditators exhibited more consistent statistical properties across shorter subsegments of their EEG time-series (higher stationarity) and displayed an altered distributional shape of values about the mean. By contrast, classifiers trained with traditional band-power measures did not distinguish the groups (p > 0.05). Our novel analysis approach suggests the key signatures of meditators' brain activity are higher temporal stability and a distribution of time-series values suggestive of longer, larger, or more frequent non-outlying voltage deviations from the mean within the third PC of their EEG data. The higher temporal stability observed in this EEG component might underpin the higher attentional stability associated with meditation. The novel time-series properties identified here have considerable potential for future exploration in meditation research and the analysis of neural dynamics more broadly.
先前的研究已经检查了静息脑电图 (EEG) 数据,以探索与冥想相关的大脑活动。然而,先前的研究大多检查了不同频带中的功率。本研究的实际目的是全面测试其他类型的时间序列分析方法是否更适合描述与冥想相关的大脑活动。为此,我们比较了 EEG 信号的 >7000 个时间序列特征,以全面描述冥想者的大脑活动差异,使用了许多在冥想研究中新颖的措施。来自 49 名冥想者和 46 名非冥想者的闭眼静息状态 EEG 数据被分解为前八个主成分 (PC)。我们从每个 PC 和每个参与者中提取了 7381 个时间序列特征,并使用它们来训练分类算法以识别冥想者。从成功的分类器中提取高度区分的个体特征,并进行详细分析。只有第三个 PC(具有中央顶极最大值)显示出高于机会的分类准确性(67%,p=0.007),其中 405 个特征显着区分了冥想者(所有 p<0.05)。表现最佳的特征表明,冥想者在其 EEG 时间序列的较短子段中表现出更一致的统计特性(更高的稳定性),并且表现出关于平均值的数值分布形状的改变。相比之下,使用传统频带功率测量值训练的分类器无法区分组(p>0.05)。我们的新分析方法表明,冥想者大脑活动的关键特征是更高的时间稳定性和时间序列值的分布,表明在 EEG 数据的第三个 PC 中,平均值的电压偏差更大、更大或更频繁。在这个 EEG 成分中观察到的更高时间稳定性可能是与冥想相关的更高注意力稳定性的基础。这里确定的新颖时间序列特性在未来的冥想研究和更广泛的神经动力学分析中具有很大的探索潜力。