Decoding aging and cognitive functioning through spatiotemporal EEG patterns: Introducing spatiotemporal information-based similarity analysis.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Wang Wan, Zhilin Gao, Zhongze Gu, Chung-Kang Peng, Xingran Cui
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Abstract

Exploring spatiotemporal patterns of high-dimensional electroencephalography (EEG) time series generated from complex brain system is crucial for deciphering aging and cognitive functioning. Analyzing high-dimensional EEG series poses challenges, particularly when employing distance-based methods for spatiotemporal dynamics. Therefore, we proposed an innovative methodology for multi-channel EEG data, termed as Spatiotemporal Information-based Similarity (STIBS) analysis. The core of this method is to first perform state space compression of multi-channel EEG time series using global field power, which can provide insight into the dynamic integration of spatiotemporal patterns between the steady states and non-steady states of brain. Subsequently, we quantify the pairwise differences and non-randomness of spatiotemporal patterns using an information-based similarity analysis. Results demonstrated that this method holds the potential to serve as a distinguishing marker between young and elderly on both pairwise differences and non-randomness indices. Young individuals and those with higher cognitive abilities exhibit more complex macrostructure and non-random spatiotemporal patterns, whereas both aging and cognitive decline lead to more randomized spatiotemporal patterns. We further extended the proposed analytics to brain regions adversarial STIBS (bra-STIBS), highlighting differences between young and elderly, as well as high and low cognitive groups. Furthermore, utilizing the STIBS-based XGBoost model yields superior recognition accuracy in aging (93.05%) and cognitive functioning (74.29%, 64.19%, and 80.28%, respectively, for attention, memory, and compatibility performance recognition). STIBS-based methodology not only contributes to the ongoing exploration of neurobiological changes in aging but also provides a powerful tool for characterizing the spatiotemporal nonlinear dynamics of the brain and their implications for cognitive functioning.

通过时空脑电图模式解码衰老和认知功能:引入基于时空信息的相似性分析。
探索复杂大脑系统生成的高维脑电图(EEG)时间序列的时空模式,对于解读衰老和认知功能至关重要。分析高维脑电图序列是一项挑战,尤其是在采用基于距离的时空动力学方法时。因此,我们提出了一种创新的多通道脑电图数据分析方法,即基于时空信息的相似性分析(STIBS)。该方法的核心是首先利用全局场功率对多通道脑电图时间序列进行状态空间压缩,从而深入了解大脑稳态和非稳态之间时空模式的动态整合。随后,我们利用基于信息的相似性分析量化了时空模式的成对差异和非随机性。结果表明,这种方法有可能在成对差异和非随机性指数方面成为区分年轻人和老年人的标志。年轻人和认知能力较强的人表现出更复杂的宏观结构和非随机时空模式,而衰老和认知能力下降则导致更随机的时空模式。我们进一步将提出的分析方法扩展到脑区对抗性 STIBS(bra-STIBS),突出了年轻人和老年人以及高认知能力组和低认知能力组之间的差异。此外,利用基于 STIBS 的 XGBoost 模型,在老龄化(93.05%)和认知功能(74.29%、64.19% 和 80.28%,分别用于注意力、记忆力和兼容性识别)方面获得了更高的识别准确率。基于 STIBS 的方法不仅有助于不断探索衰老过程中的神经生物学变化,还为描述大脑的时空非线性动态及其对认知功能的影响提供了强有力的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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