Baltic Center for Artificial Intelligence and Neurotechnology, Immanuel Kant Baltic Federal University, Kaliningrad 236041, Russia.
Neuroscience and Cognitive Technology Laboratory, Innopolis University, Kazan 420500, Russia.
Sensors (Basel). 2022 Mar 25;22(7):2537. doi: 10.3390/s22072537.
Large-scale functional connectivity is an important indicator of the brain's normal functioning. The abnormalities in the connectivity pattern can be used as a diagnostic tool to detect various neurological disorders. The present paper describes the functional connectivity assessment based on artificial intelligence to reveal age-related changes in neural response in a simple motor execution task. Twenty subjects of two age groups performed repetitive motor tasks on command, while the whole-scalp EEG was recorded. We applied the model based on the feed-forward multilayer perceptron to detect functional relationships between five groups of sensors located over the frontal, parietal, left, right, and middle motor cortex. Functional dependence was evaluated with the predicted and original time series coefficient of determination. Then, we applied statistical analysis to highlight the significant features of the functional connectivity network assessed by our model. Our findings revealed the connectivity pattern is consistent with modern ideas of the healthy aging effect on neural activation. Elderly adults demonstrate a pronounced activation of the whole-brain theta-band network and decreased activation of frontal-parietal and motor areas of the mu-band. Between-subject analysis revealed a strengthening of inter-areal task-relevant links in elderly adults. These findings can be interpreted as an increased cognitive demand in elderly adults to perform simple motor tasks with the dominant hand, induced by age-related working memory decline.
大规模功能连接是大脑正常功能的一个重要指标。连接模式的异常可以作为一种诊断工具,用于检测各种神经障碍。本文描述了基于人工智能的功能连接评估,以揭示在简单运动执行任务中与年龄相关的神经反应变化。二十名来自两个年龄组的受试者根据指令执行重复的运动任务,同时记录整个头皮脑电图。我们应用基于前馈多层感知器的模型来检测位于额叶、顶叶、左、右和中央运动皮质的五组传感器之间的功能关系。用预测和原始时间序列确定系数来评估功能依赖性。然后,我们应用统计分析来突出我们的模型评估的功能连接网络的显著特征。我们的研究结果揭示了连接模式与健康衰老对神经激活的现代观念一致。老年人表现出整个大脑θ波段网络的显著激活,以及额顶叶和μ波段运动区域的激活减少。个体间分析显示老年人的任务相关区域之间的联系增强。这些发现可以解释为老年人在执行用优势手进行的简单运动任务时,由于与年龄相关的工作记忆下降而导致认知需求增加。