Brain Connectivity Laboratory, Department of Neuroscience and Neurorehabilitation, IRCCS San Raffaele Roma, Rome, Italy.
Department of Theoretical and Applied Sciences, eCampus University, Novedrate (Como), Italy.
Geroscience. 2023 Jun;45(3):1857-1867. doi: 10.1007/s11357-023-00733-5. Epub 2023 Jan 24.
Hyperventilation (HV) is a voluntary activity that causes changes in the neuronal firing characteristics noticeable in the electroencephalogram (EEG) signals. HV-related changes have been scribed to modulation of pO2/pCO2 blood contents. Therefore, an HV test is routinely used for highlighting brain abnormalities including those depending to neurobiological mechanisms at the basis of neurodegenerative disorders. The main aim of the present paper is to study the effectiveness of HV test in modifying the functional connectivity from the EEG signals that can be typical of a prodromal state of Alzheimer's disease (AD), the Mild Cognitive Impairment prodromal to Alzheimer condition. MCI subjects and a group of age-matched healthy elderly (Ctrl) were enrolled and subjected to EEG recording during HV, eyes-closed (EC), and eyes-open (EO) conditions. Since the cognitive decline in MCI seems to be a progressive disconnection syndrome, the approach we used in the present study is the graph theory, which allows to describe brain networks with a series of different parameters. Small world (SW), modularity (M), and global efficiency (GE) indexes were computed among the EC, EO, and HV conditions comparing the MCI group to the Ctrl one. All the three graph parameters, computed in the typical EEG frequency bands, showed significant changes among the three conditions, and more interestingly, a significant difference in the GE values between the MCI group and the Ctrl one was obtained, suggesting that the combination of HV test and graph theory parameters should be a powerful tool for the detection of possible cerebral dysfunction and alteration.
过度通气(HV)是一种自愿活动,会导致脑电图(EEG)信号中神经元放电特征发生变化。HV 相关的变化归因于 pO2/pCO2 血液含量的调制。因此,HV 测试通常用于突出大脑异常,包括那些依赖于神经退行性疾病基础上的神经生物学机制的异常。本文的主要目的是研究 HV 测试在改变 EEG 信号功能连接方面的有效性,这种改变可能是阿尔茨海默病(AD)前驱期的特征,即轻度认知障碍前驱期到阿尔茨海默病状态。我们招募了轻度认知障碍患者和一组年龄匹配的健康老年人(Ctrl),并在 HV、闭眼(EC)和睁眼(EO)条件下进行 EEG 记录。由于 MCI 患者的认知能力下降似乎是一种进行性脱连接综合征,因此我们在本研究中使用了图论方法,该方法允许用一系列不同的参数来描述大脑网络。在 EC、EO 和 HV 条件下计算了小世界(SW)、模块性(M)和全局效率(GE)指数,并将 MCI 组与 Ctrl 组进行了比较。所有三个图参数,在典型的 EEG 频带中计算,在三种条件下都显示出显著的变化,更有趣的是,在 MCI 组和 Ctrl 组之间获得了 GE 值的显著差异,表明 HV 测试和图论参数的组合应该是检测可能的大脑功能障碍和改变的有力工具。