Brain Connectivity Laboratory, Department of Neuroscience and Neurorehabilitation, IRCCS San Raffaele Pisana, Rome, Italy.
Department of Neurorehabilitation Sciences, Casa Cura Policlinico, Milano, Italy.
Mech Ageing Dev. 2021 Jun;196:111472. doi: 10.1016/j.mad.2021.111472. Epub 2021 Mar 22.
Aging is a multifactorial physiological process characterized by the accumulation of degenerative processes impacting on different brain functions, including the cognitive one. A tool largely employed in the investigation of brain networks is the electroencephalogram (EEG). Given the cerebral complexity and dynamism, many non-linear approaches have been applied to explore age-related brain electrical activity modulation detected by the EEG: one of them is the entropy, which measures the disorder of a system. The present study had the aim to investigate aging influence on brain dynamics applying Approximate Entropy (ApEn) parameter to resting state EEG data of 68 healthy adult participants, divided with respect to their age in two groups, focusing on several specialized brain regions. Results showed that elderly participants present higher ApEn values than younger participants in the central, parietal and occipital areas, confirming the hypothesis that aging is characterized by an evolution of brain dynamics. Such findings may reflect a reduced synchronization of the neural networks cyclic activity, due to the reduction of cerebral connections typically found in aging process. Understanding the dynamics of brain networks by applying the entropy parameter could be useful for developing appropriate and personalized rehabilitation programs and for future studies on neurodegenerative diseases.
衰老是一种多因素的生理过程,其特征是积累的退行性过程影响不同的大脑功能,包括认知功能。脑电图(EEG)是广泛用于研究大脑网络的工具。鉴于大脑的复杂性和动态性,已经应用了许多非线性方法来探索 EEG 检测到的与年龄相关的脑电活动调制:其中之一是熵,它测量系统的无序性。本研究旨在通过应用近似熵(ApEn)参数来研究衰老对大脑动力学的影响,对 68 名健康成年参与者的静息状态 EEG 数据进行分析,根据年龄将参与者分为两组,重点关注几个特定的大脑区域。结果表明,与年轻参与者相比,老年参与者在中央、顶叶和枕叶区域的 ApEn 值更高,这证实了衰老的特征是大脑动力学的演变的假设。这些发现可能反映了由于衰老过程中常见的大脑连接减少,导致神经网络周期性活动的同步性降低。通过应用熵参数来理解大脑网络的动力学可能有助于开发适当的个性化康复计划,并为未来的神经退行性疾病研究提供参考。