Brain Connectivity Laboratory, IRCCS San Raffaele Pisana, Rome, Italy.
Università Cattolica del Sacro Cuore, Istituto di Neurologia, Roma, Italia.
J Alzheimers Dis. 2018;66(2):471-481. doi: 10.3233/JAD-180342.
Electroencephalographic (EEG) rhythms are linked to any kind of learning and cognitive performance including motor tasks. The brain is a complex network consisting of spatially distributed networks dedicated to different functions including cognitive domains where dynamic interactions of several brain areas play a pivotal role. Brain connectome could be a useful approach not only to mechanisms underlying brain cognitive functions, but also to those supporting different mental states. This goal was approached via a learning task providing the possibility to predict performance and learning along physiological and pathological brain aging. Eighty-six subjects (22 healthy, 47 amnesic mild cognitive impairment, 17 Alzheimer's disease) were recruited reflecting the whole spectrum of normal and abnormal brain connectivity scenarios. EEG recordings were performed at rest, with closed eyes, both before and after the task (Sensory Motor Learning task consisting of a visual rotation paradigm). Brain network properties were described by Small World index (SW), representing a combination of segregation and integration properties. Correlation analyses showed that alpha 2 SW in pre-task significantly predict learning (r = -0.2592, p < 0.0342): lower alpha 2 SW (higher possibility to increase during task and better the learning of this task), higher the learning as measured by the number of reached targets. These results suggest that, by means of an innovative analysis applied to a low-cost and widely available techniques (SW applied to EEG), the functional connectome approach as well as conventional biomarkers would be effective methods for monitoring learning progress during training both in normal and abnormal conditions.
脑电图 (EEG) 节律与任何类型的学习和认知表现有关,包括运动任务。大脑是一个复杂的网络,由专门用于不同功能的空间分布网络组成,包括认知领域,其中几个大脑区域的动态相互作用起着关键作用。脑连接组学不仅是研究大脑认知功能的基础机制,也是研究支持不同心理状态的基础机制的有用方法。通过一项学习任务来实现这一目标,该任务提供了预测生理和病理大脑衰老过程中表现和学习的可能性。共招募了 86 名受试者(22 名健康,47 名遗忘型轻度认知障碍,17 名阿尔茨海默病),反映了正常和异常脑连接场景的全貌。在任务之前(包括任务期间)和之后(感觉运动学习任务,包括视觉旋转范式),在闭眼休息时进行 EEG 记录。脑网络特性通过小世界指数 (SW) 来描述,代表了分离和整合特性的组合。相关分析表明,任务前的 alpha2 SW 显著预测学习(r = -0.2592,p < 0.0342):alpha2 SW 越低(在任务中增加的可能性越大,对这个任务的学习越好),达到目标的数量越多,学习效果越好。这些结果表明,通过对一种创新的分析应用于一种低成本且广泛可用的技术(SW 应用于 EEG),功能连接组学方法以及传统生物标志物将是监测正常和异常条件下训练过程中学习进展的有效方法。