Toppi Jlenia, Astolfi Laura, Risetti Monica, Anzolin Alessandra, Kober Silvia E, Wood Guilherme, Mattia Donatella
Department of Computer, Control and Management Engineering, Sapienza University of Rome, Rome, Italy.
Neuroelectrical Imaging and Brain-Computer Interface Laboratory, Fondazione Santa Lucia IRCCS, Rome, Italy.
Front Hum Neurosci. 2018 Jan 12;11:637. doi: 10.3389/fnhum.2017.00637. eCollection 2017.
Several non-invasive imaging methods have contributed to shed light on the brain mechanisms underlying working memory (WM). The aim of the present study was to depict the topology of the relevant EEG-derived brain networks associated to distinct operations of WM function elicited by the Sternberg Item Recognition Task (SIRT) such as encoding, storage, and retrieval in healthy, middle age (46 ± 5 years) adults. High density EEG recordings were performed in 17 participants whilst attending a visual SIRT. Neural correlates of WM were assessed by means of a combination of EEG signal processing methods (i.e., time-varying connectivity estimation and graph theory), in order to extract synthetic descriptors of the complex networks underlying the encoding, storage, and retrieval phases of WM construct. The group analysis revealed that the encoding phase exhibited a significantly higher topology of EEG networks with respect to storage and retrieval in all EEG frequency oscillations, thus indicating that during the encoding of items the global network organization could "" promote the information flow between WM sub-networks. We also found that the magnitude of such configuration could predict subject behavioral performance when memory load increases as indicated by the negative correlation between Reaction Time and the values estimated during the encoding in the alpha band in both 4 and 6 digits conditions. At the local scale, the values of the which measures the degree of in- and out- information flow between scalp areas were found to specifically distinguish the within the relevant sub-networks associated to each of the three different WM phases, according to the different role of the sub-network of regions in the different WM phases. Our findings indicate that the use of EEG-derived connectivity measures and their related topological indices might offer a reliable and yet affordable approach to monitor WM components and thus theoretically support the clinical assessment of cognitive functions in presence of WM decline/impairment, as it occurs after stroke.
几种非侵入性成像方法有助于揭示工作记忆(WM)背后的大脑机制。本研究的目的是描绘与斯特恩伯格项目识别任务(SIRT)引发的WM功能的不同操作(如编码、存储和检索)相关的脑电图衍生脑网络的拓扑结构,该研究针对的是健康的中年(46±5岁)成年人。在17名参与者进行视觉SIRT时进行了高密度脑电图记录。通过脑电图信号处理方法(即时变连通性估计和图论)的组合来评估WM的神经相关性,以便提取WM构建的编码、存储和检索阶段基础复杂网络的综合描述符。组分析显示,在所有脑电图频率振荡中,编码阶段相对于存储和检索阶段表现出显著更高的脑电图网络拓扑结构,这表明在项目编码期间,全局网络组织可以“促进WM子网之间的信息流”。我们还发现,当记忆负荷增加时,这种配置的大小可以预测受试者的行为表现,如在4位和6位数字条件下,反应时间与α波段编码期间估计的“值”之间的负相关所示。在局部尺度上,根据不同WM阶段区域子网的不同作用,发现测量头皮区域内外信息流程度的“值”能够特别区分与三个不同WM阶段中每个阶段相关的相关子网内的“情况”。我们的研究结果表明,使用脑电图衍生的连通性测量及其相关拓扑指数可能提供一种可靠且经济实惠的方法来监测WM组件,从而在理论上支持对存在WM下降/损伤(如中风后出现的情况)时的认知功能进行临床评估。