Mirjalili Mina, Zomorrodi Reza, Daskalakis Zafiris J, Blumberger Daniel M, Hill Sean L, Rajji Tarek K
Campbell Family Mental Health Research Institute, Centre for Addiction and Mental Health, Toronto, ON M6J 1H4, Canada.
Adult Neurodevelopment and Geriatric Psychiatry Division, Centre for Addiction and Mental Health, Toronto, ON M6J 1H4, Canada.
Cereb Cortex. 2025 Feb 5;35(2). doi: 10.1093/cercor/bhae492.
Electroencephalography is instrumental in understanding neurophysiological mechanisms underlying working memory. While numerous studies have associated electroencephalography features to working memory, understanding causal relationships leads to better characterization of the neurophysiological mechanisms that are directly linked to working memory. Personalized causal modeling is a tool to discover these direct links between brain features and working memory performance. Therefore, we applied this approach to electroencephalography data from 66 adult healthy participants collected while performing a 3-back working memory task. Using graphical causal modeling, we discovered causal neural oscillations of working memory performance and compared the causal features between two groups: high and low performers. Total number of causal features in high performers was higher than low performers. Among the causal features, right temporal gamma oscillation was ~5 times (z-score = 3.87, P = 0.0001) more frequently a causal feature among high performers than low performers. However, the power of causal temporal gamma oscillation was not different between the two groups. Our findings suggest that one potential approach to improve working memory performance is to induce more causal gamma oscillations. This can be achieved by generating more local gamma entrainment over the right temporal cortex, rather than simply increasing gamma power.
脑电图对于理解工作记忆背后的神经生理机制具有重要作用。虽然众多研究已将脑电图特征与工作记忆联系起来,但理解因果关系有助于更好地表征与工作记忆直接相关的神经生理机制。个性化因果建模是一种用于发现大脑特征与工作记忆表现之间这些直接联系的工具。因此,我们将这种方法应用于66名成年健康参与者在执行3-back工作记忆任务时收集的脑电图数据。通过图形因果建模,我们发现了工作记忆表现的因果神经振荡,并比较了高表现者和低表现者两组之间的因果特征。高表现者的因果特征总数高于低表现者。在因果特征中,右颞叶伽马振荡作为高表现者的因果特征比低表现者更频繁出现约5倍(z分数 = 3.87,P = 0.0001)。然而,两组之间因果颞叶伽马振荡的功率并无差异。我们的研究结果表明,提高工作记忆表现的一种潜在方法是诱导更多的因果伽马振荡。这可以通过在右颞叶皮质产生更多局部伽马同步来实现,而不是简单地增加伽马功率。