Department of Psychiatry, Massachusetts General Hospital and Harvard Medical School, Boston, MA, USA.
Department of Psychiatry, Massachusetts General Hospital and Harvard Medical School, Boston, MA, USA.
Neuroimage. 2020 Aug 15;217:116895. doi: 10.1016/j.neuroimage.2020.116895. Epub 2020 May 1.
Working memory engages multiple distributed brain networks to support goal-directed behavior and higher order cognition. Dysfunction in working memory has been associated with cognitive impairment in neuropsychiatric disorders. It is important to characterize the interactions among cortical networks that are sensitive to working memory load since such interactions can also hint at the impaired dynamics in patients with poor working memory performance. Functional connectivity is a powerful tool used to investigate coordinated activity among local and distant brain regions. Here, we identified connectivity footprints that differentiate task states representing distinct working memory load levels. We employed linear support vector machines to decode working memory load from task-based functional connectivity matrices in 177 healthy adults. Using neighborhood component analysis, we also identified the most important connectivity pairs in classifying high and low working memory loads. We found that between-network coupling among frontoparietal, ventral attention and default mode networks, and within-network connectivity in ventral attention network are the most important factors in classifying low vs. high working memory load. Task-based within-network connectivity profiles at high working memory load in ventral attention and default mode networks were the most predictive of load-related increases in response times. Our findings reveal the large-scale impact of working memory load on the cerebral cortex and highlight the complex dynamics of intrinsic brain networks during active task states.
工作记忆涉及多个分布式脑网络,以支持目标导向的行为和更高阶的认知。工作记忆功能障碍与神经精神障碍中的认知障碍有关。描述对工作记忆负荷敏感的皮质网络之间的相互作用很重要,因为这些相互作用也可以暗示在工作记忆表现不佳的患者中动态受损。功能连接是一种强大的工具,用于研究局部和远距离脑区之间的协调活动。在这里,我们确定了连接足迹,可以区分代表不同工作记忆负荷水平的任务状态。我们在 177 名健康成年人中使用线性支持向量机从基于任务的功能连接矩阵解码工作记忆负荷。使用邻域成分分析,我们还确定了在分类高和低工作记忆负荷时最重要的连接对。我们发现,额顶网络、腹侧注意网络和默认模式网络之间的网络间耦合,以及腹侧注意网络内的连接,是区分低与高工作记忆负荷的最重要因素。腹侧注意和默认模式网络在高工作记忆负荷下的基于任务的网络内连接特征是预测与负荷相关的反应时间增加的最关键因素。我们的研究结果揭示了工作记忆负荷对大脑皮层的广泛影响,并强调了内在脑网络在主动任务状态下的复杂动态。