Department of Psychology, The Ohio State University, 1835 Neil Avenue, Columbus, OH 43210, United States.
Neuropsychologia. 2013 Nov;51(13):2918-29. doi: 10.1016/j.neuropsychologia.2013.08.010. Epub 2013 Aug 20.
Multiple sclerosis (MS) is a neurodegenerative, inflammatory disease of the central nervous system, resulting in physical and cognitive disturbances. The goal of the current study was to examine the association between network integrity and composite measures of cognition and disease severity in individuals with relapsing-remitting MS (RRMS), relative to healthy controls. All participants underwent a neuropsychological and neuroimaging session, where resting-state data was collected. Independent component analysis and dual regression were employed to examine network integrity in individuals with MS, relative to healthy controls. The MS sample exhibited less connectivity in the motor and visual networks, relative to healthy controls, after controlling for group differences in gray matter volume. However, no alterations were observed in the frontoparietal, executive control, or default-mode networks, despite previous evidence of altered neuronal patterns during tasks of exogenous processing. Whole-brain, voxel-wise regression analyses with disease severity and processing speed composites were also performed to elucidate the brain-behavior relationship with neuronal network integrity. Individuals with higher levels of disease severity demonstrated reduced intra-network connectivity of the motor network, and the executive control network, while higher disease burden was associated with greater inter-network connectivity between the medial visual network and areas involved in visuomotor learning. Our findings underscore the importance of examining resting-state oscillations in this population, both as a biomarker of disease progression and a potential target for therapeutic intervention.
多发性硬化症(MS)是一种中枢神经系统的神经退行性、炎症性疾病,导致身体和认知障碍。本研究的目的是研究与健康对照组相比,复发缓解型多发性硬化症(RRMS)患者的网络完整性与认知和疾病严重程度综合指标之间的关系。所有参与者都接受了神经心理学和神经影像学检查,在此期间收集了静息态数据。采用独立成分分析和双回归方法来检查 MS 患者与健康对照组之间的网络完整性。在控制了灰质体积的组间差异后,MS 组的运动和视觉网络的连通性明显低于健康对照组。然而,在外源性处理任务中观察到神经元模式改变的情况下,在前额顶叶、执行控制或默认模式网络中没有观察到改变。还进行了全脑、体素水平的回归分析,将疾病严重程度和处理速度综合指标与神经元网络完整性进行关联。疾病严重程度较高的个体表现出运动网络和执行控制网络的内部网络连通性降低,而较高的疾病负担与内侧视觉网络与涉及视觉运动学习的区域之间的网络间连通性增加有关。我们的研究结果强调了在该人群中检查静息态振荡的重要性,这既是疾病进展的生物标志物,也是潜在的治疗干预靶点。