Li Wei, Wang Miao, Zhu Wenzhen, Qin Yuanyuan, Huang Yue, Chen Xi
School of Automation, Huazhong University of Science and Technology, Wuhan, 430074, P. R. China.
Image Processing and Intelligent Control Key Laboratory of Education Ministry of China, Wuhan, 430074, P. R. China.
Sci Rep. 2016 Sep 28;6:34156. doi: 10.1038/srep34156.
Functional brain connectivity is altered during the pathological processes of Alzheimer's disease (AD), but the specific evolutional rules are insufficiently understood. Resting-state functional magnetic resonance imaging indicates that the functional brain networks of individuals with AD tend to be disrupted in hub-like nodes, shifting from a small world architecture to a random profile. Here, we proposed a novel evolution model based on computational experiments to simulate the transition of functional brain networks from normal to AD. Specifically, we simulated the rearrangement of edges in a pathological process by a high probability of disconnecting edges between hub-like nodes, and by generating edges between random pair of nodes. Subsequently, four topological properties and a nodal distribution were used to evaluate our model. Compared with random evolution as a null model, our model captured well the topological alteration of functional brain networks during the pathological process. Moreover, we implemented two kinds of network attack to imitate the damage incurred by the brain in AD. Topological changes were better explained by 'hub attacks' than by 'random attacks', indicating the fragility of hubs in individuals with AD. This model clarifies the disruption of functional brain networks in AD, providing a new perspective on topological alterations.
在阿尔茨海默病(AD)的病理过程中,大脑功能连接会发生改变,但具体的演变规律尚未得到充分了解。静息态功能磁共振成像表明,AD患者的大脑功能网络往往在类似枢纽的节点处受到破坏,从小世界架构转变为随机模式。在此,我们基于计算实验提出了一种新颖的演化模型,以模拟大脑功能网络从正常到AD的转变。具体而言,我们通过高概率断开类似枢纽的节点之间的边,并在随机节点对之间生成边,来模拟病理过程中边的重新排列。随后,使用四个拓扑属性和一个节点分布来评估我们的模型。与作为零模型的随机演化相比,我们的模型很好地捕捉了病理过程中大脑功能网络的拓扑变化。此外,我们实施了两种网络攻击来模拟AD患者大脑所遭受的损伤。“枢纽攻击”比“随机攻击”能更好地解释拓扑变化,这表明AD患者中枢纽的脆弱性。该模型阐明了AD中大脑功能网络的破坏,为拓扑变化提供了新的视角。