论文标题
使用基于动作的结构大脑网络模型来研究认知能力
Investigating cognitive ability using action-based models of structural brain networks
论文作者
论文摘要
网络神经科学的最新发展强调了开发用于分析和建模脑网络的技术的重要性。研究复杂神经系统的一种特别有力的方法是制定使用接线规则来综合网络与给定连接组的拓扑结合的网络。成功的模型可以突出组织组织的原理(确定由接线规则而不是出现的结构特征),并可能揭示其成长和发展的机制。先前的研究表明,这样的模型可以验证空间嵌入和其他(非空间)布线规则在塑造人连接组的网络拓扑方面的有效性。在这项研究中,我们提出了基于动作的模型的变体,该模型结合了能够解释人类连接拓扑的各种生成因素。我们通过评估其解释受试者间变异性的能力来测试模型的描述有效性。我们的分析提供了证据,表明几何约束对于大脑区域之间的连通性至关重要,而依赖拓扑和几何特性的基于动作的模型可以解释结构网络属性的受试者间变异性。此外,我们测试了受试者优化模型的参数与认知能力的各种度量之间的相关性,并发现更高的认知能力与个人形成长期或非本地连接的趋势有关。
Recent developments in network neuroscience have highlighted the importance of developing techniques for analyzing and modeling brain networks. A particularly powerful approach for studying complex neural systems is to formulate generative models that use wiring rules to synthesize networks closely resembling the topology of a given connectome. Successful models can highlight the principles by which a network is organized (identify structural features that arise from wiring rules versus those that emerge) and potentially uncover the mechanisms by which it grows and develops. Previous research has shown that such models can validate the effectiveness of spatial embedding and other (non-spatial) wiring rules in shaping the network topology of the human connectome. In this research, we propose variants of the action-based model that combine a variety of generative factors capable of explaining the topology of the human connectome. We test the descriptive validity of our models by evaluating their ability to explain between-subject variability. Our analysis provides evidence that geometric constraints are vital for connectivity between brain regions, and an action-based model relying on both topological and geometric properties can account for between-subject variability in structural network properties. Further, we test correlations between parameters of subject-optimized models and various measures of cognitive ability and find that higher cognitive ability is associated with an individual's tendency to form long-range or non-local connections.