Betzel Richard F, Avena-Koenigsberger Andrea, Goñi Joaquín, He Ye, de Reus Marcel A, Griffa Alessandra, Vértes Petra E, Mišic Bratislav, Thiran Jean-Philippe, Hagmann Patric, van den Heuvel Martijn, Zuo Xi-Nian, Bullmore Edward T, Sporns Olaf
Indiana University, Psychological and Brain Sciences, Bloomington IN, 47405, USA.
Indiana University, Psychological and Brain Sciences, Bloomington IN, 47405, USA; Indiana University, Network Science Institute, Bloomington IN 47405, USA.
Neuroimage. 2016 Jan 1;124(Pt A):1054-1064. doi: 10.1016/j.neuroimage.2015.09.041. Epub 2015 Sep 30.
The human connectome represents a network map of the brain's wiring diagram and the pattern into which its connections are organized is thought to play an important role in cognitive function. The generative rules that shape the topology of the human connectome remain incompletely understood. Earlier work in model organisms has suggested that wiring rules based on geometric relationships (distance) can account for many but likely not all topological features. Here we systematically explore a family of generative models of the human connectome that yield synthetic networks designed according to different wiring rules combining geometric and a broad range of topological factors. We find that a combination of geometric constraints with a homophilic attachment mechanism can create synthetic networks that closely match many topological characteristics of individual human connectomes, including features that were not included in the optimization of the generative model itself. We use these models to investigate a lifespan dataset and show that, with age, the model parameters undergo progressive changes, suggesting a rebalancing of the generative factors underlying the connectome across the lifespan.
人类连接组代表了大脑布线图的网络图谱,其连接的组织模式被认为在认知功能中起着重要作用。塑造人类连接组拓扑结构的生成规则仍未完全被理解。早期在模式生物中的研究表明,基于几何关系(距离)的布线规则可以解释许多但可能不是所有的拓扑特征。在这里,我们系统地探索了一个人类连接组生成模型家族,这些模型产生了根据不同布线规则设计的合成网络,这些规则结合了几何和广泛的拓扑因素。我们发现,几何约束与同嗜性附着机制的结合可以创建与个体人类连接组的许多拓扑特征紧密匹配的合成网络,包括那些在生成模型本身的优化中未包含的特征。我们使用这些模型来研究一个寿命数据集,并表明随着年龄的增长,模型参数会发生渐进变化,这表明在整个生命周期中,连接组背后的生成因素在重新平衡。