Department of Physiology, The University of Tokyo School of Medicine, Tokyo 113-0033, Japan.
Nat Commun. 2013;4:1370. doi: 10.1038/ncomms2388.
The resting-state human brain networks underlie fundamental cognitive functions and consist of complex interactions among brain regions. However, the level of complexity of the resting-state networks has not been quantified, which has prevented comprehensive descriptions of the brain activity as an integrative system. Here, we address this issue by demonstrating that a pairwise maximum entropy model, which takes into account region-specific activity rates and pairwise interactions, can be robustly and accurately fitted to resting-state human brain activities obtained by functional magnetic resonance imaging. Furthermore, to validate the approximation of the resting-state networks by the pairwise maximum entropy model, we show that the functional interactions estimated by the pairwise maximum entropy model reflect anatomical connexions more accurately than the conventional functional connectivity method. These findings indicate that a relatively simple statistical model not only captures the structure of the resting-state networks but also provides a possible method to derive physiological information about various large-scale brain networks.
静息态人脑网络是基本认知功能的基础,由脑区之间的复杂相互作用组成。然而,静息态网络的复杂程度尚未被量化,这阻碍了对大脑活动作为一个整体系统的全面描述。在这里,我们通过证明考虑到区域特定活动率和成对相互作用的成对最大熵模型可以稳健而准确地拟合通过功能磁共振成像获得的静息态人脑活动,来解决这个问题。此外,为了验证成对最大熵模型对静息态网络的逼近,我们表明,通过成对最大熵模型估计的功能相互作用比传统的功能连接方法更能准确地反映解剖连接。这些发现表明,相对简单的统计模型不仅可以捕捉静息态网络的结构,还为推导关于各种大规模脑网络的生理信息提供了一种可能的方法。