论文标题
在婴儿早期期间多个尺度上功能性脑网络的共同进化
Co-evolution of Functional Brain Network at Multiple Scales during Early Infancy
论文作者
论文摘要
人的大脑被组织成层次模块化网络,以促进有效稳定的信息处理,并在开发过程中支持各种认知过程。尽管功能性大脑网络的显着重新配置在早期生活中已经牢固确立,但所有这些研究都从“单尺度”的角度研究了网络的发展,该角度忽略了其层次结构所带来的丰富性。为了填补这一空白,这篇论文利用了从出生到2岁的纵向婴儿静止的静止磁共振成像数据集,并提出了一个先进的方法学框架来描述早期发育过程中功能性脑网络的多尺度重构。我们提出的框架由两个部分组成。第一部分开发了一种新型的两步多尺度模块检测方法,该方法可以以完全数据驱动的方式从多个尺度中发现有效且一致的模块结构。第二部分设计了一种系统的方法,该方法将线性混合效应模型用于四个全局和节点模块相关的指标来描述网络组织的特定规模特定年龄相关的变化。通过将我们提出的方法学框架应用于收集的纵向婴儿数据集上,我们提供了第一个证据,即在生命的前两年中,大脑功能网络在不同的尺度上进行了共同发展,其中每个量表以模块化组织的形式显示独特的重新配置模式。
The human brains are organized into hierarchically modular networks facilitating efficient and stable information processing and supporting diverse cognitive processes during the course of development. While the remarkable reconfiguration of functional brain network has been firmly established in early life, all these studies investigated the network development from a "single-scale" perspective, which ignore the richness engendered by its hierarchical nature. To fill this gap, this paper leveraged a longitudinal infant resting-state functional magnetic resonance imaging dataset from birth to 2 years of age, and proposed an advanced methodological framework to delineate the multi-scale reconfiguration of functional brain network during early development. Our proposed framework is consist of two parts. The first part developed a novel two-step multi-scale module detection method that could uncover efficient and consistent modular structure for longitudinal dataset from multiple scales in a completely data-driven manner. The second part designed a systematic approach that employed the linear mixed-effect model to four global and nodal module-related metrics to delineate scale-specific age-related changes of network organization. By applying our proposed methodological framework on the collected longitudinal infant dataset, we provided the first evidence that, in the first 2 years of life, the brain functional network is co-evolved at different scales, where each scale displays the unique reconfiguration pattern in terms of modular organization.