Derman Diego, Pham Damon D, Mejia Amanda F, Ferradal Silvina L
Department of Intelligent Systems Engineering, Indiana University, Bloomington, IN, United States.
Department of Statistics, Indiana University, Bloomington, IN, United States.
Imaging Neurosci (Camb). 2025 Mar 20;3. doi: 10.1162/imag_a_00504. eCollection 2025.
Resting-state functional connectivity is a widely used approach to study the functional brain network organization during early brain development. However, the estimation of functional connectivity networks in individual infants has been rather elusive due to the unique challenges involved with functional magnetic resonance imaging (fMRI) data from young populations. Here, we use fMRI data from the developing Human Connectome Project (dHCP) database to characterize individual variability in a large cohort of term-born infants (N = 289) using a novel data-driven Bayesian framework. To enhance alignment across individuals, the analysis was conducted exclusively on the cortical surface, employing surface-based registration guided by age-matched neonatal atlases. Using 10 minutes of resting-state fMRI data, we successfully estimated subject-level maps for eight brain networks along with individual functional parcellation maps that revealed differences between subjects. We also found a significant relationship between age and mean connectivity strength in all brain regions, including previously unreported findings in higher-order networks. These results illustrate the advantages of surface-based methods and Bayesian statistical approaches in uncovering individual variability within very young populations.
静息态功能连接是一种广泛用于研究早期大脑发育过程中大脑功能网络组织的方法。然而,由于来自年轻人群的功能磁共振成像(fMRI)数据存在独特挑战,个体婴儿功能连接网络的估计一直相当困难。在这里,我们使用来自发育中的人类连接体项目(dHCP)数据库的fMRI数据,通过一种新颖的数据驱动贝叶斯框架,对一大群足月儿(N = 289)的个体变异性进行表征。为了增强个体间的对齐,分析仅在皮质表面进行,采用由年龄匹配的新生儿图谱引导的基于表面的配准。使用10分钟的静息态fMRI数据,我们成功估计了八个脑网络的个体水平图谱以及揭示个体差异的个体功能分区图谱。我们还发现,在所有脑区中,年龄与平均连接强度之间存在显著关系,包括在高阶网络中以前未报告的发现。这些结果说明了基于表面的方法和贝叶斯统计方法在揭示极年轻人群个体变异性方面的优势。