Key Laboratory for Biomedical Engineering of Ministry of Education, Department of Biomedical Engineering, College of Biomedical Engineering & Instrument Science, Zhejiang University, Yuquan Campus, Hangzhou 310027, China.
Department of Psychology, Zhejiang Sci-Tech University, Hangzhou 310018, China.
Neuroimage. 2023 May 15;272:120071. doi: 10.1016/j.neuroimage.2023.120071. Epub 2023 Mar 31.
The neonatal period is a critical window for the development of the human brain and may hold implications for the long-term development of cognition and disorders. Multi-modal connectome studies have revealed many important findings underlying the adult brain but related studies were rare in the early human brain. One potential challenge is the lack of an appropriate and unbiased parcellation that combines structural and functional information in this population. Using 348 multi-modal MRI datasets from the developing human connectome project, we found that the information fused from the structural, diffusion, and functional MRI was relatively stable across MRI features and showed high reproducibility at the group level. Therefore, we generated automated multi-resolution parcellations (300 - 500 parcels) based on the similarity across multi-modal features using a gradient-based parcellation algorithm. In addition, to acquire a parcellation with high interpretability, we provided a manually delineated parcellation (210 parcels), which was approximately symmetric, and the adjacent areas around each boundary were statistically different in terms of the integrated similarity metric and at least one kind of original features. Overall, the present study provided multi-resolution and neonate-specific parcellations of the cerebral cortex based on multi-modal MRI properties, which may facilitate future studies of the human connectome in the early development period.
新生儿期是人类大脑发育的关键窗口,可能对认知和障碍的长期发展有影响。多模态连接组学研究揭示了许多成人大脑的重要发现,但在早期人类大脑中相关研究很少。一个潜在的挑战是缺乏适当的、无偏倚的分割方法,无法将结构和功能信息结合到该人群中。我们使用来自发育中的人类连接组计划的 348 个多模态 MRI 数据集,发现融合结构、扩散和功能 MRI 的信息在 MRI 特征之间相对稳定,在组水平上具有较高的可重复性。因此,我们使用基于梯度的分割算法,基于多模态特征之间的相似性,生成了自动多分辨率分割(300-500 个分割)。此外,为了获得具有高可解释性的分割,我们提供了一个手动分割(210 个分割),它是近似对称的,并且每个边界周围的相邻区域在综合相似性度量和至少一种原始特征方面存在统计学差异。总之,本研究基于多模态 MRI 特性,提供了多分辨率和新生儿特异性的大脑皮层分割,这可能有助于未来对早期发育阶段人类连接组的研究。