任务正网络
功能连接
默认模式网络
神经科学
背
人脑
大脑发育
功能专门化
大脑定位
特征(语言学)
计算机科学
心理学
生物
语言学
哲学
解剖
作者
Chad M. Sylvester,Sydney Kaplan,Michael J. Myers,Evan M. Gordon,Rebecca F. Schwarzlose,Dimitrios Alexopoulos,Ashley N. Nielsen,Jeanette K. Kenley,Dominique Meyer,Qiongru Yu,Alice M. Graham,Damien A. Fair,Barbara Warner,Deanna M. Barch,Cynthia Rogers,Joan L. Luby,Steven E. Petersen,Christopher D. Smyser
出处
期刊:Cerebral Cortex
[Oxford University Press]
日期:2022-05-21
卷期号:33 (5): 2200-2214
被引量:20
标识
DOI:10.1093/cercor/bhac202
摘要
Abstract The adult human brain is organized into functional brain networks, groups of functionally connected segregated brain regions. A key feature of adult functional networks is long-range selectivity, the property that spatially distant regions from the same network have higher functional connectivity than spatially distant regions from different networks. Although it is critical to establish the status of functional networks and long-range selectivity during the neonatal period as a foundation for typical and atypical brain development, prior work in this area has been mixed. Although some studies report distributed adult-like networks, other studies suggest that neonatal networks are immature and consist primarily of spatially isolated regions. Using a large sample of neonates (n = 262), we demonstrate that neonates have long-range selective functional connections for the default mode, fronto-parietal, and dorsal attention networks. An adult-like pattern of functional brain networks is evident in neonates when network-detection algorithms are tuned to these long-range connections, when using surface-based registration (versus volume-based registration), and as per-subject data quantity increases. These results help clarify factors that have led to prior mixed results, establish that key adult-like functional network features are evident in neonates, and provide a foundation for studies of typical and atypical brain development.
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