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基于静息态功能连接磁共振成像数据对6个月和12个月大婴儿进行准确的年龄分类。

Accurate age classification of 6 and 12 month-old infants based on resting-state functional connectivity magnetic resonance imaging data.

作者信息

Pruett John R, Kandala Sridhar, Hoertel Sarah, Snyder Abraham Z, Elison Jed T, Nishino Tomoyuki, Feczko Eric, Dosenbach Nico U F, Nardos Binyam, Power Jonathan D, Adeyemo Babatunde, Botteron Kelly N, McKinstry Robert C, Evans Alan C, Hazlett Heather C, Dager Stephen R, Paterson Sarah, Schultz Robert T, Collins D Louis, Fonov Vladimir S, Styner Martin, Gerig Guido, Das Samir, Kostopoulos Penelope, Constantino John N, Estes Annette M, Petersen Steven E, Schlaggar Bradley L, Piven Joseph

机构信息

Washington University School of Medicine in St. Louis, 660 South Euclid Avenue, St. Louis, MO 63110, United States.

University of Minnesota, 51 East River Parkway, Minneapolis, MN 55455, United States.

出版信息

Dev Cogn Neurosci. 2015 Apr;12:123-33. doi: 10.1016/j.dcn.2015.01.003. Epub 2015 Feb 3.

Abstract

Human large-scale functional brain networks are hypothesized to undergo significant changes over development. Little is known about these functional architectural changes, particularly during the second half of the first year of life. We used multivariate pattern classification of resting-state functional connectivity magnetic resonance imaging (fcMRI) data obtained in an on-going, multi-site, longitudinal study of brain and behavioral development to explore whether fcMRI data contained information sufficient to classify infant age. Analyses carefully account for the effects of fcMRI motion artifact. Support vector machines (SVMs) classified 6 versus 12 month-old infants (128 datasets) above chance based on fcMRI data alone. Results demonstrate significant changes in measures of brain functional organization that coincide with a special period of dramatic change in infant motor, cognitive, and social development. Explorations of the most different correlations used for SVM lead to two different interpretations about functional connections that support 6 versus 12-month age categorization.

摘要

人类大规模功能性脑网络被认为在发育过程中会发生显著变化。对于这些功能结构变化,尤其是在生命第一年的后半段,我们知之甚少。我们在一项正在进行的、多地点的脑与行为发育纵向研究中,使用静息态功能连接磁共振成像(fcMRI)数据的多变量模式分类,来探究fcMRI数据是否包含足以对婴儿年龄进行分类的信息。分析过程仔细考虑了fcMRI运动伪影的影响。支持向量机(SVM)仅基于fcMRI数据,就能以高于随机水平的准确率区分6个月和12个月大的婴儿(128个数据集)。结果表明,脑功能组织测量指标发生了显著变化,这与婴儿运动、认知和社交发展的一个剧烈变化的特殊时期相吻合。对用于支持向量机的最不同相关性的探索,导致了关于支持6个月和12个月年龄分类的功能连接的两种不同解释。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1457/6987977/56fdf3646fb5/gr1.jpg

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