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首页> 外文期刊>Cerebral cortex >Spatial Topography of Individual-Specific Cortical Networks Predicts Human Cognition, Personality, and Emotion
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Spatial Topography of Individual-Specific Cortical Networks Predicts Human Cognition, Personality, and Emotion

机译:个人特定皮质网络的空间地形预测人类认知,个性和情感

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摘要

Resting-state functional magnetic resonance imaging (rs-fMRI) offers the opportunity to delineate individual-specific brain networks. A major question is whether individual-specific network topography (i.e., location and spatial arrangement) is behaviorally relevant. Here, we propose a multi-session hierarchical Bayesian model (MS-HBM) for estimating individual-specific cortical networks and investigate whether individual-specific network topography can predict human behavior. The multiple layers of the MS-HBM explicitly differentiate intra-subject (within-subject) from inter-subject (between-subject) network variability. By ignoring intra-subject variability, previous network mappings might confuse intra-subject variability for inter-subject differences. Compared with other approaches, MS-HBM parcellations generalized better to new rs-fMRI and task-fMRI data from the same subjects. More specifically, MS-HBM parcellations estimated from a single rs-fMRI session (10 min) showed comparable generalizability as parcellations estimated by 2 state-of-the-art methods using 5 sessions (50 min). We also showed that behavioral phenotypes across cognition, personality, and emotion could be predicted by individual-specific network topography with modest accuracy, comparable to previous reports predicting phenotypes based on connectivity strength. Network topography estimated by MS-HBM was more effective for behavioral prediction than network size, as well as network topography estimated by other parcellation approaches. Thus, similar to connectivity strength, individual-specific network topography might also serve as a fingerprint of human behavior.
机译:休息状态功能磁共振成像(RS-FMRI)为描绘了个别特定的脑网络提供了机会。一个主要问题是个人特定的网络地形(即位置和空间排列)是否是行为相关的。在这里,我们提出了一种多会分层贝叶斯模型(MS-HBM),用于估计个人特定的皮质网络,并调查个人特定的网络地形是否可以预测人类行为。 MS-HBM的多层明确地区分了对象内(内部)的互联网可变性。通过忽略内部内部可变性,之前的网络映射可能会对对象间差异混淆主题的内部变异性。与其他方法相比,MS-HBM Parcellations从同一主题中更好地推广到新的RS-FMRI和任务-FMRI数据。更具体地,从单个RS-FMRI会话(10分钟)估计的MS-HBM局部显示出与使用5个会话(50分钟)的最先进方法估计的局部局部的相当相容性。我们还表明,可以通过以适度的准确性来预测跨认知,个性和情绪的行为表型,以适度的准确性,可与基于连通强度的先前报告预测表型相当。由MS-HBM估计的网络地形比网络尺寸更有效,以及由其他局部方法估计的网络地形。因此,类似于连接强度,个人特定的网络地形也可以用作人类行为的指纹。

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