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Spatial Topography of Individual-Specific Cortical Networks Predicts Human Cognition Personality and Emotion

机译:特定于个体的皮层网络的空间拓扑预测人类的认知个性和情感

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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 , individual-specific network might also serve as a fingerprint of human behavior.
机译:静止状态功能磁共振成像(rs-fMRI)提供了描述个人特定大脑网络的机会。一个主要问题是特定于个人的网络拓扑(即位置和空间布置)在行为上是否相关。在这里,我们提出了一个多会话分层贝叶斯模型(MS-HBM)来估计特定于个体的皮质网络,并研究特定于个体的网络拓扑是否可以预测人类行为。 MS-HBM的多个层次明确区分了受试者内部(受试者内部)和受试者之间(受试者之间)网络的可变性。通过忽略对象内部的可变性,以前的网络映射可能会使对象内部的可变性混淆对象之间的差异。与其他方法相比,MS-HBM碎片对来自相同受试者的新rs-fMRI和task-fMRI数据的推广效果更好。更具体地说,从单个rs-fMRI会话估计的MS-HBM分割(10分钟)显示出与通过5个会话(50分钟)的两种最新技术估计的分割具有可比的通用性。我们还表明,跨认知,性格和情感的行为表型可以通过个人特定的网络拓扑结构以适度的准确性进行预测,与以前的基于连通性强度预测表型的报告相当。 MS-HBM估计的网络拓扑对于行为预测比网络大小以及其他分段方法估计的网络拓扑更有效。因此,类似于连通性,特定于个人的网络也可以充当人类行为的指纹。

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