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Temporal Dynamics of the Brain Using Variational Bayes Hidden Markov Models: Application in Autism

机译:使用变分贝叶斯隐马尔可夫模型的脑的时间动态:在自闭症中的应用

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Investigating the functional connectivity (FC) patterns of the brain using resting-state functional magnetic resonance imaging (rs-fMRI) has been instrumental in revealing the effects of neurological disorders. Several studies have established that brain connectivity is dynamic in nature, and that brain diseases have an impact on both FC and its temporal properties. Various computational techniques have been proposed in the literature for modeling brain dynamics, yet most of these approaches have limitations that hinder the process of building accurate models. In this work, we explore a promising approach using Hidden Markov Models with Variational Bayesian Inference (VB-HMM) proposed by Ryali et al. (PLoS computational biology 12 (12), e1005138). A comprehensive study has been conducted quantifying useful statistical properties of the time-varying brain states and their underlying network configurations, providing insights on the influence of Autism on the functioning of the brain. This work focuses on the triple network model which consists of three major intrinsic connectivity networks (ICNs) that are known to play important roles in higher-order cognition. Autistic individuals demonstrated higher persistence in brain states possessing internetwork interactions in comparison to neurotypical subjects.
机译:使用静态功能磁共振成像(RS-FMRI)研究脑的功能连接(FC)模式已经有助于揭示神经系统疾病的影响。几项研究已经确定脑连接性质是动态的,脑病对Fc及其颞性能产生影响。在文献中提出了用于建模脑动力学的文献中的各种计算技术,但这些方法中的大部分都具有阻碍建立准确模型的过程的限制。在这项工作中,我们探讨了利用Ryali等人提出的具有变分贝叶斯推论(VB-HMM)的隐性马尔可夫模型的有希望的方法。 (PLO计算生物学12(12),E1005138)。已经进行了全面的研究,量化了时变脑状态及其潜在网络配置的有用统计特性,提供了对自闭症对大脑运作的影响的见解。这项工作侧重于三个网络模型,该模型包括三个主要的内在连接网络(ICN),该网络被称为在高阶认知中发挥重要作用。与神经典型的受试者相比,自闭症的人展示了具有互联网交互的脑状态更高的持久性。

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