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首页> 外文期刊>Philosophical transactions of the Royal Society. Mathematical, physical, and engineering sciences >Understanding principles of integration and segregation using whole-brain computational connectomics: implications for neuropsychiatric disorders
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Understanding principles of integration and segregation using whole-brain computational connectomics: implications for neuropsychiatric disorders

机译:了解全脑计算Connectomics的整合和隔离原则:神经精神障碍的影响

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摘要

To survive in an ever-changing environment, the brain must seamlessly integrate a rich stream of incoming information into coherent internal representations that can then be used to efficiently plan for action. The brain must, however, balance its ability to integrate information from various sources with a complementary capacity to segregate information into modules which perform specialized computations in local circuits. Importantly, evidence suggests that imbalances in the brain's ability to bind together and/or segregate information over both space and time is a common feature of several neuropsychiatric disorders. Most studies have, however, until recently strictly attempted to characterize the principles of integration and segregation in static (i.e. time-invariant) representations of human brain networks, hence disregarding the complex spatio-temporal nature of these processes. In the present Review, we describe how the emerging discipline of whole-brain computational connectomics may be used to study the causal mechanisms of the integration and segregation of information on behaviourally relevant timescales. We emphasize how novel methods from network science and whole-brain computational modelling can expand beyond traditional neuroimaging paradigms and help to uncover the neurobiological determinants of the abnormal integration and segregation of information in neuropsychiatric disorders.
机译:为了在不断变化的环境中生存,大脑必须将丰富的传入信息流集成到一个连贯的内部表示中,然后可以用来有效地计划行动。然而,大脑必须平衡其将来自各种来源的信息集成到具有互补容量的各种来源的能力,以将信息分成在本地电路中执行专用计算的模块。重要的是,证据表明,大脑在两个空间和时间绑定在一起和/或隔离信息的能力的不平衡是几种神经精神疾病的常见特征。然而,大多数研究直到最近严格试图表征静态(即时间不变)人脑网络的静态和隔离原则,从而忽视这些过程的复杂时空性质。在本综述中,我们描述了如何使用全脑计算的新兴学科如何研究关于行为相关时间尺度的信息的整合和分离的因果机制。我们强调网络科学和全脑计算建模的新方法如何扩展传统的神经影像癌症,并有助于发现神经精神障碍中异常集成和偏析信息的神经生物学决定因素。

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