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Implications of Information Theory for Computational Modeling of Schizophrenia

机译:信息论对精神分裂症计算模型的启示

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摘要

Information theory provides a formal framework within which information processing and its disorders can be described. However, information theory has rarely been applied to modeling aspects of the cognitive neuroscience of schizophrenia. The goal of this article is to highlight the benefits of an approach based on information theory, including its recent extensions, for understanding several disrupted neural goal functions as well as related cognitive and symptomatic phenomena in schizophrenia. We begin by demonstrating that foundational concepts from information theory—such as Shannon information, entropy, data compression, block coding, and strategies to increase the signal-to-noise ratio—can be used to provide novel understandings of cognitive impairments in schizophrenia and metrics to evaluate their integrity. We then describe more recent developments in information theory, including the concepts of infomax, coherent infomax, and coding with synergy, to demonstrate how these can be used to develop computational models of schizophrenia-related failures in the tuning of sensory neurons, gain control, perceptual organization, thought organization, selective attention, context processing, predictive coding, and cognitive control. Throughout, we demonstrate how disordered mechanisms may explain both perceptual/cognitive changes and symptom emergence in schizophrenia. Finally, we demonstrate that there is consistency between some information-theoretic concepts and recent discoveries in neurobiology, especially involving the existence of distinct sites for the accumulation of driving input and contextual information prior to their interaction. This convergence can be used to guide future theory, experiment, and treatment development.
机译:信息理论提供了一个正式的框架,可以在其中描述信息处理及其障碍。但是,信息理论很少用于对精神分裂症的认知神经科学进行建模。本文的目的是强调基于信息论的方法(包括其最近的扩展)的好处,该方法可用于理解精神分裂症中几种破坏的神经目标功能以及相关的认知和症状现象。我们首先说明信息理论的基础概念,例如香农信息,熵,数据压缩,块编码以及提高信噪比的策略,可用于提供对精神分裂症和指标认知障碍的新颖理解。评估他们的完整性。然后,我们将介绍信息理论的最新发展,包括infomax,相干infomax和协同编码等概念,以说明如何利用这些知识来开发与感觉神经元调节,增益控制相关的精神分裂症相关衰竭的计算模型,知觉组织,思想组织,选择性注意,上下文处理,预测编码和认知控制。在整个过程中,我们证明了精神错乱机制中无序机制可能解释了知觉/认知变化和症状出现。最后,我们证明了某些信息理论概念与神经生物学的最新发现之间存在一致性,特别是涉及到存在相互作用的驱动输入和上下文信息积累的不同站点。这种融合可以用来指导未来的理论,实验和治疗方法的发展。

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