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Dynamic causal models of neural system dynamics: current state and future extensions

机译:神经系统动力学的动态因果模型:当前状态和未来扩展

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摘要

Complex processes resulting from the interaction of multiple elements can rarely be understood by analytical scientific approaches alone; additionally, mathematical models of system dynamics are required. This insight, which disciplines like physics have embraced for a long time already, is gradually gaining importance in the study of cognitive processes by functional neuroimaging. In this field, causal mechanisms in neural systems are described in terms of effective connectivity. Recently, Dynamic Causal Modelling (DCM) was introduced as a generic method to estimate effective connectivity from neuroimaging data in a Bayesian fashion. One of the key advantages of DCM over previous methods is that it distinguishes between neural state equations and modality-specific forward models that translate neural activity into a measured signal. Another strength is its natural relation to Bayesian Model Selection (BMS) procedures. In this article, we review the conceptual and mathematical basis of DCM and its implementation for functional magnetic resonance imaging data and event-related potentials. After introducing the application of BMS in the context of DCM, we conclude with an outlook to future extensions of DCM. These extensions are guided by the long-term goal of using dynamic system models for pharmacological and clinical applications, particularly with regard to synaptic plasticity.
机译:仅由分析科学方法很难理解由多种元素相互作用产生的复杂过程。此外,还需要系统动力学的数学模型。这种洞察力已经被诸如物理学之类的学科所接受,并且已经在很长的一段时间内逐渐在功能神经成像的认知过程研究中变得越来越重要。在该领域,根据有效的连通性描述了神经系统中的因果机制。最近,动态因果模型(DCM)被引入作为一种通用方法,以贝叶斯(Bayesian)方式从神经影像数据估计有效的连通性。与以前的方法相比,DCM的主要优势之一是,它可以区分神经状态方程和将神经活动转化为测量信号的特定于模式的正向模型。另一个优势是它与贝叶斯模型选择(BMS)过程的自然联系。在本文中,我们回顾了DCM的概念和数学基础及其在功能性磁共振成像数据和事件相关电位中的实现。在介绍了BMS在DCM上下文中的应用之后,我们对DCM的未来扩展进行了展望。这些扩展遵循将动态系统模型用于药理和临床应用的长期目标,特别是在突触可塑性方面。

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