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Model-based functional neuroimaging using dynamic neural fields: An integrative cognitive neuroscience approach

机译:基于模型的功能性神经模仿使用动态神经字段:一种综合认知神经科学方法

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A fundamental challenge in cognitive neuroscience is to develop theoretical frameworks that effectively span the gap between brain and behavior, between neuroscience and psychology. Here, we attempt to bridge this divide by formalizing an integrative cognitive neuroscience approach using dynamic field theory (DFT). We begin by providing an overview of how DFT seeks to understand the neural population dynamics that underlie cognitive processes through previous applications and comparisons to other modeling approaches. We then use previously published behavioral and neural data from a response selection Go/Nogo task as a case study for model simulations. Results from this study served as the 'standard' for comparisons with a model-based fMRI approach using dynamic neural fields (DNF). The tutorial explains the rationale and hypotheses involved in the process of creating the DNF architecture and fitting model parameters. Two DNF models, with similar structure and parameter sets, are then compared. Both models effectively simulated reaction times from the task as we varied the number of stimulus-response mappings and the proportion of Go trials. Next, we directly simulated hemodynamic predictions from the neural activation patterns from each model. These predictions were tested using general linear models (GLMs). Results showed that the DNF model that was created by tuning parameters to capture simultaneously trends in neural activation and behavioral data quantitatively outperformed a Standard GLM analysis of the same dataset. Further, by using the GLM results to assign functional roles to particular clusters in the brain, we illustrate how DNF models shed new light on the neural populations' dynamics within particular brain regions. Thus, the present study illustrates how an interactive cognitive neuroscience model can be used in practice to bridge the gap between brain and behavior. (C) 2016 Elsevier Inc. All rights reserved.
机译:认知神经科学的基本挑战是开发理论框架,有效地跨越大脑和行为之间的差距,神经科学与心理学。在这里,我们试图通过使用动态现场理论(DFT)正式化综合认知神经科学方法来弥合这一分歧。我们首先概述DFT如何了解通过先前的应用和对其他建模方法的比较来理解基于认知过程的神经群体动态。然后,我们将先前发布的行为和神经数据从响应选择GO / Nogo任务中作为模拟模拟的案例研究。本研究的结果是使用动态神经字段(DNF)的基于模型的FMRI方法进行比较的“标准”。本教程解释了创建DNF架构和拟合模型参数的过程中涉及的理由和假设。然后比较两个具有类似结构和参数集的DNF模型。由于我们改变了刺激反应映射数和去试验的比例,这两种模型都会有效地模拟了任务的反应时间。接下来,我们从每个模型的神经激活模式直接模拟血液动力学预测。使用一般线性模型(GLM)测试这些预测。结果表明,通过调整参数创建的DNF模型,以同时捕获神经激活和行为数据的同时趋势,定量地优于同一数据集的标准GLM分析。此外,通过使用GLM结果将功能角色分配给大脑中的特定集群,我们说明了DNF模型如何在特定的大脑区域内的神经群体的动态上流出新的光线。因此,本研究说明了如何在实践中使用交互式认知神经科学模型以弥合大脑和行为之间的差距。 (c)2016年Elsevier Inc.保留所有权利。

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