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Using a symbolic process model as input for model-based fMRI analysis: locating the neural correlates of problem state replacements.

机译:使用符号过程模型作为基于模型的fMRI分析的输入:查找问题状态替换的神经关联。

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In this paper, a model-based analysis method for fMRI is used with a high-level symbolic process model. Participants performed a triple-task in which intermediate task information needs to be updated frequently. Previous work has shown that the associated resource - the problem state resource - acts as a bottleneck in multitasking. The model-based method was used to locate the neural correlates of 'problem state replacements'. To analyze the fMRI data, we fit the computational process model to the behavioral data and regressed the model's activity against the fMRI data. The brain region responsible for the temporary representation of problem states, the inferior parietal lobule, and the brain region responsible for long-term storage of problem states, the inferior frontal gyrus were thus identified. These results show that model-based fMRI analyses can be performed using high-level symbolic cognitive models, enabling fine-grained exploratory fMRI research.
机译:在本文中,将基于模型的功能磁共振成像分析方法与高级符号过程模型一起使用。参与者执行了一项三任务,其中中间任务信息需要经常更新。先前的工作表明,关联的资源-问题状态资源-成为多任务处理中的瓶颈。基于模型的方法用于定位“问题状态替换”的神经相关性。为了分析功能磁共振成像数据,我们将计算过程模型拟合为行为数据,并针对功能磁共振成像数据回归了模型的活动。因此确定了负责暂时性表示问题状态的大脑区域,顶下小叶以及负责长期存储问题状态的大脑区域,即额额下回。这些结果表明,可以使用高级符号认知模型执行基于模型的功能磁共振成像分析,从而可以进行细致的探索性功能磁共振成像研究。

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