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首页> 外文期刊>Cognitive, Affective, & Behavioral Neuroscience >A computational model of fMRI activity in the intraparietal sulcus that supports visual working memory
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A computational model of fMRI activity in the intraparietal sulcus that supports visual working memory

机译:顶内沟功能磁共振成像活动的计算模型,支持视觉工作记忆

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A computational model was developed to explain a pattern of results of fMRI activation in the intraparietal sulcus (IPS) supporting visual working memory for multiobject scenes. The model is based on the hypothesis that dendrites of excitatory neurons are major computational elements in the cortical circuit. Dendrites enable formation of a competitive queue that exhibits a gradient of activity values for nodes encoding different objects, and this pattern is stored in working memory. In the model, brain imaging data are interpreted as a consequence of blood flow arising from dendritic processing. Computer simulations showed that the model successfully simulates data showing the involvement of inferior IPS in object individuation and spatial grouping through representation of objects’ locations in space, along with the involvement of superior IPS in object identification through representation of a set of objects’ features. The model exhibits a capacity limit due to the limited dynamic range for nodes and the operation of lateral inhibition among them. The capacity limit is fixed in the inferior IPS regardless of the objects’ complexity, due to the normalization of lateral inhibition, and variable in the superior IPS, due to the different encoding demands for simple and complex shapes. Systematic variation in the strength of self-excitation enables an understanding of the individual differences in working memory capacity. The model offers several testable predictions regarding the neural basis of visual working memory.
机译:开发了一种计算模型来解释功能性核磁共振成像在顶内沟(IPS)中激活的结果模式,支持多目标场景的视觉工作记忆。该模型基于以下假设:兴奋性神经元树突是皮层回路中的主要计算元素。树突使形成竞争性队列成为可能,该队列对编码不同对象的节点表现出活动值的梯度,并且此模式存储在工作内存中。在该模型中,脑成像数据被解释为树突状加工产生的血流的结果。计算机仿真表明,该模型成功地模拟了数据,这些数据表明劣等IPS通过表示对象在空间中的位置来参与对象的个性化和空间分组,以及优等IPS通过表示一组对象的特征来参与对象识别。由于节点的动态范围有限以及其中的横向约束操作,该模型显示出容量限制。不管对象的复杂程度如何,由于横向抑制的归一化,下IPS中的容量限制是固定的,而对于简单形状和复杂形状的编码要求不同,上IPS中的容量限制是可变的。自激强度的系统变化使人们能够了解工作记忆能力的个体差异。该模型提供了有关视觉工作记忆的神经基础的几个可检验的预测。

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