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Cross-Modal Decoding of Neural Patterns Associated with Working Memory: Evidence for Attention-Based Accounts of Working Memory

机译:与工作记忆相关的神经模式的跨模态解码:基于注意力的工作记忆说明

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摘要

Recent studies suggest common neural substrates involved in verbal and visual working memory (WM), interpreted as reflecting shared attention-based, short-term retention mechanisms. We used a machine-learning approach to determine more directly the extent to which common neural patterns characterize retention in verbal WM and visual WM. Verbal WM was assessed via a standard delayed probe recognition task for letter sequences of variable length. Visual WM was assessed via a visual array WM task involving the maintenance of variable amounts of visual information in the focus of attention. We trained a classifier to distinguish neural activation patterns associated with high- and low-visual WM load and tested the ability of this classifier to predict verbal WM load (high–low) from their associated neural activation patterns, and vice versa. We observed significant between-task prediction of load effects during WM maintenance, in posterior parietal and superior frontal regions of the dorsal attention network; in contrast, between-task prediction in sensory processing cortices was restricted to the encoding stage. Furthermore, between-task prediction of load effects was strongest in those participants presenting the highest capacity for the visual WM task. This study provides novel evidence for common, attention-based neural patterns supporting verbal and visual WM.
机译:最近的研究表明,涉及言语和视觉工作记忆(WM)的常见神经基质被解释为反映了基于共享注意力的短期保留机制。我们使用了机器学习方法来更直接地确定常见的神经模式在口头WM和视觉WM中的保留程度。通过标准的延迟探针识别任务评估了可变长度字母序列的口头WM。视觉WM是通过视觉阵列WM任务评估的,该任务涉及关注焦点中可变数量的视觉信息的维护。我们训练了一个分类器,以区分与高视力和低视觉WM负荷相关的神经激活模式,并测试了该分类器根据其相关的神经激活模式预测言语WM负荷(高-低)的能力,反之亦然。我们观察到在WM维护过程中,在背部注意力网络的顶顶后区域和上额叶区域,负荷间的重要任务间预测效果;相反,感觉处理皮层中的任务间预测仅限于编码阶段。此外,在呈现视觉WM任务能力最高的那些参与者中,负载影响的任务间预测最强。这项研究为支持言语和视觉WM的常见的,基于注意力的神经模式提供了新的证据。

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