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Applying deep learning to single-trial EEG data provides evidence for complementary theories on action control

机译:对单次试验EEG数据应用深度学习提供了行动控制的互补理论的证据

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Efficient action control is indispensable for goal-directed behaviour. Different theories have stressed the importance of either attention or response selection sub-processes for action control. Yet, it is unclear to what extent these processes can be identified in the dynamics of neurophysiological (EEG) processes at the single-trial level and be used to predict the presence of conflicts in a given moment. Applying deep learning, which was blind to cognitive theory, on single-trial EEG data allowed to predict the presence of conflict in ~95% of subjects ~33% above chance level. Neurophysiological features related to attentional and motor response selection processes in the occipital cortex and the superior frontal gyrus contributed most to prediction accuracy. Importantly, deep learning was able to identify predictive neurophysiological processes in single-trial neural dynamics. Hence, mathematical (artificial intelligence) approaches may be used to foster the validation and development of links between cognitive theory and neurophysiology of human behavior. Vahid et al. use a deep-learning approach to analyze single-trial EEG data to examine theories on action control. Their approach enables the identification of spatial and temporal neurophysiological features that are predictive of the response control during the Simon task. The results confirm cognitive theory-driven approaches on the relationship between neurophysiology and human behavior.
机译:有效的动作控制对于目标定向行为是必不可少的。不同的理论强调了注意力或响应选择子流程的重要性。然而,目前尚不清楚这些过程可以在单次试验水平的神经生理学(EEG)过程的动态中鉴定这些过程,并用于预测在特定时刻的冲突存在。应用深度学习,这对认知理论视而不见,在单次试验EEG数据上允许预测〜95%受试者的冲突的存在〜33%的机会水平。与枕骨皮层中的注意力和电动机响应选择过程相关的神经生理特征,以及卓越的额相回到最大的预测准确性。重要的是,深度学习能够识别单试性神经动力学中的预测性神经生理过程。因此,可以使用数学(人工智能)方法来培养认知理论与人类行为神经生理学之间的联系的验证和发展。 Vahid等人。使用深度学习方法来分析单试eeg数据,以检查行动控制的理论。它们的方法使得能够识别在Simon任务期间的响应控制的预测性的空间和时间神经生理学特征。结果证实了认知理论驱动的方法对神经生理学和人类行为之间的关系的方法。

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