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Pattern classification of EEG signals reveals perceptual and attentional states

机译:脑电信号的模式分类揭示了知觉和注意力状态

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摘要

Pattern classification techniques have been widely used to differentiate neural activity associated with different perceptual, attentional, or other cognitive states, often using fMRI, but more recently with EEG as well. Although these methods have identified EEG patterns (i.e., scalp topographies of EEG signals occurring at certain latencies) that decode perceptual and attentional states on a trial-by-trial basis, they have yet to be applied to the spatial scope of attention toward global or local features of the display. Here, we initially used pattern classification to replicate and extend the findings that perceptual states could be reliably decoded from EEG. We found that visual perceptual states, including stimulus location and object category, could be decoded with high accuracy peaking between 125–250 ms, and that the discriminative spatiotemporal patterns mirrored and extended our (and other well-established) ERP results. Next, we used pattern classification to investigate whether spatiotemporal EEG signals could reliably predict attentional states, and particularly, the scope of attention. The EEG data were reliably differentiated for local versus global attention on a trial-by-trial basis, emerging as a specific spatiotemporal activation pattern over posterior electrode sites during the 250–750 ms interval after stimulus onset. In sum, we demonstrate that multivariate pattern analysis of EEG, which reveals unique spatiotemporal patterns of neural activity distinguishing between behavioral states, is a sensitive tool for characterizing the neural correlates of perception and attention.
机译:模式分类技术已广泛用于区分与不同知觉,注意力或其他认知状态相关的神经活动,通常使用功能磁共振成像,但最近也使用脑电图。尽管这些方法已经确定了可以通过逐次尝试对感知和注意力状态进行解码的脑电图样(即,在某些延迟下出现的脑电信号的头皮地形图),但它们仍未应用于关注全局或全局性的空间范围。显示器的局部特征。在这里,我们最初使用模式分类来复制和扩展可以从EEG可靠地解码感知状态的发现。我们发现视觉刺激状态,包括刺激位置和物体类别,可以在125-250毫秒之间以高准确度的峰值进行解码,并且可辨别的时空模式反映并扩展了我们(以及其他公认的)ERP结果。接下来,我们使用模式分类研究时空EEG信号是否可以可靠地预测注意力状态,尤其是注意力范围。在试验开始后的250至750毫秒间隔内,EEG数据可靠地区分了局部注意力和整体注意力,在后电极部位上以特定的时空激活模式出现。总之,我们证明脑电图的多元模式分析揭示了区分行为状态的神经活动的独特时空模式,是表征感知和注意的神经相关性的敏感工具。

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