Abstract

Visuospatial attention can be deployed to different locations in space independently of ocular fixation, and studies have shown that event-related potential (ERP) components can effectively index whether such covert visuospatial attention is deployed to the left or right visual field. However, it is not clear whether we may obtain a more precise spatial localization of the focus of attention based on the EEG signals during central fixation. In this study, we used a modified Posner cueing task with an endogenous cue to determine the degree to which information in the EEG signal can be used to track visual spatial attention in presentation sequences lasting 200 ms. We used a machine learning classification method to evaluate how well EEG signals discriminate between four different locations of the focus of attention. We then used a multi-class support vector machine (SVM) and a leave-one-out cross-validation framework to evaluate the decoding accuracy (DA). We found that ERP-based features from occipital and parietal regions showed a statistically significant valid prediction of the location of the focus of visuospatial attention (DA = 57%, p < .001, chance-level 25%). The mean distance between the predicted and the true focus of attention was 0.62 letter positions, which represented a mean error of 0.55 degrees of visual angle. In addition, ERP responses also successfully predicted whether spatial attention was allocated or not to a given location with an accuracy of 79% (p < .001). These findings are discussed in terms of their implications for visuospatial attention decoding and future paths for research are proposed.

Highlights

  • According to Desimone and Duncan (1995), processing of visual information is characterized by two distinct phenomena

  • We explored a number of classification algorithms including linear-discriminant analysis (LDA), k-nearest-neighbor (KNN), and support vector machine (SVM) with either linear or quadratic (RBF) kernels

  • Using a modified Posner cueing task and multi-class SVM, we investigated if lateralized event-related potential (ERP) signals could predict the locus of visual spatial attention between four possible locations

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Summary

Introduction

According to Desimone and Duncan (1995), processing of visual information is characterized by two distinct phenomena. Due to the limits of the human cognitive system, there is often more information available than what can be fully processed When this occurs, there is a competition between various items in view and their associated locations for access to PLOS ONE | DOI:10.1371/journal.pone.0160304. In order to resolve this competition while maximizing the pertinence of the information that will be processed effectively, a selection of relevant items must take place. This selection can be bottom-up (exogenous), driven by the properties of the stimuli, or top-down (endogenous), driven by the goals of the observer; or it can reflect an interaction between these two influences (e.g., Leblanc, Prime, & Jolicoeur, 2008)

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