| Literature DB >> 30065624 |
Jinbiao Yang1,2,3,4,5, Hao Zhu1,2,3, Xing Tian1,2,3.
Abstract
Electroencephalography (EEG) provides high temporal resolution cognitive information from non-invasive recordings. However, one of the common practices-using a subset of sensors in ERP analysis is hard to provide a holistic and precise dynamic results. Selecting or grouping subsets of sensors may also be subject to selection bias, multiple comparison, and further complicated by individual differences in the group-level analysis. More importantly, changes in neural generators and variations in response magnitude from the same neural sources are difficult to separate, which limit the capacity of testing different aspects of cognitive hypotheses. We introduce EasyEEG, a toolbox that includes several multivariate analysis methods to directly test cognitive hypotheses based on topographic responses that include data from all sensors. These multivariate methods can investigate effects in the dimensions of response magnitude and topographic patterns separately using data in the sensor space, therefore enable assessing neural response dynamics. The concise workflow and the modular design provide user-friendly and programmer-friendly features. Users of all levels can benefit from the open-sourced, free EasyEEG to obtain a straightforward solution for efficient processing of EEG data and a complete pipeline from raw data to final results for publication.Entities:
Keywords: EEG; EEG signal processing; EEG/MEG; machine learning; methodology; multivariate analysis; toolbox; topography
Year: 2018 PMID: 30065624 PMCID: PMC6057229 DOI: 10.3389/fnins.2018.00468
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
Figure 1Results of distribution of significant sensors analysis. (A) Topographies of response differences between conditions across time. Each row contains topographies for a given comparison at different time points. Sensors that show significant response magnitude differences are circled in white. The color on the topography represents the response magnitude differences. The conditions in each comparison is listed on the left. S for scrambled condition, F for famous face condition, and U for unfamiliar face condition. (B) The number of significant sensors across time. The color scale represents the number of significant sensors. The conditions of comparison are listed at the left side of the figure. Labels are the same as in (A). The comparison between face perception conditions (F and U) and scrambled (S) condition is significantly different in sensors above frontal, central, bilateral parietal-occipital areas, starting around 180 ms. The comparison between face perception conditions (F vs. U), however, only shows significant difference at the latencies of 300–400 ms and 500–600 ms. Refer to main text for detailed results.
Figure 2Results of GFP analysis. Each color line represents the GFP of each condition. Condition labels are the same as Figure 1. The shadow areas around each line depict the standard error of the mean. The grayscale vertical bar stands for the results of statistical analysis. Grayscale represents the significant levels, and location represents the latencies of significant effects. (A,B) The condition “Scrambled” (S) begins significantly different from the face perception conditions around 140 ms. Differences are also significant at some later latencies. (C) For comparison between two face perception conditions, significant differences are observed starting around 220 ms, later than those in comparisons between face and non-face conditions in (A,B). Some later significant differences are also observed. Refer to main text for detailed results.
Figure 3Results of TANOVA analysis. The results are represented as p-values across time. Color represents the significant levels, with darker color for smaller p-values. Conditions labels are the same as in Figure 1. (A–C) The results obtained by applying different strategies of computing null distribution in the non-parametric tests. These results are similar. The topographic response patterns in condition “Scrambled” starts significantly different from those in the face perception conditions after 170 ms and last till the end of epoch. For comparison between face perception conditions (F vs U), significant pattern differences are obtained after 470 ms. Results in Strategy 3 have an exception that all three comparisons show significant differences for a short time period around 180 ms. Refer to main text for detailed results.
Figure 4Results of Pattern classification analysis. Pattern classification results are represented as p-values across time. Color represents the significant levels. Condition labels are the same as in Figure 1. Both face perception conditions show differences (p < 0.01) from the scrambled condition as early as around 120 ms. Differences between two face perception conditions are scattered across the timespan. Refer to the main text for detailed results.