Article ID Journal Published Year Pages File Type
6268198 Journal of Neuroscience Methods 2015 12 Pages PDF
Abstract

•A complete pipeline is proposed for the cluster analysis of ensembles of ERP data.•The number of clusters is determined in a principled way.•The cluster results are visualised through an intuitive representation.•Existence of six clusters is revealed on dataset from one experimental condition.

BackgroundThe validity of ensemble averaging on event-related potential (ERP) data has been questioned, due to its assumption that the ERP is identical across trials. Thus, there is a need for preliminary testing for cluster structure in the data.New methodWe propose a complete pipeline for the cluster analysis of ERP data. To increase the signal-to-noise (SNR) ratio of the raw single-trials, we used a denoising method based on Empirical Mode Decomposition (EMD). Next, we used a bootstrap-based method to determine the number of clusters, through a measure called the Stability Index (SI). We then used a clustering algorithm based on a Genetic Algorithm (GA) to define initial cluster centroids for subsequent k-means clustering. Finally, we visualised the clustering results through a scheme based on Principal Component Analysis (PCA).ResultsAfter validating the pipeline on simulated data, we tested it on data from two experiments - a P300 speller paradigm on a single subject and a language processing study on 25 subjects. Results revealed evidence for the existence of 6 clusters in one experimental condition from the language processing study. Further, a two-way chi-square test revealed an influence of subject on cluster membership.Comparison with existing method(s)Our analysis operates on denoised single-trials, the number of clusters are determined in a principled manner and the results are presented through an intuitive visualisation.ConclusionsGiven the cluster structure in some experimental conditions, we suggest application of cluster analysis as a preliminary step before ensemble averaging.

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Life Sciences Neuroscience Neuroscience (General)
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