Methods Inf Med 2015; 54(03): 215-220
DOI: 10.3414/ME13-02-0037
Focus Theme – Original Articles
Schattauer GmbH

An Averaging Technique for the P300 Spatial Distribution

A. Tahirovic
1   Faculty of Electrical Engineering, University of Sarajevo, Sarajevo, Bosnia and Herzegovina
,
M. Matteucci
2   Department of Electronics, Informatics and Bioengineering, Politecnico di Milano, Milano, Italy
,
L. Mainardi
2   Department of Electronics, Informatics and Bioengineering, Politecnico di Milano, Milano, Italy
› Author Affiliations
Further Information

Publication History

received: 20 November 2013

accepted: 26 February 2014

Publication Date:
22 January 2018 (online)

Summary

Introduction: This article is part of the Focus Theme of Methods of Information in Medicine on “Biosignal Interpretation: Advanced Methods for Neural Signals and Images”.

Objectives: The main objectives of the paper regard the analysis of amplitude spatial distribution of the P300 evoked potential over a scalp of a particular subject and finding an averaged spatial distribution template for that subject. This template, which may differ for two different subjects, can help in getting a more accurate P300 detection for all BCIs that inherently use spatial filtering to detect P300 signal. Finally, the proposed averaging technique for a particular subject obtains an averaged spatial distribution template through only several epochs, which makes the proposed averaging technique fast and possible to use without applying any prior training data as in case of data enhancement technique.

Methods: The method used in the proposed framework for the averaging of spatial distribution of P300 evoked potentials is based on the statistical properties of independent components (ICs). These components are obtained by using independent component analysis (ICA) from different target epochs.

Results: This paper gives a novel averaging technique for the spatial distribution of P300 evoked potentials, which is based on the P300 signals obtained from different target epochs using the ICA algorithm. Such a technique provides a more reliable P300 spatial distribution for a subject of interest, which can be used either for an improved spatial selection of ICs, or more accurate P300 detection and extraction. In addition, the experiments demonstrate that the values of spatial intensity computed by the proposed technique for P300 signal converge after only several target epochs for each electrode allocation. Such a speed of convergence allows the proposed algorithm to easily adapt to a subject of interest without any additional artificial data preparation prior the algorithm execution such in case of data enhancement technique.

Conclusion: The proposed technique averages the P300 spatial distribution for a particular subject over all electrode allocations. First, the technique combines P300-like components obtained by the ICA run within a target epoch in order to obtainan averaged P300 spatial distribution. Second, the technique averages spatial distributions of P300 signals obtained from different target epochs in order to get the final averaged template. Such an template can be useful for any BCI technique where spatial selection is used to detect evoked potentials.

 
  • References

  • 1 Mertens R, Polich J. P300 from a single-stimulus paradigm: passive versus active tasks and stimulus modality. Electroencephalography and clinical neurophysiology evoked potentials 1997; 104 (06) 488.
  • 2 Polich J. On the relationship between EEC and P300: Individual differences, aging, and ultradian rhythms. International Journal of Psychophysiology 1997; 26 (01) (03) 299.
  • 3 Croft R, Gonsalvez C, Gabriel C, Barry R. Target-to-target interval versus probability effects on P300 in one- and two-tone tasks. Psychophysiology 2003; 40 (03) 322.
  • 4 Tarkka I, Stokic D. Source localization of P300 from oddball, single stimulus, and omitted-stimulus paradigms. Brain topography 1998; 11 (02) 141.
  • 5 Polich J. Updating P300: An integrative theory of P3a and P3b. Clinical Neurophysiology 2007; 118 (10) 2128.
  • 6 Farwell LA, Donchin E. Talking off the top of your head: toward a mental prosthesis utilizing event-related brain potentials. Electroencephalography and clinical neurophysiology 1988; 70 (06) 510-523.
  • 7 Donchin E, Spencer KM, Wijesinghe R. The mental prosthesis: assessing the speed of a P300-based brain-computer interface. IEEE Transactions on Rehabilitation Engineering 2000; 8 (02) 174-179.
  • 8 Gao X, Hong B, Miao X, Gao S, Yang F, Xu N. BCI competition 2003- Data set IIb: Enhancing P300 wave detection using ICA-based subspace projections for BCI applications. IEEE Transactions on Biomedical Engineering 2004; 51 (06) 1067.
  • 9 Wang S, James CJ. Enhancing evoked responses for BCI through advanced ICA techniques. In: Proc of the IET 3rd International Conference on Advances in Medical, Signal and Information Processing. 2006. (MEDSIP 2006).
  • 10 Piccione F, Giorgi F, Tonin P, Priftis K, Giove S, Silvoni S. et al. BCI competition 2003- Data set IIb: Enhancing P300 wave detection using ICA-based subspace projections for BCI applications. Clinical Neurophysiology 2005; 117 (03) 531-537.
  • 11 Hyvärinen A, Karhunen J, Oja E. Independent component analysis. Vol. 46. John Wiley & Sons; 2004
  • 12 Hyvärinen A. Independent component analysis: recent advances. Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences 2013; 371 1984 20110534.