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Published in: Medical & Biological Engineering & Computing 9/2019

27-07-2019 | Original Article

Evaluation of divided attention using different stimulation models in event-related potentials

Authors: Turgay Batbat, Ayşegül Güven, Nazan Dolu

Published in: Medical & Biological Engineering & Computing | Issue 9/2019

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Abstract

Divided attention is defined as focusing on different tasks at once, and this is described as one of the biggest problems of today’s society. Default examinations for understanding attention are questionnaires or physiological signals, like evoked potentials and electroencephalography. Physiological records were obtained using visual, auditory, and auditory-visual stimuli combinations with 48 participants—18-25-year-old university students—to find differences between sustained and divided attention. A Fourier-based filter was used to get a 0.01–30-Hz frequency band. Fractal dimensions, entropy values, power spectral densities, and Hjorth parameters from electroencephalography and P300 components from evoked potentials were calculated as features. To decrease the size of the feature set, some features, which yield less detail level for data, were eliminated. The visual and auditory stimuli in selective attention were compared with the divided attention state, and the best accuracy was found to be 88.89% on a support vector machine with linear kernel. As a result, it was seen that divided attention could be more difficult to determine from selective attention, but successful classification could be obtained with appropriate methods. Contrary to literature, the study deals with the infrastructure of attention types by working on a completely healthy and attention-high group.

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Literature
1.
go back to reference Gajre NS, Fernandez S, Balakrishna N, Vazir S (2008) Breakfast eating habit and its influence on attention-concentration, immediate memory and school achievement. Indian Pediatr 45:824–828PubMed Gajre NS, Fernandez S, Balakrishna N, Vazir S (2008) Breakfast eating habit and its influence on attention-concentration, immediate memory and school achievement. Indian Pediatr 45:824–828PubMed
19.
go back to reference Kortelainen J, Väyrynen E, Huuskonen U, Laurila J (2016) Using Hilbert-Huang transform to assess EEG slow wave activity during anesthesia in post-cardiac arrest patients, pp 1850–1853 Kortelainen J, Väyrynen E, Huuskonen U, Laurila J (2016) Using Hilbert-Huang transform to assess EEG slow wave activity during anesthesia in post-cardiac arrest patients, pp 1850–1853
21.
go back to reference Mariani S, Borges AFT, Henriques T, et al (2016) Analysis of the sleep EEG in the complexity domain, pp 6429–6432 Mariani S, Borges AFT, Henriques T, et al (2016) Analysis of the sleep EEG in the complexity domain, pp 6429–6432
24.
go back to reference Batbat T, Güven A, Dolu N (2018) Evaluation of the effects of stimulus types over attention based on Hjorth parameters with electroencephalography. In: European Conference On Science, Art & Culture (ECSAC’18). Antalya, p 138 Batbat T, Güven A, Dolu N (2018) Evaluation of the effects of stimulus types over attention based on Hjorth parameters with electroencephalography. In: European Conference On Science, Art & Culture (ECSAC’18). Antalya, p 138
33.
go back to reference Falkenstein M, Hohnsbein J, Hoormann J, Blanke L (1991) Effects of crossmodal divided attention on late ERP components. II. Error processing in choice reaction tasks. Electroencephalogr Clin Neurophysiol 78:447–455CrossRefPubMed Falkenstein M, Hohnsbein J, Hoormann J, Blanke L (1991) Effects of crossmodal divided attention on late ERP components. II. Error processing in choice reaction tasks. Electroencephalogr Clin Neurophysiol 78:447–455CrossRefPubMed
37.
go back to reference Guven A, Batbat T, Dolu N, Demir M (2017) Exploration of gender differences on attention levels with cancellation tests. In: 2017 medical technologies National Conference, TIPTEKNO 2017, pp 1–3 Guven A, Batbat T, Dolu N, Demir M (2017) Exploration of gender differences on attention levels with cancellation tests. In: 2017 medical technologies National Conference, TIPTEKNO 2017, pp 1–3
39.
go back to reference Sanei S, Chambers JA (2013) EEG signal processing. ISBN 978-0-470-02581-9 Sanei S, Chambers JA (2013) EEG signal processing. ISBN 978-0-470-02581-9
42.
go back to reference Esteller R, Vachtsevanos G, Echauz J, Litt B (2001) A comparison of waveform fractal dimension algorithms. IEEE Trans Circuits Syst I Fundam Theory Appl 48:177–183CrossRef Esteller R, Vachtsevanos G, Echauz J, Litt B (2001) A comparison of waveform fractal dimension algorithms. IEEE Trans Circuits Syst I Fundam Theory Appl 48:177–183CrossRef
56.
go back to reference Sarraf S (2017) EEG-based movement imagery classification using machine learning techniques and Welch’s power spectral density estimation. Am Sci Res J Eng Technol Sci 33:124–145 Sarraf S (2017) EEG-based movement imagery classification using machine learning techniques and Welch’s power spectral density estimation. Am Sci Res J Eng Technol Sci 33:124–145
Metadata
Title
Evaluation of divided attention using different stimulation models in event-related potentials
Authors
Turgay Batbat
Ayşegül Güven
Nazan Dolu
Publication date
27-07-2019
Publisher
Springer Berlin Heidelberg
Published in
Medical & Biological Engineering & Computing / Issue 9/2019
Print ISSN: 0140-0118
Electronic ISSN: 1741-0444
DOI
https://doi.org/10.1007/s11517-019-02013-x

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