A flexible analytic wavelet transform and ensemble bagged tree model for electroencephalogram-based meditative mind-wandering detection
Mind-wandering (MW) is when an individual’s concentration drifts away from the task or activity. Researchers found a greater variability in electroencephalogram (EEG) signals due to MW. Collecting more nuanced information from raw EEG data to examine the harmful effects of MW is time-consuming. This...
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Veröffentlicht in: | Healthcare analytics (New York, N.Y.) N.Y.), 2024-06, Vol.5, p.100286, Article 100286 |
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Zusammenfassung: | Mind-wandering (MW) is when an individual’s concentration drifts away from the task or activity. Researchers found a greater variability in electroencephalogram (EEG) signals due to MW. Collecting more nuanced information from raw EEG data to examine the harmful effects of MW is time-consuming. This study proposes a multi-resolution assessment of EEG signals using the flexible analytic wavelet transform (FAWT). The FAWT algorithm decomposes raw EEG data into more representative sub-bands (SBs). Several statistical characteristics are derived from the obtained SBs, and the effects of MW during meditation on the EEG signals are investigated. A set of significant characteristics is chosen and fed into the machine learning modules using a 10-fold validation approach to detect MW subjects automatically. Our proposed framework attained the highest classification accuracy of 92.41%, the highest sensitivity of 93.56%, and the highest specificity of 91.97%. The proposed framework can be used to design a suitable brain-computer interface (BCI) system to reduce MW and increase meditation depth for holistic and long-term health in society.
•Propose an integrated flexible analytic wavelet transform and ensemble bagged tree model.•Perform a multi-resolution assessment of electroencephalogram signals.•Use flexible analytic wavelet transform algorithm to decompose raw electroencephalogram data.•Derive statistical characteristics from the obtained sub-bands.•Use machine learning modules to detect mind-wandering. |
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ISSN: | 2772-4425 2772-4425 |
DOI: | 10.1016/j.health.2023.100286 |