基于脑电图的冥想思维游走检测的灵活分析小波变换和集合袋装树模型

Ajay Dadhich , Jaideep Patel , Rovin Tiwari , Richa Verma , Pratha Mishra , Jay Kumar Jain
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引用次数: 0

摘要

思维游离(MW)是指一个人的注意力偏离任务或活动。研究人员发现,MW 会导致脑电图(EEG)信号的更大变化。从原始脑电图数据中收集更多细微信息来研究 MW 的有害影响非常耗时。本研究提出使用灵活分析小波变换(FAWT)对脑电信号进行多分辨率评估。FAWT 算法将原始脑电图数据分解为更具代表性的子带 (SB)。从获得的子带中得出若干统计特征,并研究了冥想时 MW 对脑电信号的影响。我们选择了一组重要的特征,并将其输入机器学习模块,使用 10 倍验证方法自动检测 MW 受试者。我们提出的框架达到了 92.41% 的最高分类准确率、93.56% 的最高灵敏度和 91.97% 的最高特异性。所提出的框架可用于设计合适的脑机接口(BCI)系统,以减少MW和增加冥想深度,从而促进社会的整体和长期健康。
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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 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.

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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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