Panjab University, Chandigarh, India.
Rajindra Hospital Patiala, Patiala, India.
Comput Methods Biomech Biomed Engin. 2022 May;25(7):721-728. doi: 10.1080/10255842.2021.1975682. Epub 2021 Dec 4.
Today's fast paced life reports so much stress among people that it may lead to various psychological and physical illnesses. Yoga and meditation are the best strategies to reduce the effect of stress on physical and mental level without any side-effects. In this study, combined yoga and Sudarshan Kriya (SK) has been used as an alternative and complementary therapy for the management of stress. The aim of the study is to find a method to classify the meditator and non-meditator states with the best accuracy. The 50 subjects have been participating in this study and divided into two groups, i.e. study and control group. The subjects with regular practice of Yoga and SK are known as meditators and the ones without any practice of yoga and meditation were known as non-meditators. Electroencephalogram (EEG) signals were acquired from these both groups before and after 3 months. The statistical parameters were computed from these acquired EEG signals using Discrete Wavelet Transform (DWT). These extracted statistical parameters were given as input to the classifiers. The decision tree, discriminant analysis, logistic regression, Support Vector Machine (SVM), Weighted K- Nearest Neighbour (KNN) and ensemble classifiers were used for classification of meditator and non- meditator states from the acquired EEG signals. The results have demonstrated that the SVM method gives the highest classification accuracy as compared to other classifiers. The proposed method can be used as a diagnosis system in clinical practices.
当今快节奏的生活给人们带来了如此多的压力,以至于可能导致各种心理和生理疾病。瑜伽和冥想是减轻身心压力影响的最佳策略,而且没有任何副作用。在这项研究中,结合瑜伽和苏达尔山克里亚(Sudarshan Kriya,SK)被用作一种替代和补充疗法来管理压力。本研究的目的是找到一种方法,以最高的准确性对冥想者和非冥想者的状态进行分类。50 名受试者参加了这项研究,并分为两组,即研究组和对照组。有规律地练习瑜伽和 SK 的受试者被称为冥想者,而没有进行瑜伽和冥想练习的受试者被称为非冥想者。从这两组受试者采集脑电(EEG)信号,采集时间分别在练习前和练习 3 个月后。使用离散小波变换(DWT)从这些获得的 EEG 信号计算统计参数。这些提取的统计参数被作为输入提供给分类器。决策树、判别分析、逻辑回归、支持向量机(SVM)、加权 K-最近邻(KNN)和集成分类器被用于从获得的 EEG 信号中分类冥想者和非冥想者状态。结果表明,与其他分类器相比,SVM 方法的分类准确率最高。该方法可用于临床实践中的诊断系统。