Lee Yu-Hao, Hsieh Ya-Ju, Shiah Yung-Jong, Lin Yu-Huei, Chen Chiao-Yun, Tyan Yu-Chang, GengQiu JiaCheng, Hsu Chung-Yao, Chen Sharon Chia-Ju
aDepartment of Electrical Engineering, National Cheng Kung University, Tainan bDepartment of Medical Imaging and Radiological Sciences, Kaohsiung Medical University cGraduate Institute of Counseling Psychology and Rehabilitation Counseling, National Kaohsiung Normal University dDepartment of Medical Imaging, Kaohsiung Medical University Hospital eCenter for Infectious Disease and Cancer Research, Kaohsiung Medical University fInstitute of Medical Science and Technology, National Sun Yat-sen University gGraduate Institute of Medicine, College of Medicine, Kaohsiung Medical University hDepartment of Medical Research, Kaohsiung Medical University Hospital, Kaohsiung, Taiwan iTibetan NyingmapaKathok Buddhist Organization, Sichuan, China jDepartment of Neurology, Kaohsiung Medical University, Kaohsiung, Taiwan.
Medicine (Baltimore). 2017 Apr;96(16):e6612. doi: 10.1097/MD.0000000000006612.
To quantitate the meditation experience is a subjective and complex issue because it is confounded by many factors such as emotional state, method of meditation, and personal physical condition. In this study, we propose a strategy with a cross-sectional analysis to evaluate the meditation experience with 2 artificial intelligence techniques: artificial neural network and support vector machine. Within this analysis system, 3 features of the electroencephalography alpha spectrum and variant normalizing scaling are manipulated as the evaluating variables for the detection of accuracy. Thereafter, by modulating the sliding window (the period of the analyzed data) and shifting interval of the window (the time interval to shift the analyzed data), the effect of immediate analysis for the 2 methods is compared. This analysis system is performed on 3 meditation groups, categorizing their meditation experiences in 10-year intervals from novice to junior and to senior. After an exhausted calculation and cross-validation across all variables, the high accuracy rate >98% is achievable under the criterion of 0.5-minute sliding window and 2 seconds shifting interval for both methods. In a word, the minimum analyzable data length is 0.5 minute and the minimum recognizable temporal resolution is 2 seconds in the decision of meditative classification. Our proposed classifier of the meditation experience promotes a rapid evaluation system to distinguish meditation experience and a beneficial utilization of artificial techniques for the big-data analysis.
对冥想体验进行量化是一个主观且复杂的问题,因为它受到许多因素的干扰,如情绪状态、冥想方法和个人身体状况。在本研究中,我们提出一种采用横断面分析的策略,使用两种人工智能技术——人工神经网络和支持向量机来评估冥想体验。在这个分析系统中,脑电图α波谱的3个特征和变异归一化缩放被作为评估变量来检测准确性。此后,通过调整滑动窗口(分析数据的时间段)和窗口的移动间隔(移动分析数据的时间间隔),比较这两种方法即时分析的效果。该分析系统应用于3个冥想组,将他们的冥想体验按10年间隔从新手到初级再到高级进行分类。在对所有变量进行详尽计算和交叉验证后,在两种方法均采用0.5分钟滑动窗口和2秒移动间隔的标准下,可实现>98%的高准确率。总之,在冥想分类决策中,最小可分析数据长度为0.5分钟,最小可识别时间分辨率为2秒。我们提出的冥想体验分类器促进了一个快速评估系统,以区分冥想体验,并有利于将人工技术用于大数据分析。