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首页> 外文期刊>Biomedical signal processing and control >Predicting the success rate of healthy participants in beta neurofeedback: Determining the factors affecting the success rate of individuals
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Predicting the success rate of healthy participants in beta neurofeedback: Determining the factors affecting the success rate of individuals

机译:预测β神经融合背面健康参与者的成功率:确定影响个人成功率的因素

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Despite the considerable success of neurofeedback techniques in the treatment of various neurological disorders and the improvement of cognitive performance of healthy individuals, some people fail to learn how to control their brain activities using neurofeedback. Given the time-consuming and costly nature of neurofeedback, the prediction of people's success rate in training by neurofeedback is of paramount importance. Therefore, the present study aimed to determine the factors affecting the success rate of 7 healthy women over 10 sessions (30 trials) in terms of enhancement of low beta band activities (beta L). The relative power of different frequency bands (delta, theta, alpha and beta) of EEG signals obtained in the first training session was considered as the predictor variable along with the participants' IQ test score. Afterwards, we assessed the predictor variables' impact on the mean low beta power (15-18 Hz) values of the participants' EEG signals in the last session (beta L(last sess)). According to the results, the mean low beta power in the first session (beta L(sess1)) had the most effect on beta L(last sess) (R2 = 73.9 %). In the next stage, we designed three systems using the RBF network, which predicted the beta L(last sess), mean score of each participant in the last training session and the slope of beta L changes of each subject during the training sessions using beta L(sess1) (prediction error 10-11). The designed prediction system may be able to increase training efficiency with neurofeedback and save time and financial resources.
机译:尽管在治疗各种神经疾病和健康个体认知性能的改善方面存在着显神经融合技术的成功,但有些人未能学习如何使用神经融合控制其大脑活动。鉴于神经融合的耗时和昂贵的性质,Neurofeedback对人们在训练中的成功率的预测是至关重要的。因此,本研究旨在确定在低β乐队活动(Beta L)的增强方面,确定影响7个健康妇女的成功率(30次审判)的成功率。在第一训练会话中获得的EEG信号的不同频带(Delta,θ,alpha和beta)的相对力量与参与者的智商测试分数一起被视为预测变量。之后,我们评估了预测变量对最后一次会议(Beta L(最后Sess))的参与者EEG信号的平均低β功率(15-18 Hz)值的影响。根据结果​​,第一届会议中的平均低β功率(β1(Sess1))对β1(最后的Sess)的影响最大(R2 = 73.9%)。在下一阶段,我们设计了使用RBF网络的三个系统,该系统预测了Beta L(最后的Sess),每个参与者的平均得分,每个参与者的最后一次训练会话和训练期间每个主题的斜率变化的斜率L(SESS1)(预测误差& 10-11)。设计的预测系统可以通过神经融合和节省时间和财务资源来提高培训效率。

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