基于闭眼静息状态小波特征和机器学习的α上调神经反馈训练无效预测

Hannan N. Riaz, H. Nisar, K. Yeap
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引用次数: 0

摘要

神经反馈训练(NFT)是一种基于实时反馈的参与者自我调节脑电图活动的有效方法。这一过程已被证明可以改善精神疾病患者的神经障碍和健康个体的心理行为。尽管神经反馈技术取得了相当大的成功,但观察到一些受试者在神经反馈训练中未能学会如何控制他们的大脑活动。本研究旨在探讨脑电图学习过程作为学习者和非学习者在α波段活动增强方面的早期预测因子。25名健康的参与者接受了α上调的训练。其中8人无法在每次疗程中调节α波段。因此,本研究采用静息状态睁眼脑电图预测NFT参与者的学习表现。使用机器学习。三种机器学习算法的比较;基于绝对alpha功率及其Daubechies (level-4)小波分解睁眼静息状态脑电图信号,采用LDA、SVM和GBM对非学习者进行预测。
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Inefficacy Prediction of Alpha Up-Regulation Neurofeedback Training Using Eyes-Open Resting State Wavelet Features and Machine Learning
Neurofeedback Training (NFT) is an effective way for the participants to self-regulate the Electroencephalography (EEG) activity based on real-time feedback. This procedure has been proven to improve the neurological disorders in mentally ill patients and the psychological behavior of healthy individuals. Despite the considerable success of neurofeedback techniques, it is observed that some subjects fail to learn how to control their brain activities during neurofeedback training. This study is aimed to investigate the EEG learning process in alpha neurofeedback as an early-stage predictor of learners and non-learners in terms of the enhancement of alpha-band activities. 25 healthy participants have been trained using alpha upregulations. 8 of them were unable to regulate their alpha band within each session. Hence in this work resting state eyes-open EEG is used to predict the learning performance of the NFT participants. Using machine learning. A comparison of three machine learning algorithms; LDA, SVM, and GBM is performed to predict the non-learners based on the absolute alpha power and its Daubechies (level-4) wavelet decompositions eyes-open resting state EEG signals.
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