Wearable EEG Neurofeedback Based-on Machine Learning Algorithms for Children with Autism: A Randomized, Placebo-controlled Study.

IF 2 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Xian-Na Wang, Tong Zhang, Bi-Cheng Han, Wei-Wei Luo, Wen-Hui Liu, Zhao-Yi Yang, A Disi, Yue Sun, Jin-Chen Yang
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引用次数: 0

Abstract

Objective: Behavioral interventions have been shown to ameliorate the electroencephalogram (EEG) dynamics underlying the behavioral symptoms of autism spectrum disorder (ASD), while studies have also demonstrated that mirror neuron mu rhythm-based EEG neurofeedback training improves the behavioral functioning of individuals with ASD. This study aimed to test the effects of a wearable mu rhythm neurofeedback training system based on machine learning algorithms for children with autism.

Methods: A randomized, placebo-controlled study was carried out on 60 participants aged 3 to 6 years who were diagnosed with autism, at two center-based intervention sites. The neurofeedback group received active mu rhythm neurofeedback training, while the control group received a sham neurofeedback training. Other behavioral intervention programs were similar between the two groups.

Results: After 60 sessions of treatment, both groups showed significant improvements in several domains including language, social and problem behavior. The neurofeedback group showed significantly greater improvements in expressive language (P=0.013) and cognitive awareness (including joint attention, P=0.003) than did the placebo-controlled group.

Conclusion: Artificial intelligence-powered wearable EEG neurofeedback, as a type of brain-computer interface application, is a promising assistive technology that can provide targeted intervention for the core brain mechanisms underlying ASD symptoms.

基于机器学习算法的自闭症儿童可穿戴脑电图神经反馈:一项随机、安慰剂对照研究。
目的:行为干预已被证明可以改善自闭症谱系障碍(ASD)行为症状背后的脑电图(EEG)动态变化,而研究也证明,基于镜像神经元μ节律的EEG神经反馈训练可以改善ASD患者的行为功能。本研究旨在测试基于机器学习算法的可穿戴μ节律神经反馈训练系统对自闭症儿童的影响:在两个以中心为基础的干预场所,对 60 名被诊断患有自闭症的 3 至 6 岁参与者进行了随机安慰剂对照研究。神经反馈组接受主动缪氏节律神经反馈训练,而对照组则接受假神经反馈训练。两组的其他行为干预项目相似:经过 60 个疗程的治疗后,两组儿童在语言、社交和问题行为等多个领域均有显著改善。神经反馈组在语言表达能力(P=0.013)和认知意识(包括联合注意力,P=0.003)方面的改善明显大于安慰剂对照组:结论:人工智能驱动的可穿戴脑电图神经反馈作为一种脑机接口应用,是一种很有前景的辅助技术,可对 ASD 症状的核心大脑机制进行有针对性的干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Current Medical Science
Current Medical Science Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
4.70
自引率
0.00%
发文量
126
期刊介绍: Current Medical Science provides a forum for peer-reviewed papers in the medical sciences, to promote academic exchange between Chinese researchers and doctors and their foreign counterparts. The journal covers the subjects of biomedicine such as physiology, biochemistry, molecular biology, pharmacology, pathology and pathophysiology, etc., and clinical research, such as surgery, internal medicine, obstetrics and gynecology, pediatrics and otorhinolaryngology etc. The articles appearing in Current Medical Science are mainly in English, with a very small number of its papers in German, to pay tribute to its German founder. This journal is the only medical periodical in Western languages sponsored by an educational institution located in the central part of China.
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