Entropy and Complexity in QEEG Reveal Visual Processing Signatures in Autism: A Neurofeedback-Oriented and Clinical Differentiation Study.

IF 2.8 3区 医学 Q3 NEUROSCIENCES
Aleksandar Tenev, Silvana Markovska-Simoska, Andreas Müller, Igor Mishkovski
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引用次数: 0

Abstract

(1) Background: Quantitative EEG (QEEG) offers potential for identifying objective neurophysiological biomarkers in psychiatric disorders and guiding neurofeedback interventions. This study examined whether three nonlinear QEEG metrics-Lempel-Ziv Complexity, Tsallis Entropy, and Renyi Entropy-can distinguish children with autism spectrum disorder (ASD) from typically developing (TD) peers, and assessed their relevance for neurofeedback targeting. (2) Methods: EEG recordings from 19 scalp channels were analyzed in children with ASD and TD. The three nonlinear metrics were computed for each channel. Group differences were evaluated statistically, while machine learning classifiers assessed discriminative performance. Dimensionality reduction with t-distributed Stochastic Neighbor Embedding (t-SNE) was applied to visualize clustering. (3) Results: All metrics showed significant group differences across multiple channels. Machine learning classifiers achieved >90% accuracy, demonstrating robust discriminative power. t-SNE revealed distinct ASD and TD clustering, with nonlinear separability in specific channels. Visual processing-related channels were prominent contributors to both classifier predictions and t-SNE cluster boundaries. (4) Conclusions: Nonlinear QEEG metrics, particularly from visual processing regions, differentiate ASD from TD with high accuracy and may serve as objective biomarkers for neurofeedback. Combining complexity and entropy measures with machine learning and visualization techniques offers a relevant framework for ASD diagnosis and personalized intervention planning.

QEEG的熵和复杂性揭示了自闭症的视觉加工特征:一项神经反馈导向的临床鉴别研究。
(1)背景:定量脑电图(QEEG)为识别精神疾病的客观神经生理生物标志物和指导神经反馈干预提供了潜力。本研究考察了三个非线性QEEG指标——lempelel - ziv复杂度、Tsallis熵和Renyi熵——是否可以区分自闭症谱系障碍(ASD)儿童和正常发育(TD)儿童,并评估了它们与神经反馈靶向的相关性。(2)方法:对ASD和TD患儿19个头皮通道的脑电图记录进行分析。计算了每个通道的三个非线性度量。分组差异进行统计评估,而机器学习分类器评估判别性能。采用t分布随机邻居嵌入(t-SNE)降维方法实现聚类可视化。(3)结果:各指标在多个渠道间均存在显著的群体差异。机器学习分类器达到了90%的准确率,显示出强大的判别能力。t-SNE显示明显的ASD和TD聚类,在特定通道中具有非线性可分性。视觉处理相关通道是分类器预测和t-SNE聚类边界的重要贡献者。(4)结论:非线性QEEG指标,特别是来自视觉处理区域的QEEG指标,可以高精度地区分ASD和TD,并可能作为神经反馈的客观生物标志物。将复杂性和熵测度与机器学习和可视化技术相结合,为ASD诊断和个性化干预计划提供了相关框架。
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来源期刊
Brain Sciences
Brain Sciences Neuroscience-General Neuroscience
CiteScore
4.80
自引率
9.10%
发文量
1472
审稿时长
18.71 days
期刊介绍: Brain Sciences (ISSN 2076-3425) is a peer-reviewed scientific journal that publishes original articles, critical reviews, research notes and short communications in the areas of cognitive neuroscience, developmental neuroscience, molecular and cellular neuroscience, neural engineering, neuroimaging, neurolinguistics, neuropathy, systems neuroscience, and theoretical and computational neuroscience. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files or software regarding the full details of the calculation and experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material.
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