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Classification of Autism Spectrum Disorder From EEG-Based Functional Brain Connectivity Analysis

机译:基于EEG的功能性脑连接性分析的自闭症谱系分类

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摘要

Autism is a psychiatric condition that is typically diagnosed with behavioral assessment methods. Recent years have seen a rise in the number of children with autism. Since this could have serious health and socioeconomic consequences, it is imperative to investigate how to develop strategies for an early diagnosis that might pave the way to an adequate intervention. In this study, the phase-based functional brain connectivity derived from electroencephalogram (EEG) in a machine learning framework was used to classify the children with autism and typical children in an experimentally obtained data set of 12 autism spectrum disorder (ASD) and 12 typical children. Specifically, the functional brain connectivity networks have quantitatively been characterized by graph-theoretic parameters computed from three proposed approaches based on a standard phase-locking value,which were used as the features in a machine learning environment. Our study was successfully classified between two groups with approximately 95.8% accuracy, 100% sensitivity, and 92% specificity through the trial-averaged phase-locking value (PLV) approach and cubic support vector machine (SVM). This work has also shown that significant changes in functional brain connectivity in ASD children have been revealed at theta band using the aggregated graphtheoretic features. Therefore, the findings from this study offer insight into the potential use of functional brain connectivity as a tool for classifying ASD children.
机译:自闭症是一种精神病病症,通常被诊断出患有行为评估方法。近年来,患有自闭症的儿童人数升高。由于这可能具有严重的健康和社会经济后果,因此需要调查如何为早期诊断制定策略,这些策略可能会为充分的干预措施铺平。在这项研究中,用于在机器学习框架中源自脑电图(EEG)的基于相位的功能性脑连接,用于将儿童与自闭症和典型的儿童进行分类,在实验获得的12个自闭症谱系统(ASD)和12个典型孩子们。具体地,通过基于标准阶段锁定值计算的三种提出方法计算的图形理论参数,功能性大脑连接网络已经是定量的,其用作机器学习环境中的特征。我们的研究通过试级阶段锁定值(PLV)方法和立方支撑向量机(SVM)成功地在两组之间成功分类了大约95.8%的精度,100%敏感性和92%的特异性。这项工作还表明,使用聚合的图形特征,在Theta频段揭示了ASD儿童功能性大脑连接的显着变化。因此,本研究的结果提供了洞察潜在使用功能性脑连接作为分类ASD儿童的工具。

著录项

  • 来源
    《Neural computation》 |2021年第7期|1914-1941|共28页
  • 作者单位

    Department of Electronics and Computer Science University of Southampton Southampton SO17 1BJ UK;

    Department of Electronics and Computer Science University of Southampton Southampton SO17 1BJ UK;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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