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用于儿童自闭症谱系障碍自动识别的稳健特征。

Robust features for the automatic identification of autism spectrum disorder in children.

机构信息

Department of Computer Science and Engineering, The Ohio State University, 395 Dreese Laboratories, 2015 Neil Avenue, Columbus OH, USA.

School of Health Sciences, University of Newcastle, University Drive, Callaghan NSW 2308, Australia.

出版信息

J Neurodev Disord. 2014;6(1):12. doi: 10.1186/1866-1955-6-12. Epub 2014 May 23.

Abstract

BACKGROUND

It is commonly reported that children with autism spectrum disorder (ASD) exhibit hyper-reactivity or hypo-reactivity to sensory stimuli. Electroencephalography (EEG) is commonly used to study neural sensory reactivity, suggesting that statistical analysis of EEG recordings is a potential means of automatic classification of the disorder. EEG recordings taken from children, however, are frequently contaminated with large amounts of noise, making analysis difficult. In this paper, we present a method for the automatic extraction of noise-robust EEG features, which serve to quantify neural sensory reactivity. We show the efficacy of a system for the classification of ASD using these features.

METHODS

An oddball paradigm was used to elicit event-related potentials from a group of 19 ASD children and 30 typically developing children. EEG recordings were taken and robust features were extracted. A support vector machine, logistic regression, and a naive Bayes classifier were used to classify the children as having ASD or being typically developing.

RESULTS

A classification accuracy of 79% was achieved, making our method competitive with other automatic diagnosis methods based on EEG. Additionally, we found that classification performance is reduced if eye blink artifacts are removed during preprocessing.

CONCLUSIONS

This study shows that robust EEG features that quantify neural sensory reactivity are useful for the classification of ASD. We showed that noise-robust features are crucial for our analysis, and observe that traditional preprocessing methods may lead to poor classification performance in the face of a large amount of noise. Further exploration of alternative preprocessing methods is warranted.

摘要

背景

自闭症谱系障碍(ASD)患儿对感觉刺激表现出过度反应或低反应,这一现象常被报道。脑电图(EEG)常用于研究神经感觉反应性,这表明对脑电图记录进行统计分析可能是对该疾病进行自动分类的一种潜在手段。然而,从儿童身上采集的脑电图记录经常受到大量噪声的干扰,使得分析变得困难。在本文中,我们提出了一种从噪声中自动提取 EEG 特征的方法,这些特征可用于量化神经感觉反应性。我们展示了使用这些特征对 ASD 进行分类的系统的有效性。

方法

使用一种Oddball 范式从 19 名 ASD 儿童和 30 名正常发育儿童中引出事件相关电位。采集脑电图记录并提取稳健特征。使用支持向量机、逻辑回归和朴素贝叶斯分类器对儿童进行分类,判断他们患有 ASD 还是正常发育。

结果

实现了 79%的分类准确率,使得我们的方法与其他基于 EEG 的自动诊断方法具有竞争力。此外,我们发现如果在预处理过程中去除眨眼伪影,分类性能会降低。

结论

本研究表明,量化神经感觉反应性的稳健 EEG 特征可用于 ASD 的分类。我们表明,噪声稳健特征对于我们的分析至关重要,并观察到在存在大量噪声的情况下,传统的预处理方法可能导致分类性能不佳。有必要进一步探索替代预处理方法。

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