Classification of Autism in Young Children by Phase Angle Clustering in Magnetoencephalogram Signals

Kasturi Barik, Katsumi Watanabe, J. Bhattacharya, G. Saha
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引用次数: 6

Abstract

Autism spectrum disorder (ASD) is a complex neu- rodevelopmental condition that appears in early childhood or infancy, causing delays or impairments in social interaction and restricted range of interests of a child. In this work, our goal is to classify autistic children from typically developing children using a machine learning framework. Here, we have used magnetoencephalography (MEG) signals of thirty age and gender matched children from each group. We perform a spectral domain analysis in which the features are extracted from both power and phase of large-scale neural oscillations. In this work, we propose a novel phase angle clustering (PAC) based feature and have compared its performance with commonly used power spectral density (PSD) based feature. It is observed that with Artificial Neural Network (ANN) classifier, PAC yields better classification accuracy (88.20±3.87%) than the PSD feature (82.13±2.11%). To investigate laterality of brain activity, we evaluate the classification performance of each feature type over all channels as well as over individual hemispheres. Using machine learning framework it is found that the discriminating PSD features are mostly from high gamma band i.e. 50–100 Hz frequency oscillations and the PSD features are dominant in right hemisphere. These findings are in line with studies carried before in other framework. However, PAC based feature in our study shows that the whole brain contains important attributes of autism. The discriminating PAC features are mostly from theta band (i.e. 4–8 Hz frequency oscillations) that signifies memory formation and navigation. In this study, it is found that impaired theta oscillations correlate with autistic symptoms. Overall, our findings show the potential of such signal processing and classification based study to aid the clinicians in diagnosis of ASD.
脑磁图信号相位角聚类对幼儿自闭症的分类
自闭症谱系障碍(Autism spectrum disorder, ASD)是一种出现在儿童早期或婴儿期的复杂的新发育疾病,它会导致儿童在社会交往方面的延迟或障碍,以及兴趣范围的限制。在这项工作中,我们的目标是使用机器学习框架将自闭症儿童与正常发育的儿童进行分类。在这里,我们使用脑磁图(MEG)信号的30个年龄和性别匹配的儿童从每组。我们进行了频谱域分析,其中从大规模神经振荡的功率和相位中提取特征。在这项工作中,我们提出了一种新的基于相角聚类(PAC)的特征,并将其性能与常用的基于功率谱密度(PSD)的特征进行了比较。在人工神经网络(ANN)分类器中,PAC的分类准确率(88.20±3.87%)高于PSD(82.13±2.11%)。为了研究大脑活动的偏侧性,我们评估了所有通道以及单个半球上每种特征类型的分类性能。利用机器学习框架发现,PSD特征主要来自高伽马波段,即50-100 Hz的频率振荡,并且PSD特征在右半球中占主导地位。这些发现与之前在其他框架下进行的研究一致。然而,在我们的研究中,基于PAC的特征表明,整个大脑包含自闭症的重要属性。鉴别PAC特征主要来自表示记忆形成和导航的θ波段(即4-8 Hz频率振荡)。在这项研究中,发现受损的θ波振荡与自闭症症状相关。总之,我们的研究结果显示了这种基于信号处理和分类的研究在帮助临床医生诊断ASD方面的潜力。
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