Valence State Analysis Using Discrete Wavelet Transform Features for Early Detection of Autism Spectrum Disorder in Young Kids

Q2 Social Sciences
A. J., Cyril Prasanna Raj P., Elangovan K.
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引用次数: 0

Abstract

Autism spectrum disorder is a developmental disorder that has affected many children around the globe in recent years. It is possible to reduce the severity of the symptoms when the affected children are identified and treated early. Hence, early detection and treatment of this neurodevelopmental disorder significantly help the patient’s (young ASD kids) well-being. In this regard, the research has been initiated by developing an algorithm based on a neural network that can efficiently differentiate the brain activity of a normal young subject and an autistic young subject. In this research, Electroencephalography (EEG) data were collected from normal kids and kids with ASD from age 4 to 6. Discrete Wavelet Transform (DWT) is used for feature extraction of EEG data for valence state analysis on younger kids. It was inferred that there is a linear increase in Power Spectral Density (PSD) irrespective of age during valence state analysis of various EEG bands such as gamma, beta, alpha, and theta. When comparing the PSD of normal subjects with subjects of ASD, the PSD of ASD subjects is comparatively higher than the PSD of normal subjects. The trained network can classify the EEG data as normal subjects and subjects with ASD with good accuracy from the datasets.
基于离散小波变换特征的价态分析用于幼儿自闭症谱系障碍的早期检测
自闭症谱系障碍是一种近年来影响全球许多儿童的发育障碍。当早期发现并治疗受影响的儿童时,有可能降低症状的严重程度。因此,这种神经发育障碍的早期发现和治疗显著有助于患者(年轻的ASD儿童)的健康。在这方面,这项研究是通过开发一种基于神经网络的算法来启动的,该算法可以有效区分正常年轻受试者和自闭症年轻受试人的大脑活动。在这项研究中,脑电图(EEG)数据收集自4至6岁的正常儿童和ASD儿童。离散小波变换(DWT)用于对年幼儿童的脑电图数据进行特征提取,用于价态分析。据推断,在各种EEG波段(如伽马、贝塔、阿尔法和θ)的价态分析期间,功率谱密度(PSD)与年龄无关地线性增加。当比较正常受试者和ASD受试者的PSD时,ASD受检者的PSD相对高于正常受检者。训练后的网络可以从数据集中准确地将EEG数据分类为正常受试者和ASD受试者。
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来源期刊
Webology
Webology Social Sciences-Library and Information Sciences
自引率
0.00%
发文量
374
审稿时长
10 weeks
期刊介绍: Webology is an international peer-reviewed journal in English devoted to the field of the World Wide Web and serves as a forum for discussion and experimentation. It serves as a forum for new research in information dissemination and communication processes in general, and in the context of the World Wide Web in particular. Concerns include the production, gathering, recording, processing, storing, representing, sharing, transmitting, retrieving, distribution, and dissemination of information, as well as its social and cultural impacts. There is a strong emphasis on the Web and new information technologies. Special topic issues are also often seen.
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