Classification of Adults with Autism Spectrum Disorder using Deep Neural Network

M. F. Misman, A. A. Samah, Farah Aqilah Ezudin, Hairuddin Abu Majid, Z. A. Shah, H. Hashim, Muhamad Farhin Harun
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引用次数: 15

Abstract

Autism Spectrum Disorder (ASD) is a developmental brain disorder that causes deficits in linguistic, communicative, and cognitive skills as well as social skills. Various application of Machine Learning has been applied apart from the clinical tests available, which has increased the performance in the diagnosis of this disorder. In this study, we applied the Deep Neural Network (DNN) architecture, which has been a popular method in recent years and proved to improve classification accuracy. This study aims to analyse the performance of DNN model in the diagnosis of ASD in terms of classification accuracy by using two datasets of adult ASD screening data. The results are then compared with the previous Machine Learning method by another researcher, which is Support Vector Machine (SVM). The accuracy achieved by the DNN model in the classification of ASD diagnosis is 99.40% on the first dataset and achieved 96.08% on the second dataset. Meanwhile, the SVM model achieved an accuracy of 95.24% and 95.08% using the first and second data, respectively. The results show that ASD cases can be accurately identified by implementing the DNN classification method using ASD adult screening data.
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成人自闭症谱系障碍的深度神经网络分类
自闭症谱系障碍(ASD)是一种大脑发育障碍,会导致语言、交际、认知技能和社交技能的缺陷。除了可用的临床测试外,机器学习的各种应用也得到了应用,这提高了对这种疾病的诊断性能。在本研究中,我们采用了深度神经网络(Deep Neural Network, DNN)架构,这是近年来比较流行的一种方法,并被证明可以提高分类精度。本研究旨在利用两组成人ASD筛查数据集,从分类准确率方面分析DNN模型在ASD诊断中的表现。然后将结果与另一位研究人员之前的机器学习方法——支持向量机(SVM)进行比较。DNN模型对ASD诊断分类的准确率在第一个数据集上达到99.40%,在第二个数据集上达到96.08%。同时,SVM模型在第一和第二数据上的准确率分别达到95.24%和95.08%。结果表明,利用ASD成人筛查数据实施DNN分类方法可以准确识别ASD病例。
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