Shihab Ammar I, Dawood Faten A, Kashmar Ali H
Department of Computer Science, College of Science, University of Baghdad, Baghdad, Iraq.
Adv Bioinformatics. 2020 Jan 7;2020:3407907. doi: 10.1155/2020/3407907. eCollection 2020.
Autism spectrum disorder (ASD) is an early developmental disorder characterized by mutation of enculturation associated with attention deficit disorder in the visual perception of emotional expressions. An estimated one in more than 100 people has autism. Autism affects almost four times as many boys than girls. Data analysis and classification of ASD is still challenging due to unsolved issues arising from many severity levels and range of signs and symptoms. To understanding the functions which involved in autism, neuroscience technology analyzed responses to stimuli of autistic audio and video. The study focuses on analyzing the data set of adults and children with ASD using practical component analysis method. To satisfy this aim, the proposed method consists of three main stages including: (1) data set preparation, (2) Data analysis, and (3) Unsupervised Classification. The experimental results were performed to classify adults and children with ASD. The classification results in adults give a sensitivity of 78.6% and specificity of 82.47%, while the classification results in children give a sensitivity of 87.5% and specificity of 95.7%.
自闭症谱系障碍(ASD)是一种早期发育障碍,其特征是在情感表达的视觉感知中与注意力缺陷障碍相关的文化适应突变。据估计,每100多人中就有一人患有自闭症。自闭症对男孩的影响几乎是女孩的四倍。由于许多严重程度以及体征和症状范围所产生的未解决问题,ASD的数据分析和分类仍然具有挑战性。为了了解自闭症所涉及的功能,神经科学技术分析了自闭症患者对音频和视频刺激的反应。该研究重点使用实用成分分析方法分析自闭症成人和儿童的数据集。为了实现这一目标,所提出的方法包括三个主要阶段:(1)数据集准备,(2)数据分析,以及(3)无监督分类。进行了实验结果以对自闭症成人和儿童进行分类。成人的分类结果灵敏度为78.6%,特异性为82.47%,而儿童的分类结果灵敏度为87.5%,特异性为95.7%。