基于模糊检测支持系统的儿童自闭症谱系障碍检测

Patricia Amanda, A. Arifin, Nada Fitrievatul Hikmah, M. Nuh
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引用次数: 0

摘要

自闭症谱系障碍(ASD)是一种由大脑差异引起的发育障碍。自闭症障碍通常出现在三到七岁之前的儿童身上。然而,儿童的ASD只有在10岁以后才会被发现。本研究设计了一种基于模糊逻辑决策支持的儿童ASD严重程度检测系统。检测过程是通过询问父母关于孩子状况的问题来进行的,作为ASD检测模块的检测参考。该系统还配备了以加速度计和陀螺仪形式的可穿戴传感器形式的仪器,其功能是读取儿童拍打的手部运动信号,作为ASD儿童遭受重复行为的指示。结果表明,所采用的M-CHART - R量表在检测被试的初始状态方面是相当准确的。扑手检测传感器检测受试者身上出现的扑手,传感器模块1的平均误差为0.356133,传感器模块2的平均误差为0.30866。该系统的准确率为83.3%。未来的发展可以将硬件和软件开发作为嵌入式系统进行解决,以便整个系统可以使用物联网实时工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autism Spectrum Disorder Detection in Children Using Fuzzy Detection Support System
Autism Spectrum Disorder (ASD) is a developmental disability caused by differences in the brain. Autism disorders usually appear in children before the age of three to seven years. However, ASD in children is only detected after the age of ten years old. In this study, a detection system based on fuzzy logic decision support was designed to detect the severity of ASD in children. The detection process was carried out by asking parents questions about the child's condition as a detection reference taken from the ASD detection module. This system was also equipped with instrumentation in the form of wearable sensors in the form of accelerometers and gyroscopes that function to read flapping hand movement signals in children as an indication of repetitive behaviors suffered by ASD children. The results showed that the assessment form used, namely M-CHART - R, proved to be quite accurate in detecting the initial condition of the subject. The flapping hand detection sensor detected flapping hands that appeared on the subject with an average error of 0.356133 for sensor module 1 and 0.30866 for sensor module 2. The system has 83.3% accuracy. Future development can be addressed to hardware and software development as an embedded system so that the entire system can work in real-time using IoT.
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