基于机器学习的自闭症谱系障碍儿童注意力和压力检测监测系统

Lingling Deng, Prapa Rattadilok, Ruijie Xiong
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引用次数: 3

摘要

大多数自闭症谱系障碍(ASD)儿童在感觉处理方面存在困难,这影响了他们有效的注意力和压力管理能力。自闭症儿童在对环境中的刺激作出反应时,也有独特的感觉处理模式。在本研究中,设计并开发了一个用于注意力和应力检测的实时监测系统。系统可以使用传感器、智能设备和标准的感官分析问卷收集全面的感官信息,包括环境、生理和感官剖面数据。应用该系统对35名自闭症儿童进行了成功的数据采集。利用获得的数据集,训练不同的机器学习模型来预测注意力和压力水平。在所有模型中,梯度增强决策树和随机森林在注意力和应力检测上的预测准确率分别为86.67%和99.05%。然后将这两个模型实现到系统中进行自动检测。未来的工作可以集中在探索更多的支持性特征,以提高注意力检测的预测准确性。这种为ASD儿童量身定制的易于访问的监测系统可以广泛应用于日常生活中,以帮助ASD患者进行注意力和压力管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning-Based Monitoring System for Attention and Stress Detection for Children with Autism Spectrum Disorders
The majority of children with Autism Spectrum Disorders (ASD) have faced difficulties in sensory processing, which affect their ability of effective attention and stress management. Children with ASD also have unique patterns of sensory processing when responding to the stimuli in the environment. In this study, a real-time monitoring system has been designed and developed for attention and stress detection. Comprehensive sensory information, including environmental, physiological, and sensory profile data can be collected by the system using sensors, smart devices, and a standard sensory profiling questionnaire. Data acquisition with 35 ASD children using the system prototype was successfully conducted. With the acquired data set, different machine learning models were trained to predict attentional and stress level. Among all the investigated models, Gradient Boosting Decision Tree and Random Forest obtained the best prediction accuracies of 86.67% and 99.05% on attention and stress detection respectively. The two models were then implemented into the system for automatic detection. Future work could be focusing on exploring more supportive features to improve the prediction accuracy for attention detection. Such an easily-accessed monitoring system tailored for children with ASD could be widely-used in daily life to assist ASD users with their attention and stress management.
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