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Responsive Social Smile: A Machine Learning based Multimodal Behavior Assessment Framework towards Early Stage Autism Screening

机译:响应性社会笑容:基于机器学习的早期自闭症筛选的多峰行为评估框架

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Autism spectrum disorder (ASD) is a neuro-developmental disorder, which causes deficits in social lives. Early screening of ASD for young children is important to reduce the impact of ASD on people's lives. Traditional screening methods mainly rely on protocol-based interviews and subjective evaluations from clinicians and domain experts, which requires advanced expertise and intensive labor. To standardize the process of ASD screening, we design a “Responsive Social Smile” protocol and the associated experimental setup. Moreover, we propose a machine learning based assessment framework for early ASD screening. By integrating speech recognition and computer vision technologies, the proposed framework can quantitatively analyze children's behaviors under well-designed protocols. We collect 196 stimulus samples from 41 children with an average age of 23.34 months, and the proposed method obtains 85.20% accuracy for predicting stimulus scores and 80.49% accuracy for the final ASD prediction. This result indicates that our model approaches the average level of domain experts in this “Responsive Social Smile” protocol.
机译:自闭症谱系障碍(ASD)是一种神经发育障碍,导致社会生活中的缺陷。早期筛查ASD为幼儿对减少ASD对人们生活的影响很重要。传统的筛选方法主要依赖于临床医生和领域专家的基于协议的访谈和主观评估,这需要高级专业知识和强化劳动力。为了标准化ASD筛选的过程,我们设计了“响应社会笑容”协议和相关的实验设置。此外,我们提出了一种基于机器学习的早期筛选评估框架。通过集成语音识别和计算机视觉技术,所提出的框架可以定量分析儿童在设计良好的协议下的行为。我们从平均年龄为23.34个月的41名儿童收集196个刺激样品,并且所提出的方法获得85.20%的准确性,以预测刺激评分和最终ASD预测的80.49%的准确性。该结果表明,我们的模型在这种“响应社会笑容”协议中接近域专家的平均水平。

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