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Is Smiling the Key? Machine Learning Analytics Detect Subtle Patterns in Micro-Expressions of Infants with ASD

机译:微笑着关键?机器学习分析检测微观表达式婴儿的微妙模式

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摘要

Time is a key factor to consider in Autism Spectrum Disorder. Detecting the condition as early as possible is crucial in terms of treatment success. Despite advances in the literature, it is still difficult to identify early markers able to effectively forecast the manifestation of symptoms. Artificial intelligence (AI) provides effective alternatives for behavior screening. To this end, we investigated facial expressions in 18 autistic and 15 typical infants during their first ecological interactions, between 6 and 12 months of age. We employed Openface, an AI-based software designed to systematically analyze facial micro-movements in images in order to extract the subtle dynamics of Social Smiles in unconstrained Home Videos. Reduced frequency and activation intensity of Social Smiles was computed for children with autism. Machine Learning models enabled us to map facial behavior consistently, exposing early differences hardly detectable by non-expert naked eye. This outcome contributes to enhancing the potential of AI as a supportive tool for the clinical framework.
机译:时间是自闭症要考虑的关键因素。尽早检测条件是治疗成功的关键方面。尽管在文学的进步,但仍然难以找出能够有效预测的症状的表现早期标志物。人工智能(AI)为行为筛选有效的替代品。为此,我们在他们的第一个生态相互作用研究了18名自闭症和15典型的婴儿的面部表情,6和12个月的年龄之间。我们采用Openface,基于人工智能的软件设计,系统地分析,以便提取社会微笑的细微动态,不受约束的家庭视频图像中的面部微运动。降低频率和社会微笑的激活强度计算为自闭症儿童。机器学习模型使我们能够始终如一地映射脸部行为,暴露出早期的差异几乎检测不到非专家肉眼。这一成果有助于提高AI的潜力作为临床框架支持工具。

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