利用亲子区块游戏协议和注意力增强型 GCN-xLSTM 混合深度学习框架提高自闭症谱系障碍的早期检测能力

Xiang Li, Lizhou Fan, Hanbo Wu, Kunping Chen, Xiaoxiao Yu, Chao Che, Zhifeng Cai, Xiuhong Niu, Aihua Cao, Xin Ma
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自闭症谱系障碍(ASD)是一种迅速发展的神经发育障碍。及时进行干预对患有自闭症的幼儿的成长至关重要,但传统的临床筛查方法缺乏客观性。这项研究的贡献有三方面。首先,本研究以运动学和神经科学研究为基础,提出了一种新颖的亲子积木游戏(PCB)方案,以识别区分 ASD 和典型发育(TD)幼儿的行为模式。其次,我们汇编了大量视频数据集,其中包括 40 名 ASD 和 89 名 TD 学步儿童与父母一起玩积木游戏的视频。这个数据集在参与者规模和单个环节的长度上都超过了以往的研究。第三,我们的视频动作分析方法采用了混合深度学习框架,将双流图卷积网络与注意力增强 xLSTM(2sGCN-AxLSTM)整合在一起。该框架通过提取与上半身和头部运动相关的空间特征并关注动作序列的全局上下文信息,善于捕捉幼儿和父母之间的动态互动。通过学习这些具有时空相关性的全局特征,我们的 2sGCN-AxLSTM 可以有效地分析人类的动态行为模式,并在早期 ASD 检测中表现出前所未有的 89.6% 的准确率。我们的方法通过准确分析亲子间的互动,为支持及时、明智的临床决策提供了重要工具,从而显示出增强 ASD 早期诊断的强大潜力。
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Enhancing Autism Spectrum Disorder Early Detection with the Parent-Child Dyads Block-Play Protocol and an Attention-enhanced GCN-xLSTM Hybrid Deep Learning Framework
Autism Spectrum Disorder (ASD) is a rapidly growing neurodevelopmental disorder. Performing a timely intervention is crucial for the growth of young children with ASD, but traditional clinical screening methods lack objectivity. This study introduces an innovative approach to early detection of ASD. The contributions are threefold. First, this work proposes a novel Parent-Child Dyads Block-Play (PCB) protocol, grounded in kinesiological and neuroscientific research, to identify behavioral patterns distinguishing ASD from typically developing (TD) toddlers. Second, we have compiled a substantial video dataset, featuring 40 ASD and 89 TD toddlers engaged in block play with parents. This dataset exceeds previous efforts on both the scale of participants and the length of individual sessions. Third, our approach to action analysis in videos employs a hybrid deep learning framework, integrating a two-stream graph convolution network with attention-enhanced xLSTM (2sGCN-AxLSTM). This framework is adept at capturing dynamic interactions between toddlers and parents by extracting spatial features correlated with upper body and head movements and focusing on global contextual information of action sequences over time. By learning these global features with spatio-temporal correlations, our 2sGCN-AxLSTM effectively analyzes dynamic human behavior patterns and demonstrates an unprecedented accuracy of 89.6\% in early detection of ASD. Our approach shows strong potential for enhancing early ASD diagnosis by accurately analyzing parent-child interactions, providing a critical tool to support timely and informed clinical decision-making.
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