A New Paradigm for Autism Spectrum Disorder Discrimination in Children Utilizing EEG Data Collected During Cartoon Viewing With a Focus on Atypical Semantic Processing.

IF 5.6
Lin Deng, Meng-Jie Lu, Le-Tong Yang, Yue Zhang, Hang-Yu Tan, Miao Cao, Fei Li
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Abstract

Autism spectrum disorder (ASD) is characterized by impaired social interaction and communication skills, with semantic processing difficulties being a hallmark feature that significantly impacts social communication. While traditional neuroimaging studies have provided insights into language processing in ASD, ecological validity remains a challenge, particularly when assessing young children. This study introduces a novel approach to evaluate atypical semantic processing in children with ASD (aged 4-10 years) through electroencephalography (EEG) data collection during cartoon viewing, offering a more natural assessment environment. We developed an innovative methodology combining pretrained language models with regression techniques in a machine learning framework. The analysis incorporated the Six-dimensional Semantic Database system and EEG topographical mapping to investigate semantic processing preferences and neural mechanisms across various word dimensions. Our semantic processing model demonstrated robust performance with high sensitivity (91.3%) and moderate specificity (61.0%); findings successfully replicated in validation analysis. These results reveal distinct patterns in how children with ASD process semantic information, particularly in their integration and response to emotional semantic dimensions. These findings help us understand the language processing patterns in ASD and provide potential applications for auxiliary diagnosis in more natural settings, meeting important needs in clinical practice.

儿童自闭症谱系障碍识别的新范式:基于非典型语义加工的儿童脑电分析。
自闭症谱系障碍(Autism spectrum disorder, ASD)以社会交往和沟通能力受损为特征,语义处理困难是显著影响社会沟通的显著特征。虽然传统的神经成像研究已经为ASD的语言处理提供了见解,但生态有效性仍然是一个挑战,特别是在评估幼儿时。本研究介绍了一种新的方法,通过收集4-10岁ASD儿童在观看动画片时的脑电图(EEG)数据来评估非典型语义加工,提供了一个更自然的评估环境。我们开发了一种创新的方法,将机器学习框架中的预训练语言模型与回归技术相结合。本研究结合六维语义数据库系统和脑电地形图,探讨不同词维语义加工偏好和神经机制。我们的语义处理模型具有高灵敏度(91.3%)和中等特异性(61.0%)的鲁棒性;结果在验证分析中成功重复。这些结果揭示了自闭症儿童处理语义信息的独特模式,特别是他们对情感语义维度的整合和反应。这些发现有助于我们了解ASD的语言处理模式,并为在更自然的环境中辅助诊断提供潜在的应用,满足临床实践的重要需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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