Research progress and application prospects of speech recognition technology in autism spectrum disorder diagnosis
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Office of the Dean,the Affiliated Brain Hospital of Nanjing Medical University,Nanjing 210024 ,China

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    Abstract:

    Autism spectrum disorder(ASD)is a neurodevelopmental disorder that typically emerges in early childhood,with core symptoms predominantly manifesting in language and social interaction. Although traditional diagnostic tools,such as the Autism Diagnostic Observation Schedule-2,are widely used,they often have limited accessibility and objectivity in younger children and in primary healthcare settings. Due to its strong quantitative capabilities,relatively low cost,and high sensitivity to early speech anomalies in infants,speech recognition technology has emerged as a promising approach for ASD diagnostic support. This paper systematically reviews the latest research on the application of speech recognition in early screening across different age groups, diagnosis of comorbid emotional issues,assessment of disease severity,and multimodal data integration. The findings indicate that extracting acoustic features(such as fundamental frequency,speech rate,and pauses)can effectively distinguish individuals with ASD from typically developing children,while also identifying comorbidities like anxiety,depression,and attention deficit hyperactivity disorder. Furthermore,multimodal fusion(e.g.,neuroimaging,physiological signals,and behavioral data)can further improve diagnostic accuracy. However,challenges persist,including inadequate data diversity,limitations related to dialect and age applicability,confounding effects of comorbid conditions,and concerns over privacy.

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LI Jinyu, ZHAO Taihong. Research progress and application prospects of speech recognition technology in autism spectrum disorder diagnosis[J].,2025,(4):574-579,587.

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  • Received:November 13,2024
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  • Online: April 08,2025
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