Roxelyn and Richard Pepper Department of Communication Sciences and Disorders, Northwestern University, Evanston, Illinois, United States of America.
Department of Linguistics and Modern Languages, The Chinese University of Hong Kong, Hong Kong S.A.R., China.
PLoS One. 2022 Jun 8;17(6):e0269637. doi: 10.1371/journal.pone.0269637. eCollection 2022.
Differences in speech prosody are a widely observed feature of Autism Spectrum Disorder (ASD). However, it is unclear how prosodic differences in ASD manifest across different languages that demonstrate cross-linguistic variability in prosody. Using a supervised machine-learning analytic approach, we examined acoustic features relevant to rhythmic and intonational aspects of prosody derived from narrative samples elicited in English and Cantonese, two typologically and prosodically distinct languages. Our models revealed successful classification of ASD diagnosis using rhythm-relative features within and across both languages. Classification with intonation-relevant features was significant for English but not Cantonese. Results highlight differences in rhythm as a key prosodic feature impacted in ASD, and also demonstrate important variability in other prosodic properties that appear to be modulated by language-specific differences, such as intonation.
言语韵律差异是自闭症谱系障碍(ASD)的一个广泛观察到的特征。然而,目前尚不清楚 ASD 中的韵律差异如何在具有韵律跨语言变异性的不同语言中表现出来。我们使用监督机器学习分析方法,研究了从英语和粤语中引出的叙事样本中与韵律的节奏和语调方面相关的声学特征,这两种语言在类型学和韵律上都有差异。我们的模型显示,使用韵律相关特征在两种语言中都可以成功地对 ASD 诊断进行分类。使用与语调相关的特征进行分类在英语中是显著的,但在粤语中则不然。结果突出了节奏作为受 ASD 影响的关键韵律特征的差异,也表明了其他韵律特征的重要可变性,这些特征似乎受到语言特异性差异(如语调)的调节。