학술논문

Different in Different Ways: A Network-Analysis Approach to Voice and Prosody in Autism Spectrum Disorder.
Document Type
Article
Source
Language Learning & Development. Jan-Mar2024, Vol. 20 Issue 1, p40-57. 18p.
Subject
*Judgment (Psychology)
*Auditory perception
*Speech evaluation
*Autism
*Communication
*Voice disorders
Physiological aspects of speech
Confidence intervals
Analysis of variance
Comparative studies
Inter-observer reliability
T-test (Statistics)
Descriptive statistics
Intraclass correlation
Research funding
Data analysis software
Algorithms
Adolescence
Language
ISSN
1547-5441
Abstract
The current study investigated whether the difficulty in finding group differences in prosody between speakers with autism spectrum disorder (ASD) and neurotypical (NT) speakers might be explained by identifying different acoustic profiles of speakers which, while still perceived as atypical, might be characterized by different acoustic qualities. We modelled the speech from a selection of speakers (N = 26), with and without ASD, as a network of nodes defined by acoustic features. We used a community-detection algorithm to identify clusters of speakers who were acoustically similar and compared these clusters with atypicality ratings by naïve and expert human raters. Results identified three clusters: one primarily composed of speakers with ASD, one of mostly NT speakers, and one comprised of an even mixture of ASD and NT speakers. The human raters were highly reliable at distinguishing speakers with and without ASD, regardless of which cluster the speaker was in. These results suggest that community-detection methods using a network approach may complement commonly-employed human ratings to improve our understanding of the intonation profiles in ASD. [ABSTRACT FROM AUTHOR]