Different in different ways: A network-analysis approach to voice and prosody in Autism Spectrum Disorder.

Q1 Computer Science
IEEE Cloud Computing Pub Date : 2024-01-01 Epub Date: 2023-04-25 DOI:10.1080/15475441.2023.2196528
Ethan Weed, Riccardo Fusaroli, Elizabeth Simmons, Inge-Marie Eigsti
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引用次数: 0

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.

各不相同:自闭症谱系障碍中的语音和拟声网络分析方法。
自闭症谱系障碍(ASD)患者和神经典型(NT)患者之间的拟声难以发现群体差异,本研究探讨了这一问题是否可以通过识别不同声学特征来解释,这些声学特征虽然仍被视为非典型,但可能具有不同的声学品质。我们选择了一些患有和不患有 ASD 的说话者(N = 26),将他们的语音建模为一个由声学特征定义的节点网络。我们使用群体检测算法识别出声学上相似的说话者群集,并将这些群集与天真和专业人类评分者的非典型性评分进行比较。结果发现了三个聚类:一个主要由 ASD 说话者组成,一个主要由 NT 说话者组成,还有一个由 ASD 和 NT 说话者平均混合组成。无论说话者属于哪个群组,人类评测员在区分有 ASD 和无 ASD 的说话者方面都非常可靠。这些结果表明,使用网络方法的群组检测方法可以补充常用的人类评分方法,从而提高我们对 ASD 患者语调特征的理解。
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来源期刊
IEEE Cloud Computing
IEEE Cloud Computing Computer Science-Computer Networks and Communications
CiteScore
11.20
自引率
0.00%
发文量
0
期刊介绍: Cessation. IEEE Cloud Computing is committed to the timely publication of peer-reviewed articles that provide innovative research ideas, applications results, and case studies in all areas of cloud computing. Topics relating to novel theory, algorithms, performance analyses and applications of techniques are covered. More specifically: Cloud software, Cloud security, Trade-offs between privacy and utility of cloud, Cloud in the business environment, Cloud economics, Cloud governance, Migrating to the cloud, Cloud standards, Development tools, Backup and recovery, Interoperability, Applications management, Data analytics, Communications protocols, Mobile cloud, Private clouds, Liability issues for data loss on clouds, Data integration, Big data, Cloud education, Cloud skill sets, Cloud energy consumption, The architecture of cloud computing, Applications in commerce, education, and industry, Infrastructure as a Service (IaaS), Platform as a Service (PaaS), Software as a Service (SaaS), Business Process as a Service (BPaaS)
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