Autism Spectrum Disorder Discrimination Based on Voice Activities Related to Fillers and Laughter

Daiki Mitsumoto, T. Hori, S. Sagayama, H. Yamasue, Keiho Owada, Masaki Kojima, K. Ochi, Nobutaka Ono
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引用次数: 2

Abstract

Autism spectrum disorder (ASD) is a developmental disorder characterized by impairment in social communication, restricted interest and stereotyped behaviors. Since current diagnosis methods are depending on time intensive subjective assessments, the establishment of novel therapeutics could be facilitated by objective, quantitative, and reproducible methods for supporting diagnosis. To that end, we investigated acoustic features of speech which characterize the difference between ASD and typical development (TD). The focus of this paper are features related to fillers and laughter, which play important roles in communication as social signals, and were observed to be used differently by ASD and TD individuals in previous research. We investigated several such features and statistically evaluated how helpful they are for discriminating between ASD and TD. In an experiment, we applied a support vector machine (SVM) for ASD classification considering both prosodic acoustic features as well as the most significant features related to social signals. Discrimination accuracy and F-measure of were slightly improved when using not only the prosodic features but also those related to social signals.
基于填充物和笑声相关的声音活动的自闭症谱系障碍歧视
自闭症谱系障碍(ASD)是一种以社交障碍、兴趣限制和刻板行为为特征的发育障碍。由于目前的诊断方法依赖于时间密集的主观评估,因此建立新的治疗方法可以通过客观、定量和可重复的方法来支持诊断。为此,我们研究了表征ASD和典型发育(TD)之间差异的语音声学特征。本文的研究重点是与填充物和笑声相关的特征,这些特征作为社会信号在交际中起着重要的作用,在以往的研究中观察到ASD和TD个体对填充物和笑声的使用存在差异。我们调查了几个这样的特征,并统计评估了它们对区分ASD和TD的帮助。在实验中,我们将支持向量机(SVM)用于ASD分类,同时考虑了韵律声学特征以及与社交信号相关的最显著特征。不仅使用韵律特征,而且使用与社会信号相关的特征,其识别准确率和f值均略有提高。
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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