| Literature DB >> 28649923 |
Yasushi Nakai1, Tetsuya Takiguchi2, Gakuyo Matsui3, Noriko Yamaoka4, Satoshi Takada2.
Abstract
Abnormal prosody is often evident in the voice intonations of individuals with autism spectrum disorders. We compared a machine-learning-based voice analysis with human hearing judgments made by 10 speech therapists for classifying children with autism spectrum disorders ( n = 30) and typical development ( n = 51). Using stimuli limited to single-word utterances, machine-learning-based voice analysis was superior to speech therapist judgments. There was a significantly higher true-positive than false-negative rate for machine-learning-based voice analysis but not for speech therapists. Results are discussed in terms of some artificiality of clinician judgments based on single-word utterances, and the objectivity machine-learning-based voice analysis adds to judging abnormal prosody.Entities:
Keywords: F-measure; abnormal prosody; autism spectrum disorder; machine-learning-based voice analysis; speech therapy
Mesh:
Year: 2017 PMID: 28649923 DOI: 10.1177/0031512517716855
Source DB: PubMed Journal: Percept Mot Skills ISSN: 0031-5125