Uncertainty of Vowel Predictions as a Digital Biomarker for Ataxic Dysarthria

Dmitry Yu Isaev, Roza M. Vlasova, J. Matias Di Martino, Christopher D. Stephen, Jeremy D. Schmahmann, Guillermo Sapiro, Anoopum S. Gupta

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Dysarthria is a common manifestation across cerebellar ataxias leading to impairments in communication, reduced social connections, and decreased quality of life. While dysarthria symptoms may be present in other neurological conditions, ataxic dysarthria is a perceptually distinct motor speech disorder, with the most prominent characteristics being articulation and prosody abnormalities along with distorted vowels. We hypothesized that uncertainty of vowel predictions by an automatic speech recognition system can capture speech changes present in cerebellar ataxia. Speech of participants with ataxia (N=61) and healthy controls (N=25) was recorded during the “picture description” task. Additionally, participants’ dysarthric speech and ataxia severity were assessed on a Brief Ataxia Rating Scale (BARS). Eight participants with ataxia had speech and BARS data at two timepoints. A neural network trained for phoneme prediction was applied to speech recordings. Average entropy of vowel tokens predictions (AVE) was computed for each participant’s recording, together with mean pitch and intensity standard deviations (MPSD and MISD) in the vowel segments. AVE and MISD demonstrated associations with BARS speech score (Spearman’s rho=0.45 and 0.51), and AVE demonstrated associations with BARS total (rho=0.39). In the longitudinal cohort, Wilcoxon pairwise signed rank test demonstrated an increase in BARS total and AVE, while BARS speech and acoustic measures did not significantly increase. Relationship of AVE to both BARS speech and BARS total, as well as the ability to capture disease progression even in absence of measured speech decline, indicates the potential of AVE as a digital biomarker for cerebellar ataxia.

Original languageEnglish
Pages (from-to)459-470
Number of pages12
JournalCerebellum
Volume23
Issue number2
DOIs
StatePublished - Apr 2024
Externally publishedYes

Keywords

  • Ataxia
  • Automatic speech recognition
  • Biomarkers
  • Clinical trials
  • Dysarthria
  • Entropy/uncertainty

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