Artificial Intelligence-Assisted Speech Therapy for /ɹ/: A Single-Case Experimental Study

Am J Speech Lang Pathol. 2024 Sep 18;33(5):2461-2486. doi: 10.1044/2024_AJSLP-23-00448. Epub 2024 Aug 22.

Abstract

Purpose: This feasibility trial describes changes in rhotic production in residual speech sound disorder following ten 40-min sessions including artificial intelligence (AI)-assisted motor-based intervention with ChainingAI, a version of Speech Motor Chaining that predicts clinician perceptual judgment using the PERCEPT-R Classifier (Perceptual Error Rating for the Clinical Evaluation of Phonetic Targets). The primary purpose is to evaluate /ɹ/ productions directly after practice with ChainingAI versus directly before ChainingAI and to evaluate how the overall AI-assisted treatment package may lead to perceptual improvement in /ɹ/ productions compared to a no-treatment baseline phase.

Method: Five participants ages 10;7-19;3 (years;months) who were stimulable for /ɹ/ participated in a multiple (no-treatment)-baseline ABA single-case experiment. Prepractice activities were led by a human clinician, and drill-based motor learning practice was automated by ChainingAI. Study outcomes were derived from masked expert listener perceptual ratings of /ɹ/ from treated and untreated utterances recorded during baseline, treatment, and posttreatment sessions.

Results: Listeners perceived significantly more rhoticity in practiced utterances after 30 min of ChainingAI, without a clinician, than directly before ChainingAI. Three of five participants showed significant generalization of /ɹ/ to untreated words during the treatment phase compared to the no-treatment baseline. All five participants demonstrated statistically significant generalization of /ɹ/ to untreated words from pretreatment to posttreatment. PERCEPT-clinician rater agreement (i.e., F1 score) was largely within the range of human-human agreement for four of five participants. Survey data indicated that parents and participants felt hybrid computerized-clinician service delivery could facilitate at-home practice.

Conclusions: This study provides evidence of participant improvement for /ɹ/ in untreated words in response to an AI-assisted treatment package. The continued development of AI-assisted treatments may someday mitigate barriers precluding access to sufficiently intense speech therapy for individuals with speech sound disorders.

Supplemental material: https://doi.org/10.23641/asha.26662807.

MeSH terms

  • Adolescent
  • Artificial Intelligence*
  • Child
  • Feasibility Studies
  • Female
  • Humans
  • Male
  • Phonetics
  • Speech Production Measurement / methods
  • Speech Sound Disorder* / diagnosis
  • Speech Sound Disorder* / therapy
  • Speech Therapy* / methods
  • Therapy, Computer-Assisted / methods
  • Treatment Outcome
  • Young Adult