Abstract
Purpose: A current need in the field of speech–language pathology is the development of reliable and efficient techniques to evaluate accuracy of speech targets over the course of treatment. As acoustic measurement techniques improve, it should become possible to use automated scoring in lieu of ratings from a trained clinician in some contexts. This study asks which acoustic measures correspond most closely with expert ratings of children’s productions of American English /ɹ/ in an effort to develop an automated scoring algorithm for use in treatment targeting rhotics.
Method: A series of ordinal mixed-effects regression models were fit over a large sample of children's productions of words containing /ɹ/ that had previously been rated by three trained clinicians. Akaike/Bayesian Information Criteria were used to select the best-fitting model.
Result: Controlling for age, sex, and allophonic contextual differences, the measure that accounted for the most variance in speech rating was F3–F2 distance normalised relative to a sample of age- and sex-matched speakers.
Conclusion: We recommend this acoustic measure for use in future automated scoring of children’s production of American English rhotics. We also suggest that computer-based treatment with automated scoring should facilitate increases in treatment dosage by improving options for home practice.
Funding
This work was supported by the National Institutes of Health (NIH) under [grant #R01DC013668]. The authors are involved in the development of staRt, an app to provide visual-acoustic biofeedback treatment. They do not receive financial compensation for their role in developing the app.
Declaration of interest
No potential conflict of interest was reported by the authors.