The stability and validity of automated vocal analysis in preverbal preschoolers with autism spectrum disorder
Woynaroski, Oller, Keceli-Kaysili, Xu, Richards, Gilkerson, Gray, Yoder
Theory
and research suggest that vocal development predicts “useful speech” in
preschoolers with autism spectrum disorder (ASD), but conventional methods
for measurement of vocal development are costly and time consuming. This
longitudinal correlational study examines the reliability and validity of
several automated indices of vocalization development relative to an index
derived from human coded, conventional communication samples in a sample of
preverbal preschoolers with ASD. Automated indices of vocal development were
derived using software that is presently “in development” and/or only
available for research purposes and using commercially available Language
ENvironment Analysis (LENA) software. Indices of vocal development that could
be derived using the software available for research purposes: (a) were
highly stable with a single day-long audio recording, (b) predicted future
spoken vocabulary to a degree that was nonsignificantly different from the
index derived from conventional communication samples, and (c) continued to
predict future spoken vocabulary even after controlling for concurrent
vocabulary in our sample. The score derived from standard LENA software was
similarly stable, but was not significantly correlated with future spoken vocabulary.
Findings suggest that automated vocal analysis is a valid and reliable
alternative to time intensive and expensive conventional communication
samples for measurement of vocal development of preverbal preschoolers with
ASD in research and clinical practice.