Home
Scholarly Works
VERY EARLY DETECTION OF AUTISM SPECTRUM DISORDERS...
Conference

VERY EARLY DETECTION OF AUTISM SPECTRUM DISORDERS BASED ON ACOUSTIC ANALYSIS OF PRE-VERBAL VOCALIZATIONS OF 18-MONTH OLD TODDLERS

Abstract

With the increasing prevalence of Autism Spectrum Disorders (ASD), very early detection has become a key priority research topic, as early interventions can increase the chances of success. Since atypical communication is a hallmark of ASD, automated acoustic-prosodic analyses have received prominent attention. Existing studies, however, have focused on verbal children, typically over the age of three (when many children may be reliably diagnosed) and as high as early teens. Here, an acoustic-prosodic analysis of pre-verbal vocalizations (e.g., babbles, cries) of 18-month old toddlers is performed. Data was obtained from a prospective longitudinal study looking at high-risk siblings of children with ASD who were also diagnosed with ASD, as well as low-risk age-matched typically developing controls. Several acoustic prosodic features were extracted and used to train support vector machine and probabilistic neural network classifiers; classification accuracy as high as 97% was obtained. Our findings suggest that markers of autism may be present in pre-verbal vocalizations of 18-month old toddlers, thus may be used to assist clinicians with very early detection of ASD.

Authors

Santos JF; Brosh N; Falk TH; Zwaigenbaum L; Bryson SE; Roberts W; Smith IM; Szatmari P; Brian JA

Pagination

pp. 7567-7571

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

May 1, 2013

DOI

10.1109/icassp.2013.6639134

Name of conference

2013 IEEE International Conference on Acoustics, Speech and Signal Processing
View published work (Non-McMaster Users)

Contact the Experts team