| Literature DB >> 25652603 |
Alessandro Crippa1, Christian Salvatore, Paolo Perego, Sara Forti, Maria Nobile, Massimo Molteni, Isabella Castiglioni.
Abstract
In the present work, we have undertaken a proof-of-concept study to determine whether a simple upper-limb movement could be useful to accurately classify low-functioning children with autism spectrum disorder (ASD) aged 2-4. To answer this question, we developed a supervised machine-learning method to correctly discriminate 15 preschool children with ASD from 15 typically developing children by means of kinematic analysis of a simple reach-to-drop task. Our method reached a maximum classification accuracy of 96.7% with seven features related to the goal-oriented part of the movement. These preliminary findings offer insight into a possible motor signature of ASD that may be potentially useful in identifying a well-defined subset of patients, reducing the clinical heterogeneity within the broad behavioral phenotype.Entities:
Mesh:
Year: 2015 PMID: 25652603 DOI: 10.1007/s10803-015-2379-8
Source DB: PubMed Journal: J Autism Dev Disord ISSN: 0162-3257