| Literature DB >> 26613541 |
Sean X Luo1, Jacqueline A Shinall1, Bradley S Peterson2, Andrew J Gerber1.
Abstract
Adults with autism spectrum disorder (ASD) may describe other individuals differently compared with typical adults. In this study, we first asked participants to describe closely related individuals such as parents and close friends with 10 positive and 10 negative characteristics. We then used standard natural language processing methods to digitize and visualize these descriptions. The complex patterns of these descriptive sentences exhibited a difference in semantic space between individuals with ASD and control participants. Machine learning algorithms were able to automatically detect and discriminate between these two groups. Furthermore, we showed that these descriptive sentences from adults with ASD exhibited fewer connections as defined by word-word co-occurrences in descriptions, and these connections in words formed a less "small-world" like network. Autism Res 2016, 9: 846-853.Entities:
Keywords: autism spectrum disorder; classification; latent semantic indexing; machine learning; semantic web; small-world network
Mesh:
Year: 2015 PMID: 26613541 DOI: 10.1002/aur.1581
Source DB: PubMed Journal: Autism Res ISSN: 1939-3806 Impact factor: 5.216