Can lung airway geometry be used to predict autism? A preliminary machine learning-based study.
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BORIS DOI
Publisher DOI
PubMed ID
37771211
Description
The goal of this study is to assess the feasibility of airway geometry as a biomarker for autism spectrum disorder (ASD). Chest computed tomography images of children with a documented diagnosis of ASD as well as healthy controls were identified retrospectively. Fifty-four scans were obtained for analysis, including 31 ASD cases and 23 controls. A feature selection and classification procedure using principal component analysis and support vector machine achieved a peak cross validation accuracy of nearly 89% using a feature set of eight airway branching angles. Sensitivity was 94%, but specificity was only 78%. The results suggest a measurable difference in airway branching angles between children with ASD and the control population.
Date of Publication
2024-02
Publication Type
Article
Keyword(s)
autism spectrum disorder biomarker computed tomography conducting airway geometry feature selection machine learning
Language(s)
en
Contributor(s)
Islam, Asef | |
Ronco, Anthony | |
Becker, Stephen M | |
Blackburn, Jeremiah | |
Kim, Kyoungmi | |
Stein-Wexler, Rebecca | |
Wexler, Anthony S |
Additional Credits
Series
Anatomical record
Publisher
Wiley
ISSN
1932-8494
Access(Rights)
restricted