Three autism subtypes based on single-subject gray matter network revealed by semi-supervised machine learning

Autism spectrum disorder (ASD) is a heterogeneous, early-onset neurodevelopmental condition characterized by persistent impairments in social interaction and communication. This study aims to delineate ASD subtypes based on individual gray matter brain networks and provide new insights from a graph...

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Published inAutism research Vol. 17; no. 10; p. 1962
Main Authors Xu, Guomei, Geng, Guohong, Wang, Ankang, Li, Zhangyong, Liu, Zhichao, Liu, Yanping, Hu, Jun, Wang, Wei, Li, Xinwei
Format Journal Article
LanguageEnglish
Published United States 01.10.2024
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Abstract Autism spectrum disorder (ASD) is a heterogeneous, early-onset neurodevelopmental condition characterized by persistent impairments in social interaction and communication. This study aims to delineate ASD subtypes based on individual gray matter brain networks and provide new insights from a graph theory perspective. In this study, we extracted and normalized single-subject gray matter networks and calculated each network's topological properties. The heterogeneity through discriminative analysis (HYDRA) method was utilized to subtype all patients based on network properties. Next, we explored the differences among ASD subtypes in terms of network properties and clinical measures. Our investigation identified three distinct ASD subtypes. In the case-control study, these subtypes exhibited significant differences, particularly in the precentral gyrus, lingual gyrus, and middle frontal gyrus. In the case analysis, significant differences in global and nodal properties were observed between any two subtypes. Clinically, subtype 1 showed lower VIQ and PIQ compared to subtype 3, but exhibited higher scores in ADOS-Communication and ADOS-Total compared to subtype 2. The results highlight the distinct brain network properties and behaviors among different subtypes of male patients with ASD, providing valuable insights into the neural mechanisms underlying ASD heterogeneity.
AbstractList Autism spectrum disorder (ASD) is a heterogeneous, early-onset neurodevelopmental condition characterized by persistent impairments in social interaction and communication. This study aims to delineate ASD subtypes based on individual gray matter brain networks and provide new insights from a graph theory perspective. In this study, we extracted and normalized single-subject gray matter networks and calculated each network's topological properties. The heterogeneity through discriminative analysis (HYDRA) method was utilized to subtype all patients based on network properties. Next, we explored the differences among ASD subtypes in terms of network properties and clinical measures. Our investigation identified three distinct ASD subtypes. In the case-control study, these subtypes exhibited significant differences, particularly in the precentral gyrus, lingual gyrus, and middle frontal gyrus. In the case analysis, significant differences in global and nodal properties were observed between any two subtypes. Clinically, subtype 1 showed lower VIQ and PIQ compared to subtype 3, but exhibited higher scores in ADOS-Communication and ADOS-Total compared to subtype 2. The results highlight the distinct brain network properties and behaviors among different subtypes of male patients with ASD, providing valuable insights into the neural mechanisms underlying ASD heterogeneity.
Author Liu, Zhichao
Hu, Jun
Geng, Guohong
Li, Zhangyong
Wang, Wei
Wang, Ankang
Liu, Yanping
Xu, Guomei
Li, Xinwei
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Keywords gray matter network
autism spectrum disorders
semi‐supervised machine learning
graph theory
heterogeneity
Language English
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Snippet Autism spectrum disorder (ASD) is a heterogeneous, early-onset neurodevelopmental condition characterized by persistent impairments in social interaction and...
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SubjectTerms Adolescent
Autism Spectrum Disorder - classification
Autism Spectrum Disorder - diagnostic imaging
Autism Spectrum Disorder - physiopathology
Brain - diagnostic imaging
Brain - physiopathology
Case-Control Studies
Child
Gray Matter - diagnostic imaging
Humans
Magnetic Resonance Imaging - methods
Male
Nerve Net - diagnostic imaging
Nerve Net - physiopathology
Supervised Machine Learning
Young Adult
Title Three autism subtypes based on single-subject gray matter network revealed by semi-supervised machine learning
URI https://www.ncbi.nlm.nih.gov/pubmed/38925611
Volume 17
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