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White Matter Connectome Edge Density in Children with Autism Spectrum Disorders: Potential Imaging Biomarkers Using Machine-Learning Models
- Source :
- Brain Connectivity. 9:209-220
- Publication Year :
- 2019
- Publisher :
- Mary Ann Liebert Inc, 2019.
-
Abstract
- Prior neuroimaging studies have reported white matter network underconnectivity as a potential mechanism for autism spectrum disorder (ASD). In this study, we examined the structural connectome of children with ASD using edge density imaging (EDI), and then applied machine-learning algorithms to identify children with ASD based on tract-based connectivity metrics. Boys aged 8–12 years were included: 14 with ASD and 33 typically developing children. The edge density (ED) maps were computed from probabilistic streamline tractography applied to high angular resolution diffusion imaging. Tract-based spatial statistics was used for voxel-wise comparison and coregistration of ED maps in addition to conventional diffusion tensor imaging (DTI) metrics of fractional anisotropy (FA), mean diffusivity (MD), and radial diffusivity (RD). Tract-based average DTI/connectome metrics were calculated and used as input for different machine-learning models: naïve Bayes, random forest, support vector machines (SVMs), and neural networks. For these models, cross-validation was performed with stratified random sampling ( × 1,000 permutations). The average accuracy among validation samples was calculated. In voxel-wise analysis, the body and splenium of corpus callosum, bilateral superior and posterior corona radiata, and left superior longitudinal fasciculus showed significantly lower ED in children with ASD; whereas, we could not find significant difference in FA, MD, and RD maps between the two study groups. Overall, machine-learning models using tract-based ED metrics had better performance in identification of children with ASD compared with those using FA, MD, and RD. The EDI-based random forest models had greater average accuracy (75.3%), specificity (97.0%), and positive predictive value (81.5%), whereas EDI-based polynomial SVM had greater sensitivity (51.4%) and negative predictive values (77.7%). In conclusion, we found reduced density of connectome edges in the posterior white matter tracts of children with ASD, and demonstrated the feasibility of connectome-based machine-learning algorithms in identification of children with ASD.
- Subjects :
- Male
Support Vector Machine
Autism Spectrum Disorder
Splenium
Neuroimaging
Corpus callosum
Machine learning
computer.software_genre
Sensitivity and Specificity
050105 experimental psychology
Machine Learning
White matter
03 medical and health sciences
0302 clinical medicine
Fractional anisotropy
Connectome
medicine
Humans
Computer Simulation
0501 psychology and cognitive sciences
Child
Mathematics
business.industry
General Neuroscience
05 social sciences
Brain
Bayes Theorem
Original Articles
Magnetic Resonance Imaging
White Matter
Diffusion Tensor Imaging
medicine.anatomical_structure
Anisotropy
Artificial intelligence
business
computer
Algorithms
Biomarkers
030217 neurology & neurosurgery
Diffusion MRI
Tractography
Subjects
Details
- ISSN :
- 21580022 and 21580014
- Volume :
- 9
- Database :
- OpenAIRE
- Journal :
- Brain Connectivity
- Accession number :
- edsair.doi.dedup.....f6a9759f2453d7025dba65c0dd03a789
- Full Text :
- https://doi.org/10.1089/brain.2018.0658