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dc.contributor.author이종민-
dc.date.accessioned2022-12-06T04:59:16Z-
dc.date.available2022-12-06T04:59:16Z-
dc.date.issued2022-07-
dc.identifier.citationFRONTIERS IN NEUROSCIENCE, v. 16, article no. 935431, Page. 1-16en_US
dc.identifier.issn1662-4548;1662-453Xen_US
dc.identifier.urihttps://www.frontiersin.org/articles/10.3389/fnins.2022.935431/fullen_US
dc.identifier.urihttps://repository.hanyang.ac.kr/handle/20.500.11754/178029-
dc.description.abstractMachine learning algorithms have been widely applied in diagnostic tools for autism spectrum disorder (ASD), revealing an altered brain connectivity. However, little is known about whether an magnetic resonance imaging (MRI)-based brain network is related to the severity of ASD symptoms in a large-scale cohort. We propose a graph convolution neural network-based framework that can generate sparse hierarchical graph representations for functional brain connectivity. Instead of assigning initial features for each node, we utilized a feature extractor to derive node features and the extracted representations can be fed to a hierarchical graph self-attention framework to effectively represent the entire graph. By incorporating connectivity embeddings in the feature extractor, we propose adjacency embedding networks to characterize the heterogeneous representations of the brain connectivity. Our proposed model variants outperform the benchmarking model with different configurations of adjacency embedding networks and types of functional connectivity matrices. Using this approach with the best configuration (SHEN atlas for node definition, Tikhonov correlation for connectivity estimation, and identity-adjacency embedding), we were able to predict individual ASD severity levels with a meaningful accuracy: the mean absolute error (MAE) and correlation between predicted and observed ASD severity scores resulted in 0.96, and r = 0.61 (P < 0.0001), respectively. To obtain a better understanding on how to generate better representations, we investigate the relationships between the extracted feature embeddings and the graph theory-based nodal measurements using canonical correlation analysis. Finally, we visualized the model to identify the most contributive functional connections for predicting ASD severity scores.en_US
dc.description.sponsorshipThis research was supported by the Neurological Disorder Research Program of the National Research Foundation (NRF) and funded by the Korean government (MSIT) (No. 2020M3E5D9080788), National Research Foundation of Korea Grant funded by the Korean Government MSIT (NRF-2020-R1F1A1048529), and National Research Foundation (NRF) funded by the Korean Government (MSIT) (2019M3E5D1A01069345 to JK).en_US
dc.languageenen_US
dc.publisherFRONTIERS MEDIA SAen_US
dc.source85936_이종민.pdf-
dc.subjectsparse hierarchical graph representationen_US
dc.subjectABIDEen_US
dc.subjectASDen_US
dc.subjectfunctional brain networken_US
dc.subjectgraph neural networken_US
dc.titleSparse Hierarchical Representation Learning on Functional Brain Networks for Prediction of Autism Severity Levelsen_US
dc.typeArticleen_US
dc.relation.volume16-
dc.identifier.doi10.3389/fnins.2022.935431en_US
dc.relation.page1-16-
dc.relation.journalFRONTIERS IN NEUROSCIENCE-
dc.contributor.googleauthorKwon, Hyeokjin-
dc.contributor.googleauthorKim, Johanna Inhyang-
dc.contributor.googleauthorSon, Seung-Yeon-
dc.contributor.googleauthorJang, Yong Hun-
dc.contributor.googleauthorKim, Bung-Nyun-
dc.contributor.googleauthorLee, Hyun Ju-
dc.contributor.googleauthorLee, Jong-Min-
dc.sector.campusS-
dc.sector.daehak공과대학-
dc.sector.department바이오메디컬공학전공-
dc.identifier.pidljm-
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COLLEGE OF ENGINEERING[S](공과대학) > ELECTRICAL AND BIOMEDICAL ENGINEERING(전기·생체공학부) > Articles
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