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Deep learning distinguishes connectomes from focal epilepsy patients and controls: feasibility and clinical implications.
Maher, Christina; Tang, Zihao; D'Souza, Arkiev; Cabezas, Mariano; Cai, Weidong; Barnett, Michael; Kavehei, Omid; Wang, Chenyu; Nikpour, Armin.
Afiliação
  • Maher C; Faculty of Engineering, School of Biomedical Engineering, The University of Sydney, Sydney, NSW 2050, Australia.
  • Tang Z; Brain and Mind Centre, The University of Sydney, Sydney, NSW 2050, Australia.
  • D'Souza A; Brain and Mind Centre, The University of Sydney, Sydney, NSW 2050, Australia.
  • Cabezas M; Faculty of Engineering, School of Computer Science, The University of Sydney, Sydney, NSW 2050, Australia.
  • Cai W; Brain and Mind Centre, The University of Sydney, Sydney, NSW 2050, Australia.
  • Barnett M; Brain and Mind Centre, The University of Sydney, Sydney, NSW 2050, Australia.
  • Kavehei O; Faculty of Engineering, School of Computer Science, The University of Sydney, Sydney, NSW 2050, Australia.
  • Wang C; Brain and Mind Centre, The University of Sydney, Sydney, NSW 2050, Australia.
  • Nikpour A; Sydney Neuroimaging Analysis Centre, Sydney, NSW 2050, Australia.
Brain Commun ; 5(6): fcad294, 2023.
Article em En | MEDLINE | ID: mdl-38025275
ABSTRACT
The application of deep learning models to evaluate connectome data is gaining interest in epilepsy research. Deep learning may be a useful initial tool to partition connectome data into network subsets for further analysis. Few prior works have used deep learning to examine structural connectomes from patients with focal epilepsy. We evaluated whether a deep learning model applied to whole-brain connectomes could classify 28 participants with focal epilepsy from 20 controls and identify nodal importance for each group. Participants with epilepsy were further grouped based on whether they had focal seizures that evolved into bilateral tonic-clonic seizures (17 with, 11 without). The trained neural network classified patients from controls with an accuracy of 72.92%, while the seizure subtype groups achieved a classification accuracy of 67.86%. In the patient subgroups, the nodes and edges deemed important for accurate classification were also clinically relevant, indicating the model's interpretability. The current work expands the evidence for the potential of deep learning to extract relevant markers from clinical datasets. Our findings offer a rationale for further research interrogating structural connectomes to obtain features that can be biomarkers and aid the diagnosis of seizure subtypes.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Brain Commun Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Brain Commun Ano de publicação: 2023 Tipo de documento: Article