2022
DOI: 10.3389/fnagi.2022.895535
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Geometric deep learning reveals a structuro-temporal understanding of healthy and pathologic brain aging

Abstract: BackgroundBrain age has historically been investigated primarily at the whole brain level. The ability to deconstruct the brain into its composite parts and explore brain age at the sub-structure level offers unique advantages. These include the exploration of dynamic and interconnected relationships between different brain structures in healthy and pathologic aging. To achieve this, individual brain structures can be rendered as surface representations on which morphologic analysis is carried out. Combining t… Show more

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Cited by 3 publications
(1 citation statement)
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“…Finally, we mention the use of geometric deep learning techniques in neuroimaging and the study of the brain connectome (Gurbuz and Rekik, 2020 ; Huang et al, 2021 ; Williams et al, 2021 ), as well as the study on (i) the relationship of human brain structure to cognitive function (Wu et al, 2022 ), (ii) the topographic heterogeneity of cortical organisation as a necessary step toward precision modelling of neuropsychiatric disorders (Williams et al, 2021 ), (iii) brain aging (Besson et al, 2022 ).…”
Section: Geometric Deep Learningmentioning
confidence: 99%
“…Finally, we mention the use of geometric deep learning techniques in neuroimaging and the study of the brain connectome (Gurbuz and Rekik, 2020 ; Huang et al, 2021 ; Williams et al, 2021 ), as well as the study on (i) the relationship of human brain structure to cognitive function (Wu et al, 2022 ), (ii) the topographic heterogeneity of cortical organisation as a necessary step toward precision modelling of neuropsychiatric disorders (Williams et al, 2021 ), (iii) brain aging (Besson et al, 2022 ).…”
Section: Geometric Deep Learningmentioning
confidence: 99%