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Deep learning in cortical surface-based neuroimage analysis: a systematic review

Fenqiang Zhao, Zhengwang Wu, Gang Li

2022Intelligent Medicine27 citationsDOIOpen Access PDF

Abstract

Deep learning approaches, especially convolutional neural networks (CNNs), have become the method of choice in the field of medical image analysis over the last few years. This prevalence is attributed to their excellent abilities to learn features in a more effective and efficient manner, not only for 2D/3D images in the Euclidean space, but also for meshes and graphs in non-Euclidean space such as cortical surfaces in neuroimaging analysis field. The brain cerebral cortex is a highly convoluted and thin sheet of gray matter (GM) that is thus typically represented by triangular surface meshes with an intrinsic spherical topology for each hemisphere. Accordingly, novel tailored deep learning methods have been developed for cortical surface-based analysis of neuroimaging data. This paper reviewsed the representative deep learning techniques relevant to cortical surface-based analysis and summarizes recent major contributions to the field. Specifically, we surveyed the use of deep learning techniques for cortical surface reconstruction, registration, parcellation, prediction, and other applications. We concluded by discussing the open challenges, limitations, and potentials of these techniques, and suggested directions for future research.

Topics & Concepts

Deep learningArtificial intelligenceNeuroimagingConvolutional neural networkComputer sciencePolygon meshSurface (topology)Pattern recognition (psychology)NeurosciencePsychologyMathematicsGeometryComputer graphics (images)Functional Brain Connectivity StudiesAdvanced Neuroimaging Techniques and ApplicationsAdvanced MRI Techniques and Applications
Deep learning in cortical surface-based neuroimage analysis: a systematic review | Litcius