Publication | Closed Access
CortexODE: Learning Cortical Surface Reconstruction by Neural ODEs
45
Citations
34
References
2022
Year
Geometric LearningEngineeringMachine LearningNeural RecodingConventional Processing PipelinesBrain MappingSocial SciencesDifferentiable RenderingData ScienceComputational AnatomyNeural OdesNeuroimagingDeep LearningMedical Image ComputingComputational NeuroscienceDeep Learning FrameworkBiomedical ImagingNeuroscienceBrain ModelingPresent Cortexode
We present CortexODE, a deep learning framework for cortical surface reconstruction. CortexODE leverages neural ordinary differential equations (ODEs) to deform an input surface into a target shape by learning a diffeomorphic flow. The trajectories of the points on the surface are modeled as ODEs, where the derivatives of their coordinates are parameterized via a learnable Lipschitz-continuous deformation network. This provides theoretical guarantees for the prevention of self-intersections. CortexODE can be integrated to an automatic learning-based pipeline, which reconstructs cortical surfaces efficiently in less than 5 seconds. The pipeline utilizes a 3D U-Net to predict a white matter segmentation from brain Magnetic Resonance Imaging (MRI) scans, and further generates a signed distance function that represents an initial surface. Fast topology correction is introduced to guarantee homeomorphism to a sphere. Following the isosurface extraction step, two CortexODE models are trained to deform the initial surface to white matter and pial surfaces respectively. The proposed pipeline is evaluated on large-scale neuroimage datasets in various age groups including neonates (25-45 weeks), young adults (22-36 years) and elderly subjects (55-90 years). Our experiments demonstrate that the CortexODE-based pipeline can achieve less than 0.2mm average geometric error while being orders of magnitude faster compared to conventional processing pipelines.
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