VoxelMorph is a deep-learning based non-linear diffeomorphic registration algorithm which claims to perform comparably to the state-of-the-art. However, the previous evaluation did not compare against manual gold-standard anatomical segmentations, used only the Dice metric for comparison, and compared against a modified version of a state-of-the-art algorithm, ANTs SyN. Here, VoxelMorph is evaluated against an unmodified version of ANTs SyN using multiple metrics based on manual labels. Results show VoxelMorph is less robust than ANTs SyN and underperforms in the presence of simulated deformations, and in registration of BrainWeb20 images to the VoxelMorph atlas.
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