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Papers/On-the-Fly Guidance Training for Medical Image Registration

On-the-Fly Guidance Training for Medical Image Registration

Yuelin Xin, Yicheng Chen, Shengxiang Ji, Kun Han, Xiaohui Xie

2023-08-29Image RegistrationMedical Image Registration
PaperPDFCode(official)Code(official)

Abstract

This study introduces a novel On-the-Fly Guidance (OFG) training framework for enhancing existing learning-based image registration models, addressing the limitations of weakly-supervised and unsupervised methods. Weakly-supervised methods struggle due to the scarcity of labeled data, and unsupervised methods directly depend on image similarity metrics for accuracy. Our method proposes a supervised fashion for training registration models, without the need for any labeled data. OFG generates pseudo-ground truth during training by refining deformation predictions with a differentiable optimizer, enabling direct supervised learning. OFG optimizes deformation predictions efficiently, improving the performance of registration models without sacrificing inference speed. Our method is tested across several benchmark datasets and leading models, it significantly enhanced performance, providing a plug-and-play solution for training learning-based registration models. Code available at: https://github.com/cilix-ai/on-the-fly-guidance

Results

TaskDatasetMetricValueModel
Medical Image RegistrationIXIDSC0.76OFG + TransMorph
Medical Image RegistrationIXIDSC0.738OFG + ViT-V-Net
Medical Image RegistrationIXIDSC0.737OFG + VoxelMorph
Medical Image RegistrationOASISDSC0.818OFG + TransMorph
Medical Image RegistrationOASISDSC0.809OFG + ViT-V-Net
Medical Image RegistrationOASISDSC0.794OFG + VoxelMorph

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