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Unsupervised 3D End-to-End Medical Image Registration with Volume Tweening Network

About

3D medical image registration is of great clinical importance. However, supervised learning methods require a large amount of accurately annotated corresponding control points (or morphing), which are very difficult to obtain. Unsupervised learning methods ease the burden of manual annotation by exploiting unlabeled data without supervision. In this paper, we propose a new unsupervised learning method using convolutional neural networks under an end-to-end framework, Volume Tweening Network (VTN), for 3D medical image registration. We propose three innovative technical components: (1) An end-to-end cascading scheme that resolves large displacement; (2) An efficient integration of affine registration network; and (3) An additional invertibility loss that encourages backward consistency. Experiments demonstrate that our algorithm is 880x faster (or 3.3x faster without GPU acceleration) than traditional optimization-based methods and achieves state-of-theart performance in medical image registration.

Shengyu Zhao, Tingfung Lau, Ji Luo, Eric I-Chao Chang, Yan Xu• 2019

Related benchmarks

TaskDatasetResultRank
Atlas-Based RegistrationOASIS (test)
DSC (Structure 23)68
13
Template-Matching NormalizationMNI152 (test)
DSC40.75
13
Atlas-Based RegistrationLPBA (test)
DSC (Structure 3)44
13
Atlas-Based RegistrationLPBA OASIStrain => LPBAtest (test)
DSC44
9
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