Recursive Refinement Network for Deformable Lung Registration between Exhale and Inhale CT Scans (2106.07608v1)
Abstract: Unsupervised learning-based medical image registration approaches have witnessed rapid development in recent years. We propose to revisit a commonly ignored while simple and well-established principle: recursive refinement of deformation vector fields across scales. We introduce a recursive refinement network (RRN) for unsupervised medical image registration, to extract multi-scale features, construct normalized local cost correlation volume and recursively refine volumetric deformation vector fields. RRN achieves state of the art performance for 3D registration of expiratory-inspiratory pairs of CT lung scans. On DirLab COPDGene dataset, RRN returns an average Target Registration Error (TRE) of 0.83 mm, which corresponds to a 13% error reduction from the best result presented in the leaderboard. In addition to comparison with conventional methods, RRN leads to 89% error reduction compared to deep-learning-based peer approaches.
- Xinzi He (5 papers)
- Jia Guo (101 papers)
- Xuzhe Zhang (7 papers)
- Hanwen Bi (3 papers)
- Sarah Gerard (1 paper)
- David Kaczka (1 paper)
- Amin Motahari (1 paper)
- Eric Hoffman (1 paper)
- Joseph Reinhardt (1 paper)
- R. Graham Barr (7 papers)
- Elsa Angelini (21 papers)
- Andrew Laine (5 papers)