A review of deep learning-based deformable medical image registration

Author:

Zou Jing,Gao Bingchen,Song Youyi,Qin Jing

Abstract

The alignment of images through deformable image registration is vital to clinical applications (e.g., atlas creation, image fusion, and tumor targeting in image-guided navigation systems) and is still a challenging problem. Recent progress in the field of deep learning has significantly advanced the performance of medical image registration. In this review, we present a comprehensive survey on deep learning-based deformable medical image registration methods. These methods are classified into five categories: Deep Iterative Methods, Supervised Methods, Unsupervised Methods, Weakly Supervised Methods, and Latest Methods. A detailed review of each category is provided with discussions about contributions, tasks, and inadequacies. We also provide statistical analysis for the selected papers from the point of view of image modality, the region of interest (ROI), evaluation metrics, and method categories. In addition, we summarize 33 publicly available datasets that are used for benchmarking the registration algorithms. Finally, the remaining challenges, future directions, and potential trends are discussed in our review.

Publisher

Frontiers Media SA

Subject

Cancer Research,Oncology

Reference167 articles.

1. Image registration methods: A survey;Zitova;Image Vision Computing,2003

2. Image registration;Pluim;IEEE Trans Med Imaging,2003

3. A review of multimodal medical image fusion techniques;Huang;Comput Math Methods Med,2020

4. Monomodal image registration using mutual information based methods;Gao;Image Vision Computing,2008

5. Deformable image registration for cone-beam ct guided transoral robotic base-of-tongue surgery;Reaungamornrat;Phys Med Biol,2013

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