Deep Learning in Medical Image Registration: A Review
- URL: http://arxiv.org/abs/1912.12318v1
- Date: Fri, 27 Dec 2019 19:32:32 GMT
- Title: Deep Learning in Medical Image Registration: A Review
- Authors: Yabo Fu, Yang Lei, Tonghe Wang, Walter J. Curran, Tian Liu, Xiaofeng
Yang
- Abstract summary: We summarized the latest developments and applications of DL-based registration methods in the medical field.
We provided a comprehensive comparison among DL-based methods for lung and brain deformable registration using benchmark datasets.
We analyzed the statistics of all the cited works from various aspects, revealing the popularity and future trend of development in medical image registration using deep learning.
- Score: 2.486673750594755
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents a review of deep learning (DL) based medical image
registration methods. We summarized the latest developments and applications of
DL-based registration methods in the medical field. These methods were
classified into seven categories according to their methods, functions and
popularity. A detailed review of each category was presented, highlighting
important contributions and identifying specific challenges. A short assessment
was presented following the detailed review of each category to summarize its
achievements and future potentials. We provided a comprehensive comparison
among DL-based methods for lung and brain deformable registration using
benchmark datasets. Lastly, we analyzed the statistics of all the cited works
from various aspects, revealing the popularity and future trend of development
in medical image registration using deep learning.
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