Medical image registration using unsupervised deep neural network: A
scoping literature review
- URL: http://arxiv.org/abs/2208.01825v1
- Date: Wed, 3 Aug 2022 03:11:34 GMT
- Title: Medical image registration using unsupervised deep neural network: A
scoping literature review
- Authors: Samaneh Abbasi, Meysam Tavakoli, Hamid Reza Boveiri, Mohammad Amin
Mosleh Shirazi, Raouf Khayami, Hedieh Khorasani, Reza Javidan, Alireza
Mehdizadeh
- Abstract summary: In medicine, image registration is vital in image-guided interventions and other clinical applications.
The implementation of deep neural networks provides an opportunity for some medical applications such as conducting image registration in less time with high accuracy.
- Score: 0.9527960631238173
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In medicine, image registration is vital in image-guided interventions and
other clinical applications. However, it is a difficult subject to be addressed
which by the advent of machine learning, there have been considerable progress
in algorithmic performance has recently been achieved for medical image
registration in this area. The implementation of deep neural networks provides
an opportunity for some medical applications such as conducting image
registration in less time with high accuracy, playing a key role in countering
tumors during the operation. The current study presents a comprehensive scoping
review on the state-of-the-art literature of medical image registration studies
based on unsupervised deep neural networks is conducted, encompassing all the
related studies published in this field to this date. Here, we have tried to
summarize the latest developments and applications of unsupervised deep
learning-based registration methods in the medical field. Fundamental and main
concepts, techniques, statistical analysis from different viewpoints,
novelties, and future directions are elaborately discussed and conveyed in the
current comprehensive scoping review. Besides, this review hopes to help those
active readers, who are riveted by this field, achieve deep insight into this
exciting field.
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