The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons

Abstract Background Diffeomorphic demons can not only guarantee smooth and reversible deformation, but also avoid unreasonable deformation. However, the number of iterations which has great influence on the registration result needs to be set manually. Methods This study proposed a novel method to e...

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Main Authors: Chang Wang, Qiongqiong Ren, Xin Qin, Yi Yu
Format: Article
Language:English
Published: BMC 2018-08-01
Series:BMC Medical Imaging
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12880-018-0267-3
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spelling doaj-f4238ff8700e44f3941c3cc059cc6a452020-11-25T01:54:35ZengBMCBMC Medical Imaging1471-23422018-08-0118111110.1186/s12880-018-0267-3The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demonsChang Wang0Qiongqiong Ren1Xin Qin2Yi Yu3School of Biomedical Engineering, Xinxiang Medical UniversitySchool of Biomedical Engineering, Xinxiang Medical UniversitySchool of Biomedical Engineering, Xinxiang Medical UniversitySchool of Biomedical Engineering, Xinxiang Medical UniversityAbstract Background Diffeomorphic demons can not only guarantee smooth and reversible deformation, but also avoid unreasonable deformation. However, the number of iterations which has great influence on the registration result needs to be set manually. Methods This study proposed a novel method to exploit the adaptive diffeomorphic multi-resolution demons algorithm to the non-rigid registration of the same modality medical images with large deformation. Firstly an optimized non-rigid registration framework and the diffeomorphism strategy were used, and then a similarity energy function based on the grey value was designed as registration metric, lastly termination condition was set based on the variation of this metric and iterations can be stopped adaptively. Quantitative analyses based on the registration evaluation indexes were conducted to prove the validity of this method. Results Registration result of synthetic image and the same modality MRI and CT image was compared with those obtained by other demons algorithms. Quantitative analyses demonstrated the proposed method’s superiority. Medical image with large deformation was produced by rotational distortion and extrusion transform, and the same modality image registration with large deformation was performed successfully. Quantitative analyses showed that the registration evaluation indexes remained stable with an increase in transform strength. This method can be also applied to pulmonary medical image registration with large deformation successfully, and it showed the clinical application value. The influence of different driving forces and parameters on the registration result was analysed, and the result demonstrated that the proposed method is effective and robust. Conclusions This method can solve the non-rigid registration problem of the same modality medical image with large deformation showing promise for diagnostic pulmonary imaging applications.http://link.springer.com/article/10.1186/s12880-018-0267-3DiffeomorphicDemonsAdaptiveLarge deformationMulti-resolution
collection DOAJ
language English
format Article
sources DOAJ
author Chang Wang
Qiongqiong Ren
Xin Qin
Yi Yu
spellingShingle Chang Wang
Qiongqiong Ren
Xin Qin
Yi Yu
The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons
BMC Medical Imaging
Diffeomorphic
Demons
Adaptive
Large deformation
Multi-resolution
author_facet Chang Wang
Qiongqiong Ren
Xin Qin
Yi Yu
author_sort Chang Wang
title The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons
title_short The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons
title_full The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons
title_fullStr The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons
title_full_unstemmed The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons
title_sort same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons
publisher BMC
series BMC Medical Imaging
issn 1471-2342
publishDate 2018-08-01
description Abstract Background Diffeomorphic demons can not only guarantee smooth and reversible deformation, but also avoid unreasonable deformation. However, the number of iterations which has great influence on the registration result needs to be set manually. Methods This study proposed a novel method to exploit the adaptive diffeomorphic multi-resolution demons algorithm to the non-rigid registration of the same modality medical images with large deformation. Firstly an optimized non-rigid registration framework and the diffeomorphism strategy were used, and then a similarity energy function based on the grey value was designed as registration metric, lastly termination condition was set based on the variation of this metric and iterations can be stopped adaptively. Quantitative analyses based on the registration evaluation indexes were conducted to prove the validity of this method. Results Registration result of synthetic image and the same modality MRI and CT image was compared with those obtained by other demons algorithms. Quantitative analyses demonstrated the proposed method’s superiority. Medical image with large deformation was produced by rotational distortion and extrusion transform, and the same modality image registration with large deformation was performed successfully. Quantitative analyses showed that the registration evaluation indexes remained stable with an increase in transform strength. This method can be also applied to pulmonary medical image registration with large deformation successfully, and it showed the clinical application value. The influence of different driving forces and parameters on the registration result was analysed, and the result demonstrated that the proposed method is effective and robust. Conclusions This method can solve the non-rigid registration problem of the same modality medical image with large deformation showing promise for diagnostic pulmonary imaging applications.
topic Diffeomorphic
Demons
Adaptive
Large deformation
Multi-resolution
url http://link.springer.com/article/10.1186/s12880-018-0267-3
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