Abstract |
Deformable image registration (DIR) was widely used in radiation therapy, such as in automatic contour generation, dose accumulation, tumor growth or regression analysis. To achieve higher registration accuracy and faster convergence, an improved 'diffeomorphic demons' registration algorithm was proposed and validated. Based on Brox et al.'s gradient constancy assumption and Malis's efficient second-order minimization (ESM) algorithm, a grey value gradient similarity term and a transformation error term were added into the demons energy function, and a formula was derived to calculate the update of transformation field. The limited Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) algorithm was used to optimize the energy function so that the iteration number could be determined automatically. The proposed algorithm was validated using mathematically deformed images and physically deformed phantom images. Compared with the original 'diffeomorphic demons' algorithm, the registration method proposed achieve a higher precision and a faster convergence speed. Due to the influence of different scanning conditions in fractionated radiation, the density range of the treatment image and the planning image may be different. In such a case, the improved demons algorithm can achieve faster and more accurate radiotherapy.
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Authors | Lu Zhou, Linghong Zhou, Shuxu Zhang, Xin Zhen, Hui Yu, Guoqian Zhang, Ruihao Wang |
Journal | Bio-medical materials and engineering
(Biomed Mater Eng)
Vol. 24
Issue 1
Pg. 373-82
( 2014)
ISSN: 1878-3619 [Electronic] Netherlands |
PMID | 24211919
(Publication Type: Journal Article, Research Support, Non-U.S. Gov't, Validation Study)
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Chemical References |
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Topics |
- Algorithms
- Contrast Media
(chemistry)
- Humans
- Image Processing, Computer-Assisted
(methods)
- Models, Theoretical
- Neoplasms
(pathology)
- Normal Distribution
- Phantoms, Imaging
- Radiotherapy
- Radiotherapy Planning, Computer-Assisted
- Regression Analysis
- Software
- Tomography, X-Ray Computed
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