Joint tumor segmentation and dense deformable registration of brain MR images. Parisot, S., Duffau, H., Chemouny, S., & Paragios, N. Medical image computing and computer-assisted intervention : MICCAI ... International Conference on Medical Image Computing and Computer-Assisted Intervention, 15(Pt 2):651-8, 2012.
Paper abstract bibtex In this paper we propose a novel graph-based concurrent registration and segmentation framework. Registration is modeled with a pairwise graphical model formulation that is modular with respect to the data and regularization term. Segmentation is addressed by adopting a similar graphical model, using image-based classification techniques while producing a smooth solution. The two problems are coupled via a relaxation of the registration criterion in the presence of tumors as well as a segmentation through a registration term aiming the separation between healthy and diseased tissues. Efficient linear programming is used to solve both problems simultaneously. State of the art results demonstrate the potential of our method on a large and challenging low-grade glioma data set.
@article{
title = {Joint tumor segmentation and dense deformable registration of brain MR images.},
type = {article},
year = {2012},
keywords = {Algorithms,Automated,Automated: methods,Brain,Brain Neoplasms,Brain Neoplasms: pathology,Brain: pathology,Computer-Assisted,Computer-Assisted: methods,Humans,Image Enhancement,Image Enhancement: methods,Image Interpretation,Magnetic Resonance Imaging,Magnetic Resonance Imaging: methods,Pattern Recognition,Reproducibility of Results,Sensitivity and Specificity,Subtraction Technique},
pages = {651-8},
volume = {15},
websites = {http://www.ncbi.nlm.nih.gov/pubmed/23286104},
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abstract = {In this paper we propose a novel graph-based concurrent registration and segmentation framework. Registration is modeled with a pairwise graphical model formulation that is modular with respect to the data and regularization term. Segmentation is addressed by adopting a similar graphical model, using image-based classification techniques while producing a smooth solution. The two problems are coupled via a relaxation of the registration criterion in the presence of tumors as well as a segmentation through a registration term aiming the separation between healthy and diseased tissues. Efficient linear programming is used to solve both problems simultaneously. State of the art results demonstrate the potential of our method on a large and challenging low-grade glioma data set.},
bibtype = {article},
author = {Parisot, Sarah and Duffau, Hugues and Chemouny, Stéphane and Paragios, Nikos},
journal = {Medical image computing and computer-assisted intervention : MICCAI ... International Conference on Medical Image Computing and Computer-Assisted Intervention},
number = {Pt 2}
}
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