DocumentCode
1241509
Title
A hierarchical statistical modeling approach for the unsupervised 3-D biplanar reconstruction of the scoliotic spine
Author
Benameur, Said ; Mignotte, Max ; Labelle, Hubert ; De Guise, Jacques A.
Author_Institution
Comput. Sci. & Oper.s Res. Dept., Univ. of Montreal Hosp. Center, Que., Canada
Volume
52
Issue
12
fYear
2005
Firstpage
2041
Lastpage
2057
Abstract
This paper presents a new and accurate three-dimensional (3-D) reconstruction technique for the scoliotic spine from a pair of planar and conventional (postero-anterior with normal incidence and lateral) calibrated radiographic images. The proposed model uses a priori hierarchical global knowledge, both on the geometric structure of the whole spine and of each vertebra. More precisely, it relies on the specification of two 3-D statistical templates. The first, a rough geometric template on which rigid admissible deformations are defined, is used to ensure a crude registration of the whole spine. An accurate 3-D reconstruction is then performed for each vertebra by a second template on which nonlinear admissible global, as well as local deformations, are defined. Global deformations are modeled using a statistical modal analysis of the pathological deformations observed on a representative scoliotic vertebra population. Local deformations are represented by a first-order Markov process. This unsupervised coarse-to-fine 3-D reconstruction procedure leads to two separate minimization procedures efficiently solved in our application with evolutionary stochastic optimization algorithms. In this context, we compare the results obtained with a classical genetic algorithm (GA) and a recent Exploration Selection (ES) technique. This latter optimization method with the proposed 3-D reconstruction model, is tested on several pairs of biplanar radiographic images with scoliotic deformities. The experiments reported in this paper demonstrate that the discussed method is comparable in terms of accuracy with the classical computed-tomography-scan technique while being unsupervised and while requiring only two radiographic images and a lower amount of radiation for the patient.
Keywords
Markov processes; biomechanics; bone; computerised tomography; deformation; diagnostic radiography; genetic algorithms; image reconstruction; medical image processing; minimisation; physiological models; a priori hierarchical global knowledge; computed tomography; evolutionary stochastic optimization; exploration selection; first-order Markov process; genetic algorithm; hierarchical statistical modeling; local deformations; nonlinear admissible deformations; radiographic images; rigid admissible deformations; scoliotic spine; spine registration; statistical modal analysis; unsupervised 3-D biplanar reconstruction; vertebra; Deformable models; Diagnostic radiography; Image reconstruction; Markov processes; Minimization methods; Modal analysis; Pathology; Solid modeling; Stochastic processes; Three dimensional displays; 3-D reconstruction model; 3-D/2-D registration; Biplanar radiographies; energy function minimization; hierarchical statistical modeling; medical imaging; scoliosis; shape model; stochastic optimization; Algorithms; Artificial Intelligence; Computer Simulation; Humans; Imaging, Three-Dimensional; Models, Biological; Models, Statistical; Pattern Recognition, Automated; Radiographic Image Enhancement; Radiographic Image Interpretation, Computer-Assisted; Reproducibility of Results; Scoliosis; Sensitivity and Specificity; Spine;
fLanguage
English
Journal_Title
Biomedical Engineering, IEEE Transactions on
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/TBME.2005.857665
Filename
1542456
Link To Document