Title :
A hierarchical statistical modeling approach for the unsupervised 3D reconstruction of the scoliotic spine
Author :
Benameur, S. ; Mignotte, M. ; Parent, S. ; Labelle, H. ; Skalli, W. ; De Guise, J.A.
Author_Institution :
Lab. de Recherche en Imagerie et Orthopedic, Montreal Univ., Que., Canada
Abstract :
In this paper, we propose a new and accurate 3D reconstruction technique for the scoliotic spine from a pair planar and conventional radiographic images (postero-anterior and lateral). 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 3D 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. 3D reconstruction is then refined for each vertebra, by a template on which nonlinear admissible global deformations are modeled, with statistical modal analysis of the pathological deformations observed on a representative scoliotic vertebra population. This unsupervised coarse-to-fine 3D reconstruction procedure is stated as a double energy function minimization problems efficiently solved with a stochastic optimization algorithm. The proposed method, tested on several pairs of biplanar radiographic images with scoliotic deformities, is comparable in terms of accuracy with the classical CT-scan technique while being unsupervised and requiring a lower amount of radiation for the patient.
Keywords :
bone; computerised tomography; image reconstruction; medical image processing; minimisation; neurophysiology; orthopaedics; radiography; CT-scan technique; biplanar radiographic images; coarse-to-fine 3D reconstruction procedure; double energy function minimization problems; pathological deformations; priori hierarchical global knowledge; rigid admissible deformations; rough geometric template; scoliotic vertebra population; spine crude registration; statistical modal analysis; stochastic optimization algorithm; unsupervised 3D reconstruction; Covariance matrix; Deformable models; Eigenvalues and eigenfunctions; Parameter estimation; Pathology; Principal component analysis; Radiography; Solid modeling; Spine; Stochastic processes;
Conference_Titel :
Image Processing, 2003. ICIP 2003. Proceedings. 2003 International Conference on
Print_ISBN :
0-7803-7750-8
DOI :
10.1109/ICIP.2003.1247023