Title :
Three-Dimensional Spine Model Reconstruction Using One-Class SVM Regularization
Author :
Lecron, Fabian ; Boisvert, J. ; Mahmoudi, Shadi ; Labelle, H. ; Benjelloun, Mohammed
Author_Institution :
Comput. Sci. Dept., Univ. of Mons, Mons, Belgium
Abstract :
Statistical shape models have become essential for medical image registration or segmentation and are used in many biomedical applications. These models are often based on Gaussian distributions learned from a training set. We propose in this paper a shape model which does not rely on the estimation of a Gaussian distribution, but on similarities computed with a kernel function. Our model takes advantage of the one-class support vector machine (OCSVM) to do so. In this context, we propose in this paper a method for reconstructing the spine of scoliotic patients using OCSVM regularization. Current state-of-the-art methods use conventional statistical shape models, and the reconstruction is commonly processed by minimizing a Mahalanobis distance. Nevertheless, when a shape differs significantly from the statistical model, the associated Mahalanobis distance often overstates the need for statistical regularization. We show that OCSVM regularization is more robust and is less sensitive to weak landmarks definition and is hardly influenced by the presence of outliers in the training data. The proposed OCSVM model applied to 3-D spine reconstruction was evaluated on real patient data, and results showed that our approach allows precise reconstruction.
Keywords :
bone; diagnostic radiography; diseases; image reconstruction; image segmentation; medical image processing; orthopaedics; support vector machines; 3D spine reconstruction; Gaussian distribution estimation; Mahalanobis distance; OCSVM regularization; biomedical applications; conventional statistical shape models; diagnostic radiography; kernel function; medical image registration; medical image segmentation; one-class SVM regularization; one-class support vector machine; real patient data; scoliotic patients; statistical regularization; three-dimensional spine model reconstruction; training set; Biological system modeling; Computational modeling; Image reconstruction; Solid modeling; Statistical analysis; Support vector machines; 3-D reconstruction; One-class SVM; scoliosis; spine; Humans; Imaging, Three-Dimensional; Models, Biological; Scoliosis; Spine; Support Vector Machines;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2013.2272657