Title :
Elastic model-based segmentation of 3-D neuroradiological data sets
Author :
Kelemen, András ; Székely, Gábor ; Gerig, Guido
Author_Institution :
Computer. Vision Lab., Swiss Fed. Inst. of Technol., Zurich, Switzerland
Abstract :
This paper presents a new technique for the automatic model-based segmentation of three-dimensional (3-D) objects from volumetric image data. The development closely follows the seminal work of Taylor and Cootes on active shape models, but is based on a hierarchical parametric object description rather than a point distribution model. The segmentation system includes both the building of statistical models and the automatic segmentation of new image data sets via a restricted elastic deformation of shape models. Geometric models are derived from a sample set of image data which have been segmented by experts. The surfaces of these binary objects are converted into parametric surface representations, which are normalized to get an invariant object-centered coordinate system. Surface representations are expanded into series of spherical harmonics which provide parametric descriptions of object shapes. It is shown that invariant object surface parametrization provides a good approximation to automatically determine object homology in terms of sets of corresponding sets of surface points. Gray-level information near object boundaries is represented by 1-D intensity profiles normal to the surface. Considering automatic segmentation of brain structures as their driving application, the authors´ choice of coordinates for object alignment was the well-accepted stereotactic coordinate system. Major variation of object shapes around the mean shape, also referred to as shape eigenmodes, are calculated in shape parameter space rather than the feature space of point coordinates. Segmentation makes use of the object shape statistics by restricting possible elastic deformations into the range of the training shapes. The mean shapes are initialized in a new data set by specifying the landmarks of the stereotactic coordinate system. The model elastically deforms, driven by the displacement forces across the object´s surface, which are generated by matching local intensity profiles- - . Elastical deformations are limited by setting bounds for the maximum variations in eigenmode space. The technique has been applied to automatically segment left and right hippocampus, thalamus, putamen, and globus pallidus from volumetric magnetic resonance scans taken from schizophrenia studies. The results have been validated by comparison of automatic segmentation with the results obtained by interactive expert segmentation.
Keywords :
biomedical MRI; brain models; image segmentation; medical image processing; 1-D intensity profiles; 3-D neuroradiological data sets; MRI; active shape models; automatic segmentation; binary objects; brain structures; elastic model-based segmentation; globus pallidus; gray-level information; hippocampus; interactive expert segmentation; magnetic resonance imaging; putamen; schizophrenia studies; surface parametrization; thalamus; volumetric magnetic resonance scans; Active shape model; Application software; Biomedical imaging; Deformable models; Image analysis; Image segmentation; Magnetic resonance imaging; Medical diagnostic imaging; Psychiatry; Ultrasonic imaging; Algorithms; Brain; Elasticity; Humans; Magnetic Resonance Imaging; Male; Models, Neurological; Reproducibility of Results; Schizophrenia; Surface Properties;
Journal_Title :
Medical Imaging, IEEE Transactions on