Title :
Parametric estimate of intensity inhomogeneities applied to MRI
Author :
Styner, Martin ; Brechbühler, Christian ; Szckely, G. ; Gerig, Guido
Author_Institution :
Dept. of Comput. Sci., North Carolina Univ., Chapel Hill, NC, USA
fDate :
3/1/2000 12:00:00 AM
Abstract :
Presents a new approach to the correction of intensity inhomogeneities in magnetic resonance imaging (MRI) that significantly improves intensity-based tissue segmentation. The distortion of the image brightness values by a low-frequency bias field impedes visual inspection and segmentation. The new correction method called parametric bias field correction (PABIC) is based on a simplified model of the imaging process, a parametric model of tissue class statistics, and a polynomial model of the inhomogeneity field. The authors assume that the image is composed of pixels assigned to a small number of categories with a priori known statistics. Further they assume that the image is corrupted by noise and a low-frequency inhomogeneity field. The estimation of the parametric bias field is formulated as a nonlinear energy minimization problem using an evolution strategy (ES). The resulting bias field is independent of the image region configurations and thus overcomes limitations of methods based on homomorphic filtering. Furthermore, PABIC can correct bias distortions much larger than the image contrast. Input parameters are the intensity statistics of the classes and the degree of the polynomial function. The polynomial approach combines bias correction with histogram adjustment, making it well suited for normalizing the intensity histogram of datasets from serial studies. The authors present simulations and a quantitative validation with phantom and test images. A large number of MR image data acquired with breast, surface, and head coils, both in two dimensions and three dimensions, have been processed and demonstrate the versatility and robustness of this new bias correction scheme.
Keywords :
biomedical MRI; image segmentation; medical image processing; minimisation; MRI; a priori known statistics; breast; evolution strategy; head coils; histogram adjustment; homomorphic filtering; image brightness values distortion; intensity inhomogeneities; intensity-based tissue segmentation; low-frequency bias field; magnetic resonance imaging; nonlinear energy minimization problem; parametric estimate; parametric model; polynomial model; tissue class statistics; visual inspection; Brightness; Histograms; Image segmentation; Impedance; Inspection; Magnetic resonance imaging; Nonlinear distortion; Parametric statistics; Pixel; Polynomials; Brain; Breast; Female; Humans; Image Processing, Computer-Assisted; Magnetic Resonance Imaging; Models, Theoretical; Phantoms, Imaging; Reproducibility of Results;
Journal_Title :
Medical Imaging, IEEE Transactions on