Automatic segmentation of MR images of the developing newborn brain

This paper describes an automatic tissue segmentation method for newborn brains from magnetic resonance images (MRI). The analysis and study of newborn brain MRI is of great interest due to its potential for studying early growth patterns and morphological changes in neurodevelopmental disorders. Automatic segmentation of newborn MRI is a challenging task mainly due to the low intensity contrast and the growth process of the white matter tissue. Newborn white matter tissue undergoes a rapid myelination process, where the nerves are covered in myelin sheathes. It is necessary to identify the white matter tissue as myelinated or non-myelinated regions. The degree of myelination is a fractional voxel property that represents regional changes of white matter as a function of age. Our method makes use of a registered probabilistic brain atlas. The method first uses robust graph clustering and parameter estimation to find the initial intensity distributions. The distribution estimates are then used together with the spatial priors to perform bias correction. Finally, the method refines the segmentation using training sample pruning and non-parametric kernel density estimation. Our results demonstrate that the method is able to segment the brain tissue and identify myelinated and non-myelinated white matter regions.

[1]  Mary A. Rutherford,et al.  MRI of the Neonatal Brain , 2001 .

[2]  Bernhard Schölkopf,et al.  Estimating the Support of a High-Dimensional Distribution , 2001, Neural Computation.

[3]  Eric R. Ziegel,et al.  The Elements of Statistical Learning , 2003, Technometrics.

[4]  D. Louis Collins,et al.  Design and construction of a realistic digital brain phantom , 1998, IEEE Transactions on Medical Imaging.

[5]  Guy Marchal,et al.  Multimodality image registration by maximization of mutual information , 1997, IEEE Transactions on Medical Imaging.

[6]  R. Kikinis,et al.  Quantitative magnetic resonance imaging of brain development in premature and mature newborns , 1998, Annals of neurology.

[7]  Terry M. Peters,et al.  3D statistical neuroanatomical models from 305 MRI volumes , 1993, 1993 IEEE Conference Record Nuclear Science Symposium and Medical Imaging Conference.

[8]  Hong Wang,et al.  Abnormal Cerebral Structure Is Present at Term in Premature Infants , 2005, Pediatrics.

[9]  Hsien-Che Lee,et al.  Detecting boundaries in a vector field , 1991, IEEE Trans. Signal Process..

[10]  Martin Styner,et al.  Parametric estimate of intensity inhomogeneities applied to MRI , 2000, IEEE Transactions on Medical Imaging.

[11]  Alan C. Evans,et al.  A nonparametric method for automatic correction of intensity nonuniformity in MRI data , 1998, IEEE Transactions on Medical Imaging.

[12]  D. W. Scott,et al.  Kernel density estimation with binned data , 1985 .

[13]  Guido Gerig,et al.  Comparisons of regional white matter diffusion in healthy neonates and adults performed with a 3.0-T head-only MR imaging unit. , 2003, Radiology.

[14]  Guido Gerig,et al.  Nonlinear anisotropic filtering of MRI data , 1992, IEEE Trans. Medical Imaging.

[15]  Chao He,et al.  Probability Density Estimation from Optimally Condensed Data Samples , 2003, IEEE Trans. Pattern Anal. Mach. Intell..

[16]  R. Gur,et al.  Age-related volumetric changes of brain gray and white matter in healthy infants and children. , 2001, Cerebral cortex.

[17]  C. A. Murthy,et al.  Density-Based Multiscale Data Condensation , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[18]  Jacob Cohen A Coefficient of Agreement for Nominal Scales , 1960 .

[19]  M. Alexander,et al.  Principles of Neural Science , 1981 .

[20]  D. Louis Collins,et al.  ANIMAL+INSECT: Improved Cortical Structure Segmentation , 1999, IPMI.

[21]  W. Eric L. Grimson,et al.  Adaptive Segmentation of MRI Data , 1995, CVRMed.

[22]  John H. Gilmore,et al.  3 Tesla magnetic resonance imaging of the brain in newborns , 2004, Psychiatry Research: Neuroimaging.

[23]  M. Aminoff Principles of Neural Science. 4th edition , 2001 .

[24]  Katrien van Driessen,et al.  A Fast Algorithm for the Minimum Covariance Determinant Estimator , 1999, Technometrics.

[25]  Koenraad Van Leemput,et al.  Automated model-based bias field correction of MR images of the brain , 1999, IEEE Transactions on Medical Imaging.

[26]  Alan C. Evans,et al.  BrainWeb: Online Interface to a 3D MRI Simulated Brain Database , 1997 .

[27]  Clifford Stein,et al.  Introduction to Algorithms, 2nd edition. , 2001 .

[28]  Alan C. Evans,et al.  A fully automatic and robust brain MRI tissue classification method , 2003, Medical Image Anal..

[29]  David G. Stork,et al.  Pattern Classification , 1973 .

[30]  Koenraad Van Leemput,et al.  Automated model-based tissue classification of MR images of the brain , 1999, IEEE Transactions on Medical Imaging.

[31]  L. R. Dice Measures of the Amount of Ecologic Association Between Species , 1945 .

[32]  Ron Kikinis,et al.  Adaptive Template Moderated Spatially Varying Statistical Classification , 1998, MICCAI.

[33]  Comparisons of Regional White Matter Diffusion in Healthy Neonates and Adults Using a 3t Head-only Mr Scanner , 2022 .