• DocumentCode
    1253401
  • Title

    Automated segmentation and classification of multispectral magnetic resonance images of brain using artificial neural networks

  • Author

    Reddick, Wilburn E. ; Glass, John O. ; Cook, Edwin N. ; Elkin, T. David ; Deaton, Russell J.

  • Author_Institution
    Dept. of Diagnostic Imaging, St. Jude Childrens Res. Hosp., Memphis, TN, USA
  • Volume
    16
  • Issue
    6
  • fYear
    1997
  • Firstpage
    911
  • Lastpage
    918
  • Abstract
    Presents a fully automated process for segmentation and classification of multispectral magnetic resonance (MR) images. This hybrid neural network method uses a Kohonen self-organizing neural network for segmentation and a multilayer backpropagation neural network for classification. To separate different tissue types, this process uses the standard T1-, T2-, and PD-weighted MR images acquired in clinical examinations. Volumetric measurements of brain structures, relative to intracranial volume, were calculated for an index transverse section in 14 normal subjects (median age 25 years; 7 male, 7 female). This index slice was at the level of the basal ganglia, included both genu and splenium of the corpus callosum, and generally, showed the putamen and lateral ventricle. An intraclass correlation of this automated segmentation and classification of tissues with the accepted standard of radiologist identification for the index slice in the 14 volunteers demonstrated coefficients (r i) of 0.91, 0.95, and 0.98 for white matter, gray matter, and ventricular cerebrospinal fluid (CSF), respectively. An analysis of variance for estimates of brain parenchyma volumes in 5 volunteers imaged 5 times each demonstrated high intrasubject reproducibility with a significance of at least p<0.05 for white matter, gray matter, and white/gray partial volumes. The population variation, across 14 volunteers, demonstrated little deviation from the averages for gray and white matter, while partial volume classes exhibited a slightly higher degree of variability. This fully automated technique produces reliable and reproducible MR image segmentation and classification while eliminating intra- and interobserver variability.
  • Keywords
    biomedical NMR; brain; image classification; image segmentation; medical image processing; neural nets; 25 y; Kohonen self-organizing neural network; MRI; T1-weighted images; T2-weighted images; artificial neural networks; brain parenchyma volume; corpus callosum; genu; gray matter; index transverse section; intracranial volume; lateral ventricle; medical diagnostic imaging; multilayer backpropagation neural network; multispectral magnetic resonance images; putamen; splenium; tissue types separation; ventricular cerebrospinal fluid; volumetric measurements; white matter; Artificial neural networks; Backpropagation; Biological neural networks; Brain; Image segmentation; Magnetic multilayers; Magnetic resonance; Multi-layer neural network; Neural networks; Volume measurement; Algorithms; Artificial Intelligence; Colorimetry; Fungal Proteins; Image Enhancement; Image Interpretation, Computer-Assisted; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity; Two-Hybrid System Techniques; Yeasts;
  • fLanguage
    English
  • Journal_Title
    Medical Imaging, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0278-0062
  • Type

    jour

  • DOI
    10.1109/42.650887
  • Filename
    650887