Colorization and automated segmentation of human T2 MR brain images for characterization of soft tissues

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Abstract

Characterization of tissues like brain by using magnetic resonance (MR) images and colorization of the gray scale image has been reported in the literature, along with the advantages and drawbacks. Here, we present two independent methods; (i) a novel colorization method to underscore the variability in brain MR images, indicative of the underlying physical density of bio tissue, (ii) a segmentation method (both hard and soft segmentation) to characterize gray brain MR images. The segmented images are then transformed into color using the above-mentioned colorization method, yielding promising results for manual tracing. Our color transformation incorporates the voxel classification by matching the luminance of voxels of the source MR image and provided color image by measuring the distance between them. The segmentation method is based on single-phase clustering for 2D and 3D image segmentation with a new auto centroid selection method, which divides the image into three distinct regions (gray matter (GM), white matter (WM), and cerebrospinal fluid (CSF) using prior anatomical knowledge). Results have been successfully validated on human T2-weighted (T2) brain MR images. The proposed method can be potentially applied to gray-scale images from other imaging modalities, in bringing out additional diagnostic tissue information contained in the colorized image processing approach as described. © 2012 Attique et al.

Figures

  • Table 1. Showing subjects examined for centroid selection and colorization criterias.
  • Figure 1. Block diagram of proposed methods. (A) Block diagram of proposed colorization method. (B) Block diagram of proposed segmentation method. doi:10.1371/journal.pone.0033616.g001
  • Figure 2. Color transformed T2 brain MR image. (A) Gray scale brain MR image. (B) Colorized brain MR image obtained using proposed method. doi:10.1371/journal.pone.0033616.g002
  • Figure 3. Histogram of T2 brain images with the peak analysis. (A) T2 Brain MR image slice1. (B) Histogram of slice1. (C) Peak analysis based on rectangles drawn. (D) T2 Brain MR image slice2. (E) Histogram of slice2 (F) Peak analysis by based on rectangle drawn. doi:10.1371/journal.pone.0033616.g003
  • Figure 4. Probabilistic histogram and detailed description of Figure 3. (A) Histogram of Figure 3(A). (B) Lines drawn around the peaks for probabilistic histogram. (C) Probabilistic histogram. (D) Splitting region for ROI at intersection points. doi:10.1371/journal.pone.0033616.g004
  • Figure 5. Selected centriods with Auto centriod selection method. (A) Selected centroids within the specified ranges from the histogram shown in Figure 3(B). (B) Selected Centroids within the specified ranges from the histogram shown in Figure 3(E). doi:10.1371/journal.pone.0033616.g005
  • Figure 6. Color representation of T2 brain MR image with our proposed colorization method. (A) Abnormal T2 brain MR image of patient aged 32. (B) Color transformed image. (C) Selected centroids with proposed method. doi:10.1371/journal.pone.0033616.g006
  • Figure 7. Results of hard and soft segmentation with our proposed method. (A) Gray matter. (B) White matter. (C) Cerebrospinal fluid with abnormality. (D) hard segmentation. doi:10.1371/journal.pone.0033616.g007

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THRESHOLD SELECTION METHOD FROM GRAY-LEVEL HISTOGRAMS.

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PICTURE THRESHOLDING USING AN ITERATIVE SLECTION METHOD.

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APA

Attique, M., Gilanie, G., Hafeez-Ullah, Mehmood, M. S., Naweed, M. S., Ikram, M., … Vitkin, A. (2012). Colorization and automated segmentation of human T2 MR brain images for characterization of soft tissues. PLoS ONE, 7(3). https://doi.org/10.1371/journal.pone.0033616

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