EMSegmenter-Tasks:Human-Eye

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Description

Single channel automatic segmentation of t1w-MRI brain scans into the major tissue classes (gray matter, white matter, csf). The task can only be applied to t1w brain scan showing parts of the skull and neck. The pipeline consist of the following steps:

  • Step 1: Perform image inhomogeneity correction of the MRI scan via N4ITKBiasFieldCorrection (Tustison et al 2010)
  • Step 2: Register the atlas to the MRI scan via BRAINSFit (Johnson et al 2007)
  • Step 3: Compute the intensity distributions for each structure

Compute intensity distribution (mean and variance) for each label by automatically sampling from the MR scan. The sampling for a specific label is constrained to the region that consists of voxels with high probability (top 95%) of being assigned to the label according to the aligned atlas.

  • Step 4: Automatically segment the MRI scan into the structures of interest using EM Algorithm (Pohl et al 2007)

Anatomical Tree

labels/colors need to be updated

  • root
    • 1 (dark blue) : not used
    • 2 (pink) : fat tissue
    • 3 (white) : not used
    • 4 (blue) : inferior extraocular muscle
    • 5 (red) : medial extraocular muscle
    • 6 (green) : superior extraocular muscle
    • 7 (azure blue) : superior oblique extraocular muscle
    • 8 (olive green) : lateral extraocular muscle
    • 9 (violet) : inferior extraocular muscle
    • 10 (olive green) : non used

Atlas

Atlas was generated based on 5 scans and corresponding segmentations provided by Raphaël Olszewski, l'Université catholique de Louvain à Louvain-La-Neuve, Belgique [link]. We registered the scans to a preselected template via the atlas creator using the fixed template approach by (Warfield et al. 2001.)
Image Dimension = 256 x 256 x 100
Image Spacing = 1 x 1 x 1

Result


Collaborators

Raphaël Olszewski, l'Université catholique de Louvain à Louvain-La-Neuve, Belgium

Acknowledgment

The construction of the pipeline was supported by funding from NIH NCRR 2P41RR013218 Supplement.

Citations