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Automatic Segmentation of the Lumbar Spine from Medical Images

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Figure

Figure 2.1: Anatomical outline of the human spine [Kurtz and Edidin, 2006]. The lumbar spine is shown in green with the vertebrae labelled from L1 to L5
Figure 2.3: (Top row) Axial cross-sections of two example lumbar vertebrae acquired using T1-weighted MRI (left) and CT (right)
Figure 2.5: Close-up of a right transverse process from an example T1-weighted axial MR image, showing merging between vertebra and background regions.
Figure 2.6: Axial slices showing vertebra on the left and intervertebral disc on the right
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