Cellular Automata Segmentation of the Boundary between the Compacta of Vertebral Bodies and Surrounding Structures
Jan Egger, Christopher Nimsky

TL;DR
This study applies a cellular automata-based GrowCut algorithm to segment vertebral boundaries in MRI scans, significantly reducing segmentation time and maintaining high accuracy compared to manual methods.
Contribution
It demonstrates the effectiveness of GrowCut for semi-automated vertebral segmentation, improving efficiency and accuracy in spinal imaging analysis.
Findings
GrowCut segmentation achieved an average DSC of 82.99%.
Segmentation time was reduced to under six minutes.
The method showed high potential for clinical application.
Abstract
Due to the aging population, spinal diseases get more and more common nowadays; e.g., lifetime risk of osteoporotic fracture is 40% for white women and 13% for white men in the United States. Thus the numbers of surgical spinal procedures are also increasing with the aging population and precise diagnosis plays a vital role in reducing complication and recurrence of symptoms. Spinal imaging of vertebral column is a tedious process subjected to interpretation errors. In this contribution, we aim to reduce time and error for vertebral interpretation by applying and studying the GrowCut-algorithm for boundary segmentation between vertebral body compacta and surrounding structures. GrowCut is a competitive region growing algorithm using cellular automata. For our study, vertebral T2-weighted Magnetic Resonance Imaging (MRI) scans were first manually outlined by neurosurgeons. Then, the…
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