Abstract
Objective
This article describes a computer-based method for the classification of spine scoliosis severity. This is a first step toward an effective computerized tool to assist general practitioners diagnose spine scoliosis. The method progresses away from Cobb angles toward pattern and magnitude categorization based upon 3D configurations.
Materials and methods
The purpose is to classify spine shapes reconstructed from a pair of calibrated X-ray images into one of three categories, namely, normal spine, moderate scoliosis, and severe scoliosis. The spine shape is represented by the three-dimensional coordinates of a sequence of equidistant points sampled by interpolation on the reconstructed spine shape. Classification is carried out using a self- organizing Kohonen neural network trained using this representation.
Results
The tests were performed using a database of 174 spine biplane X-rays. The classification accuracy was 97%.
Conclusion
The results demonstrate that classification of 3D spine descriptions by a Kohonen neural network affords a solid basis for an effective tool to assist clinicians in assessing scoliosis severity.
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Mezghani, N., Chav, R., Humbert, L. et al. A computer-based classifier of three-dimensional spinal scoliosis severity. Int J CARS 3, 55–60 (2008). https://doi.org/10.1007/s11548-008-0163-3
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DOI: https://doi.org/10.1007/s11548-008-0163-3