A Robust Scheme of Vertebrae Segmentation for Medical Diagnosis / - 114p. Soft Copy 30cm

Automated vertebrae analysis from medical images plays an important role in computer
aided diagnosis (CAD). It provides an initial and early identification of various vertebral
abnormalities to doctors and radiologists. Vertebrae segmentation and classification are
important but difficult tasks in medical imaging due to low contrasts in image, noise and high
topological shape variations in radiological scans. It becomes even more challenging when
dealing with various deformities and pathologies present in the vertebral scans like osteoporotic
vertebral fractures.
In this work, we want to address the challenging problem of vertebral image analysis for
vertebra segmentation and classification. In the past, various traditional imagery techniques were
employed to address these problems. Recently, deep learning techniques have been introduced in
biomedical image processing for segmentation and characterization of several abnormalities.
These techniques are becoming popular in solving various medical image analysis problems due
to their robustness and accuracy.
In this research, we present a solution of vertebrae segmentation and classification
problem with the help of deep learning approach. We present a novel combination of traditional
region based level-set with deep learning framework in order to extract the shape of vertebral
bones accurately; which would be able to handle the deformities in the vertebral bones precisely
and efficiently. After vertebrae segmentation, we further extend the work to abnormal vertebrae
classification with the help of deep learning approach. This novel framework would be able to
help the medical doctors and radiologists with better visualization of vertebral bones and
providing the initial automated classification of vertebrae to be normal or abnormal.
The proposed method of vertebrae segmentation was successfully tested on different
datasets with various fields of views. The first dataset comprises of 173 CT scans of
thoracolumbar (thoracic and lumbar) vertebrae in sagittal view, collected from a local hospital.
The second dataset comprises 73 CT scans of cervical vertebrae in sagittal view, also collected
from a local hospital. The third dataset comprises 20 CT scans of thoracolumbar (thoracic and
lumbar) vertebrae in sagittal view collected from spine segmentation challenge CSI 2014. The
forth dataset comprises 25 CT scans of lumbar vertebrae in sagittal view collected from spine
segmentation challenge CSI 2016. Lastly, we have utilized the same locally collected set of 173
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CT scans of thoracolumbar (thoracic and lumbar) vertebrae and extracted in axial view to
perform the segmentation task.
For classification purpose, we have utilized the locally collected set of 173 CT scans of
thoracolumbar (thoracic and lumbar) vertebrae as these include osteoporotic vertebral fractures
in it. The details of these datasets have been presented in respective sections.
We have achieved promising results on our proposed techniques. The evaluation of the
segmentation performance on the datasets with various machines and field of views helped us to
ensure the robustness of our proposed method. On validation sets of these datasets, we have
achieved an average dice score of around 95% for vertebrae segmentation; and accuracy of
above 80% for the vertebrae classification. The detailed results have been presented in the results
section. These results reveal that our proposed techniques are competitive over the other state of
the arts in terms of accuracy, efficiency, flexibility and time


PhD Robotics and Intelligent Machine Engineering

629.8