Title of article :
Multiple Sclerosis Lesions Segmentation in Magnetic Resonance Imaging using Ensemble Support Vector Machine (ESVM)
Author/Authors :
HosseiniPanah, S Department of Biomedical Physics and Engineering - School of Medicine - Shiraz University of Medical Sciences, Shiraz, Iran , Zamani, A Department of Biomedical Physics and Engineering - School of Medicine - Shiraz University of Medical Sciences, Shiraz, Iran , Emadi, F Department of Neurology - School of Medicine - Shiraz University of Medical Sciences, Shiraz, Iran , HamtaeiPour, F Department of Biomedical Physics and Engineering - School of Medicine - Tehran University of Medical Sciences, Tehran, Iran
Abstract :
Background: Multiple Sclerosis (MS) syndrome is a type of Immune-Mediated
disorder in the central nervous system (CNS) which destroys myelin sheaths, and
results in plaque (lesion) formation in the brain. From the clinical point of view,
investigating and monitoring information such as position, volume, number, and
changes of these plaques are integral parts of the controlling process this disease over
a period. Visualizing MS lesions in vivo with Magnetic Resonance Imaging (MRI)
has a key role in observing the course of the disease.
Material and Methods: In this analytical study, two different processing
methods were present in this study in order to make an effort to detect and localize
lesions in the patients’ FLAIR (Fluid-attenuated inversion recovery) images. Segmentation
was performed using Ensemble Support Vector Machine (SVM) classification.
The trained data was randomly divided into five equal sections, and each section
was fed into the computer as an input to one of the SVM classifiers that led to five
different SVM structures.
Results: To evaluate results of segmentation, some criteria have been investigated
such as Dice, Jaccard, sensitivity, specificity, PPV and accuracy. Both modes
of ESVM, including first and second ones have similar results. Dice criterion was
satisfied much better with specialist’s work and it is observed that Dice average has
0.57±.15 and 0.6±.12 values in the first and second approach, respectively.
Conclusion: An acceptable overlap between those results reported by the
neurologist and the ones obtained from the automatic segmentation algorithm was
reached using an appropriate pre-processing in the proposed algorithm. Post-processing
analysis further reduced false positives using morphological operations and also
improved the evaluation criteria, including sensitivity and positive predictive value.
Keywords :
Classification Lesion , Ensemble Classifier , Support Vector Machine , Segmentation , Magnetic Resonance Imaging , Multiple Sclerosis
Journal title :
Journal of Biomedical Physics and Engineering