Abstract

Gliomas have the highest mortality rate and prevalence among the primary brain tumors. In this study, we proposed a supervised brain tumor segmentation method which detects diverse tumoral structures of both high grade gliomas and low grade gliomas in magnetic resonance imaging (MRI) images based on two types of features, the gradient features and the context-sensitive features. Two-dimensional gradient and three-dimensional gradient information was fully utilized to capture the gradient change. Furthermore, we proposed a circular context-sensitive feature which captures context information effectively. These features, totally 62, were compressed and optimized based on an mRMR algorithm, and random forest was used to classify voxels based on the compact feature set. To overcome the class-imbalanced problem of MRI data, our model was trained on a class-balanced region of interest dataset. We evaluated the proposed method based on the 2015 Brain Tumor Segmentation Challenge database, and the experimental results show a competitive performance.

Highlights

  • Gliomas, the most common brain tumors in adults, have the highest mortality rate and prevalence among the primary brain tumors (DeAngelis, 2001)

  • We used the mRMR feature selection method to select a compact set of features and built the random forest classifier

  • We proposed a supervised brain tumor segmentation method for magnetic resonance imaging (MRI) scans

Read more

Summary

Introduction

The most common brain tumors in adults, have the highest mortality rate and prevalence among the primary brain tumors (DeAngelis, 2001). They can be classified into high grade gliomas (HGG) and low grade gliomas (LGG). A variability of 20% and 28% for intra- and inter-rater respectively has been reported for manually segmentation of brain tumors (Mazzara et al, 2004; Goetz et al, 2016) For these reasons, automatic methods instead of manual segmentation with high accuracy and less time-consumption is in high demand

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call