Automatic Brain Tumor Segmentation in Multispectral MRI Volumes Using a Random Forest Approach

The development of automatic tumor detection and segmentation procedures enables the computers to preprocess huge sets of MRI records and draw the attention of medical staff upon suspected positive cases. This paper proposes a machine learning solution based on binary decision trees and random forest technique, trained to provide accurate segmentation of brain tumors from multispectral MRI volumes. The current version of our system was trained and tested using all 220 high-grade tumor volumes from the MICCAI BRATS 2016 database. Image records were preprocessed to attenuate the effect of relative intensities in the MRI data, and to extend the feature set with neighborhood information of each voxel. The output of the random forest is also validated for each voxel, according to labels given to neighbor voxels. The achieved accuracy is characterized by an overall mean Dice score of 80.1%, sensitivity 83.1%, and specificity 98.6%. The proposed method is likely to detect all gliomas of 2 cm diameter.

[1]  Atiq Islam,et al.  Multifractal Texture Estimation for Detection and Segmentation of Brain Tumors , 2013, IEEE Transactions on Biomedical Engineering.

[2]  Brian B. Avants,et al.  Optimal Symmetric Multimodal Templates and Concatenated Random Forests for Supervised Brain Tumor Segmentation (Simplified) with ANTsR , 2014, Neuroinformatics.

[3]  László Szilágyi,et al.  Automatic Detection and Segmentation of Brain Tumor Using Random Forest Approach , 2016, MDAI.

[4]  Qianjin Feng,et al.  Brain Tumor Segmentation Based on Local Independent Projection-Based Classification , 2014, IEEE Transactions on Biomedical Engineering.

[5]  Gábor Székely,et al.  A Generative Probabilistic Model and Discriminative Extensions for Brain Lesion Segmentation— With Application to Tumor and Stroke , 2016, IEEE Transactions on Medical Imaging.

[6]  Nan Zhang,et al.  Kernel feature selection to fuse multi-spectral MRI images for brain tumor segmentation , 2011, Comput. Vis. Image Underst..

[7]  Ahmed Ben Hamida,et al.  3D multimodal MRI brain glioma tumor and edema segmentation: A graph cut distribution matching approach , 2015, Comput. Medical Imaging Graph..

[8]  Christopher Joseph Pal,et al.  Brain tumor segmentation with Deep Neural Networks , 2015, Medical Image Anal..

[9]  José V. Manjón,et al.  Automated Glioblastoma Segmentation Based on a Multiparametric Structured Unsupervised Classification , 2015, PloS one.

[10]  Brian B. Avants,et al.  The Multimodal Brain Tumor Image Segmentation Benchmark (BRATS) , 2015, IEEE Transactions on Medical Imaging.

[11]  Bostjan Likar,et al.  A Review of Methods for Correction of Intensity Inhomogeneity in MRI , 2007, IEEE Transactions on Medical Imaging.

[12]  Ronald M. Summers,et al.  Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning , 2016, IEEE Transactions on Medical Imaging.

[13]  Sheldon B. Akers,et al.  Binary Decision Diagrams , 1978, IEEE Transactions on Computers.

[14]  Victor Alves,et al.  Brain Tumor Segmentation Using Convolutional Neural Networks in MRI Images , 2016, IEEE Transactions on Medical Imaging.

[15]  Christos Davatzikos,et al.  A low cost approach for brain tumor segmentation based on intensity modeling and 3D Random Walker , 2015, Biomed. Signal Process. Control..

[16]  Gözde B. Ünal,et al.  Tumor-Cut: Segmentation of Brain Tumors on Contrast Enhanced MR Images for Radiosurgery Applications , 2012, IEEE Transactions on Medical Imaging.

[17]  Leo Breiman,et al.  Random Forests , 2001, Machine Learning.

[18]  László Szilágyi,et al.  Automatic Brain Tumor Segmentation in Multispectral MRI Volumetric Records , 2015, ICONIP.

[19]  Bennett A. Landman,et al.  Out-of-atlas labeling: A multi-atlas approach to cancer segmentation , 2012, 2012 9th IEEE International Symposium on Biomedical Imaging (ISBI).

[20]  Mert R. Sabuncu,et al.  Multi-atlas segmentation of biomedical images: A survey , 2014, Medical Image Anal..

[21]  George A. Lampropoulos,et al.  Automatic brain tumor detection in Magnetic Resonance Images , 2012, 2012 9th IEEE International Symposium on Biomedical Imaging (ISBI).

[22]  Nelly Gordillo,et al.  State of the art survey on MRI brain tumor segmentation. , 2013, Magnetic resonance imaging.

[23]  Vinod Kumar,et al.  A novel content-based active contour model for brain tumor segmentation. , 2012, Magnetic resonance imaging.