Classification of Brain Tumors using MRI images based on Convolutional Neural Network and Supervised Machine Learning Algorithms

Brain tumor is abnormal cells that originate from cranial tissue and is considered one of the most destructive diseases, and lead to the cause of death, where the early diagnosis is crucial for accelerating the therapy of brain tumors. Examining the patient's MRI scans is one traditional way of distinguishing brain cancers. The conventional approaches take a long time and are prone to human error, especially when dealing with huge amounts of data and diverse brain tumor classes. Artificial Intelligence (AI) is extremely useful for the strict detection and classification of several diseases in the brain. Convolutional Neural Network (CNN) is one of the modes techniques which act as a tumor classifier due to it shows high effectiveness for diagnosing brain tumors. That's why, in this research, we presented a hybrid method that merged a group of pre-trained deep learning CNN patterns with a group of supervised classifiers in machine learning called, k- Nearest Neighbor (KNN), Support Vector Machine (SVM), and Linear Discriminant Analysis (LDA). We used an MRI image that consist of images of four brain tumor classes, namely glioma, meningioma, pituitary, and no tumor. We deduced the features extracted from the images by hiring three types of CNN called (GoogleNet, Shuffle-Net, and NasNet-Mobile). Depending upon the experimental consequences, ShuffleN et with SVM achieved the highest results according to the four categories of metrics evaluation that are Accuracy of 98.40%, Precision of 97%, Recall of 96.75%, and Fl-Score of 96.75%. Finally, we compared our results with different state-of-the-art papers recently published and our proposed method show outperforms compared them.

[1]  Ghulam Nabi Ahmad Hassan Yar,et al.  Brain Tumor Diagnosis and Classification via Pre-Trained Convolutional Neural Networks , 2022, medRxiv.

[2]  A. A. Salama,et al.  An Effective Approach to Detect and Identify Brain Tumors Using Transfer Learning , 2022, Applied Sciences.

[3]  W. Yafooz,et al.  A Hybrid Deep Learning Model for Brain Tumour Classification , 2022, Entropy.

[4]  Y. Daradkeh,et al.  A Hybrid Deep Learning-Based Approach for Brain Tumor Classification , 2022, Electronics.

[5]  Ghazanfar Latif,et al.  Glioma Tumors’ Classification Using Deep-Neural-Network-Based Features with SVM Classifier , 2022, Diagnostics.

[6]  Jatinderkumar R. Saini,et al.  MRI Brain Tumor Image Classification Using a Combined Feature and Image-Based Classifier , 2022, Frontiers in Psychology.

[7]  Ke-wen Xia,et al.  A Novel MRI Diagnosis Method for Brain Tumor Classification Based on CNN and Bayesian Optimization , 2022, Healthcare.

[8]  Arnab Kumar Maji,et al.  Brain Magnetic Resonance Imaging Classification Using Deep Learning Architectures with Gender and Age , 2022, Sensors.

[9]  Dillip Ranjan Nayak,et al.  Brain Tumor Classification Using Dense Efficient-Net , 2022, Axioms.

[10]  Mirza Mumtaz Zahoor,et al.  A New Deep Hybrid Boosted and Ensemble Learning-Based Brain Tumor Analysis Using MRI , 2022, Sensors.

[11]  Farman Ali,et al.  A Two-Tier Framework Based on GoogLeNet and YOLOv3 Models for Tumor Detection in MRI , 2022, Computers, Materials & Continua.

[12]  Nada M. Elshennawy,et al.  Classification of Brain MRI Tumor Images Based on Deep Learning PGGAN Augmentation , 2021, Diagnostics.

[13]  O. Ucan,et al.  Covid-19 Ultrasound image classification using SVM based on kernels deduced from Convolutional neural network , 2021, 2021 5th International Symposium on Multidisciplinary Studies and Innovative Technologies (ISMSIT).

[14]  A. Duru,et al.  Covid-19 X-ray image classification using SVM based on Local Binary Pattern , 2021, 2021 5th International Symposium on Multidisciplinary Studies and Innovative Technologies (ISMSIT).

[15]  Geoff Dougherty,et al.  Comparison of two convolutional neural network models for automated classification of brain cancer types , 2021, PROCEEDINGS OF THE INTERNATIONAL CONFERENCE AND SCHOOL ON PHYSICS IN MEDICINE AND BIOSYSTEM (ICSPMB): Physics Contribution in Medicine and Biomedical Applications.

[16]  Toqa A. Sadoon,et al.  Deep learning model for glioma, meningioma and pituitary classification , 2021 .

[17]  Mrs. S. Maheshwari,et al.  Brain Tumor Classification , 2021 .

[18]  B. Koonce ResNet 50 , 2021, Convolutional Neural Networks with Swift for Tensorflow.

[19]  Xinyu Yang,et al.  Multisignal VGG19 Network with Transposed Convolution for Rotating Machinery Fault Diagnosis Based on Deep Transfer Learning , 2020 .

[20]  S. K. Addagarla,et al.  Real Time Multi-Scale Facial Mask Detection and Classification Using Deep Transfer Learning Techniques , 2020 .

[21]  Ikhlef Ameur,et al.  Transfer Learning Using Convolutional Neural Network Architectures for Brain Tumor Classification from MRI Images , 2020, AIAI.

[22]  Kaplan Kaplan,et al.  Brain tumor classification using modified local binary patterns (LBP) feature extraction methods. , 2020, Medical hypotheses.

[23]  Milica M. Badža,et al.  Classification of Brain Tumors from MRI Images Using a Convolutional Neural Network , 2020, Applied Sciences.

[24]  Brojo Kishore Mishra,et al.  Brain Tumor Detection and Classification Using Convolutional Neural Network and Deep Neural Network , 2020, 2020 International Conference on Computer Science, Engineering and Applications (ICCSEA).

[25]  S. Sivakumari,et al.  Deep Learning Techniques: An Overview , 2020, Advances in Intelligent Systems and Computing.

[26]  E. Wehrens,et al.  Invaders Exposed: Understanding and Targeting Tumor Cell Invasion in Diffuse Intrinsic Pontine Glioma , 2020, Frontiers in Oncology.

[27]  Ali Mohammad Alqudah,et al.  Brain Tumor Classification Using Deep Learning Technique - A Comparison between Cropped, Uncropped, and Segmented Lesion Images with Different Sizes , 2019, International Journal of Advanced Trends in Computer Science and Engineering.

[28]  Bing Tu,et al.  Moving Object Detection Method via ResNet-18 With Encoder–Decoder Structure in Complex Scenes , 2019, IEEE Access.

[29]  Nader Karimi,et al.  Brain Tumor Segmentation Using Deep Learning by Type Specific Sorting of Images , 2018, ArXiv.

[30]  Tati L. R. Mengko,et al.  Brain Tumor Classification Using Convolutional Neural Network , 2018, IFMBE Proceedings.

[31]  Xiangyu Zhang,et al.  ShuffleNet: An Extremely Efficient Convolutional Neural Network for Mobile Devices , 2017, 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition.

[32]  G. Lu,et al.  PET/MR Imaging: New Frontier in Alzheimer's Disease and Other Dementias , 2017, Front. Mol. Neurosci..

[33]  Yi Zhu,et al.  DenseNet for dense flow , 2017, 2017 IEEE International Conference on Image Processing (ICIP).

[34]  Bo Chen,et al.  MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications , 2017, ArXiv.

[35]  François Chollet,et al.  Xception: Deep Learning with Depthwise Separable Convolutions , 2016, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[36]  Thomas Brox,et al.  U-Net: Convolutional Networks for Biomedical Image Segmentation , 2015, MICCAI.

[37]  P. Mahzouni,et al.  Brain tumors: Special characters for research and banking , 2015, Advanced biomedical research.

[38]  Dumitru Erhan,et al.  Going deeper with convolutions , 2014, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[39]  I. Muchnik,et al.  Support Vector Machines for Classification , 2015 .

[40]  Frederik Barkhof,et al.  An algorithmic approach to structural imaging in dementia , 2013, Journal of Neurology, Neurosurgery & Psychiatry.

[41]  Yang Song,et al.  IKNN: Informative K-Nearest Neighbor Pattern Classification , 2007, PKDD.

[42]  P. Buckley,et al.  Neuroimaging of schizophrenia: structural abnormalities and pathophysiological implications , 2005, Neuropsychiatric disease and treatment.

[43]  Nils J. Nilsson,et al.  Principles of Artificial Intelligence , 1980, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[44]  Robert H. Riffenburgh,et al.  Linear Discriminant Analysis , 1960 .