Classification of Brain Tumor using Hybrid Deep Learning Approach

<p><em>Diagnosis of tumor at its early stage is the most challenging task for its treatment in the area of neurology. As, brain tumor is the most common problem in the world, so tremendous research is being carried out to find out the cancer during its onset stages. The task of diagnosis...

Full description

Bibliographic Details
Main Authors: Manu SINGH, Vibhakar SHRIMALI
Format: Article
Language:English
Published: EduSoft publishing 2022-07-01
Series:Brain: Broad Research in Artificial Intelligence and Neuroscience
Subjects:
Online Access:https://www.edusoft.ro/brain/index.php/brain/article/view/1295
_version_ 1797335626839752704
author Manu SINGH
Vibhakar SHRIMALI
author_facet Manu SINGH
Vibhakar SHRIMALI
author_sort Manu SINGH
collection DOAJ
description <p><em>Diagnosis of tumor at its early stage is the most challenging task for its treatment in the area of neurology. As, brain tumor is the most common problem in the world, so tremendous research is being carried out to find out the cancer during its onset stages. The task of diagnosis as well as its automation has been extremely difficult using conventional image processing methods. In view of this, a novel technique has been proposed based on convolutional neural network architecture to classify the brain tumor which assists radiologists and physicians to make their decision fast and accurate. The proposed deep learning structure helps to analyze and produce better feature maps to classify the variations in the normal and malignant cases. The proposed method i.e. Hybrid Deep Neural Network (H-DNN) architecture is the combination of two different DNN. First Deep Neural Network (DNN-1) uses the spatial texture information of the cranial Magnetic Resonance (MR) images, whereas in the second method Deep Neural Network (DNN-2) uses the frequency domain information of the MRI scans. Finally, we combine both neural networks to produce better classification result based on prediction score. The training input to the DNN-1 is the texture which is computed by Local Binary Patterns, whereas the DNN-2 uses the frequencies, which have being calculated by Wavelet Transformation as its training input. Here two Dataset have been used for the evaluation of the proposed model i.e. Real MRI dataset and BraTS 2012 MRI Dataset for T2- weighted MRI scans. In this study, the proposed model provides 98.7% classification accuracy, which outperforms the other methods as reported in the related work. Also comparisons of Accuracy, Sensitivity and Specificity of the proposed method has been done with DNN-1 and DNN-2 architecture to indicate that the reported model gives better results when compared to the other methods.</em><em></em></p>
first_indexed 2024-03-08T08:41:02Z
format Article
id doaj.art-17cac1eb668a4ebab33784831b76fd99
institution Directory Open Access Journal
issn 2067-3957
language English
last_indexed 2024-03-08T08:41:02Z
publishDate 2022-07-01
publisher EduSoft publishing
record_format Article
series Brain: Broad Research in Artificial Intelligence and Neuroscience
spelling doaj.art-17cac1eb668a4ebab33784831b76fd992024-02-01T18:00:42ZengEduSoft publishingBrain: Broad Research in Artificial Intelligence and Neuroscience2067-39572022-07-011323083271100Classification of Brain Tumor using Hybrid Deep Learning ApproachManu SINGH0Vibhakar SHRIMALI1University School of Information and Communication Technology, Guru Gobind Singh, Indraprastha University, New Delhi, IndiaHead of Department of Electronics and Communication Engineering, GB Pant Govt. Engineering College, New Delhi, India<p><em>Diagnosis of tumor at its early stage is the most challenging task for its treatment in the area of neurology. As, brain tumor is the most common problem in the world, so tremendous research is being carried out to find out the cancer during its onset stages. The task of diagnosis as well as its automation has been extremely difficult using conventional image processing methods. In view of this, a novel technique has been proposed based on convolutional neural network architecture to classify the brain tumor which assists radiologists and physicians to make their decision fast and accurate. The proposed deep learning structure helps to analyze and produce better feature maps to classify the variations in the normal and malignant cases. The proposed method i.e. Hybrid Deep Neural Network (H-DNN) architecture is the combination of two different DNN. First Deep Neural Network (DNN-1) uses the spatial texture information of the cranial Magnetic Resonance (MR) images, whereas in the second method Deep Neural Network (DNN-2) uses the frequency domain information of the MRI scans. Finally, we combine both neural networks to produce better classification result based on prediction score. The training input to the DNN-1 is the texture which is computed by Local Binary Patterns, whereas the DNN-2 uses the frequencies, which have being calculated by Wavelet Transformation as its training input. Here two Dataset have been used for the evaluation of the proposed model i.e. Real MRI dataset and BraTS 2012 MRI Dataset for T2- weighted MRI scans. In this study, the proposed model provides 98.7% classification accuracy, which outperforms the other methods as reported in the related work. Also comparisons of Accuracy, Sensitivity and Specificity of the proposed method has been done with DNN-1 and DNN-2 architecture to indicate that the reported model gives better results when compared to the other methods.</em><em></em></p>https://www.edusoft.ro/brain/index.php/brain/article/view/1295brain tumor, convolutional neural network, deep learning, image classification, magnetic resonance imaging
spellingShingle Manu SINGH
Vibhakar SHRIMALI
Classification of Brain Tumor using Hybrid Deep Learning Approach
Brain: Broad Research in Artificial Intelligence and Neuroscience
brain tumor, convolutional neural network, deep learning, image classification, magnetic resonance imaging
title Classification of Brain Tumor using Hybrid Deep Learning Approach
title_full Classification of Brain Tumor using Hybrid Deep Learning Approach
title_fullStr Classification of Brain Tumor using Hybrid Deep Learning Approach
title_full_unstemmed Classification of Brain Tumor using Hybrid Deep Learning Approach
title_short Classification of Brain Tumor using Hybrid Deep Learning Approach
title_sort classification of brain tumor using hybrid deep learning approach
topic brain tumor, convolutional neural network, deep learning, image classification, magnetic resonance imaging
url https://www.edusoft.ro/brain/index.php/brain/article/view/1295
work_keys_str_mv AT manusingh classificationofbraintumorusinghybriddeeplearningapproach
AT vibhakarshrimali classificationofbraintumorusinghybriddeeplearningapproach