Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches

The detection of neurological disorders and diseases is aided by automatically identifying brain tumors from brain magnetic resonance imaging (MRI) images. A brain tumor is a potentially fatal disease that affects humans. Convolutional neural networks (CNNs) are the most common and widely used deep...

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Main Authors: Chetan Swarup, Kamred Udham Singh, Ankit Kumar, Saroj Kumar Pandey, Neeraj varshney, Teekam Singh
Format: Article
Language:English
Published: AIMS Press 2023-03-01
Series:Electronic Research Archive
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/era.2023146?viewType=HTML
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author Chetan Swarup
Kamred Udham Singh
Ankit Kumar
Saroj Kumar Pandey
Neeraj varshney
Teekam Singh
author_facet Chetan Swarup
Kamred Udham Singh
Ankit Kumar
Saroj Kumar Pandey
Neeraj varshney
Teekam Singh
author_sort Chetan Swarup
collection DOAJ
description The detection of neurological disorders and diseases is aided by automatically identifying brain tumors from brain magnetic resonance imaging (MRI) images. A brain tumor is a potentially fatal disease that affects humans. Convolutional neural networks (CNNs) are the most common and widely used deep learning techniques for brain tumor analysis and classification. In this study, we proposed a deep CNN model for automatically detecting brain tumor cells in MRI brain images. First, we preprocess the 2D brain image MRI image to generate convolutional features. The CNN network is trained on the training dataset using the GoogleNet and AlexNet architecture, and the data model's performance is evaluated on the test data set. The model's performance is measured in terms of accuracy, sensitivity, specificity, and AUC. The algorithm performance matrices of both AlexNet and GoogLeNet are compared, the accuracy of AlexNet is 98.95, GoogLeNet is 99.45 sensitivity of AlexNet is 98.4, and GoogLeNet is 99.75, so from these values, we can infer that the GooGleNet is highly accurate and parameters that GoogLeNet consumes is significantly less; that is, the depth of AlexNet is 8, and it takes 60 million parameters, and the image input size is 227 × 227. Because of its high specificity and speed, the proposed CNN model can be a competent alternative support tool for radiologists in clinical diagnosis.
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spelling doaj.art-494f4af9804c439c9e22df2e190299182023-05-08T01:34:43ZengAIMS PressElectronic Research Archive2688-15942023-03-013152900292410.3934/era.2023146Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approachesChetan Swarup 0Kamred Udham Singh1Ankit Kumar2Saroj Kumar Pandey 3Neeraj varshney4Teekam Singh 51. Department of Basic Science, College of Science and Theoretical Studies, Saudi Electronic University, Riyadh-Male Campus, Riyadh 11673, Saudi Arabia2. School of Computing, Graphic Hill Era University, Dehradun-248002, India3. Department of Computer Engineering & Applications, GLA University, Mathura, India3. Department of Computer Engineering & Applications, GLA University, Mathura, India3. Department of Computer Engineering & Applications, GLA University, Mathura, India4. Department of Mathematics, University of Petroleum & Energy Studies, Dehradun-248002, IndiaThe detection of neurological disorders and diseases is aided by automatically identifying brain tumors from brain magnetic resonance imaging (MRI) images. A brain tumor is a potentially fatal disease that affects humans. Convolutional neural networks (CNNs) are the most common and widely used deep learning techniques for brain tumor analysis and classification. In this study, we proposed a deep CNN model for automatically detecting brain tumor cells in MRI brain images. First, we preprocess the 2D brain image MRI image to generate convolutional features. The CNN network is trained on the training dataset using the GoogleNet and AlexNet architecture, and the data model's performance is evaluated on the test data set. The model's performance is measured in terms of accuracy, sensitivity, specificity, and AUC. The algorithm performance matrices of both AlexNet and GoogLeNet are compared, the accuracy of AlexNet is 98.95, GoogLeNet is 99.45 sensitivity of AlexNet is 98.4, and GoogLeNet is 99.75, so from these values, we can infer that the GooGleNet is highly accurate and parameters that GoogLeNet consumes is significantly less; that is, the depth of AlexNet is 8, and it takes 60 million parameters, and the image input size is 227 × 227. Because of its high specificity and speed, the proposed CNN model can be a competent alternative support tool for radiologists in clinical diagnosis.https://www.aimspress.com/article/doi/10.3934/era.2023146?viewType=HTMLimage segmentationpattern classificationmri imagestumorpcasvm
spellingShingle Chetan Swarup
Kamred Udham Singh
Ankit Kumar
Saroj Kumar Pandey
Neeraj varshney
Teekam Singh
Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
Electronic Research Archive
image segmentation
pattern classification
mri images
tumor
pca
svm
title Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
title_full Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
title_fullStr Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
title_full_unstemmed Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
title_short Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
title_sort brain tumor detection using cnn alexnet googlenet ensembling learning approaches
topic image segmentation
pattern classification
mri images
tumor
pca
svm
url https://www.aimspress.com/article/doi/10.3934/era.2023146?viewType=HTML
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