MRI brain image classification using neural networks

Classification of brain tumor using Magnetic resonance Imaging (MRI) is a difficult task due to the variance and complexity of tumors. This paper presents Neural Network techniques for the classification of the magnetic resonance human brain images. The proposed Neural Network technique consists of...

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Published in2013 INTERNATIONAL CONFERENCE ON COMPUTING, ELECTRICAL AND ELECTRONIC ENGINEERING (ICCEEE) pp. 253 - 258
Main Authors Ibrahim, Walaa Hussein, Osman, Ahmed AbdelRhman Ahmed, Mohamed, Yusra Ibrahim
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.08.2013
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DOI10.1109/ICCEEE.2013.6633943

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Abstract Classification of brain tumor using Magnetic resonance Imaging (MRI) is a difficult task due to the variance and complexity of tumors. This paper presents Neural Network techniques for the classification of the magnetic resonance human brain images. The proposed Neural Network technique consists of three stages, preprocessing, dimensionality reduction, and classification. In the first stage, we The MR image will obtain and convert it to data form (encoded information that can be stored, manipulated and transmitted by digital devices), in the second stage have obtained the dimensionally reduction using principles component analysis (PCA), then In the classification stage the Back-Propagation Neural Network has been used as a classifier to classify subjects as normal or abnormal MRI brain images. In the experiment 3×58 datasets of MRI Brain segital images (www.cipr.rpi.edu/resource/sequences/sequence01) have been used for tainting and testing the proposed method. The result of the proposed technique was compared with the results of baseline algorithms, and it presents validity as competitive results quality-wise, and showed that the classification accuracy of our method is 96.33%.
AbstractList Classification of brain tumor using Magnetic resonance Imaging (MRI) is a difficult task due to the variance and complexity of tumors. This paper presents Neural Network techniques for the classification of the magnetic resonance human brain images. The proposed Neural Network technique consists of three stages, preprocessing, dimensionality reduction, and classification. In the first stage, we The MR image will obtain and convert it to data form (encoded information that can be stored, manipulated and transmitted by digital devices), in the second stage have obtained the dimensionally reduction using principles component analysis (PCA), then In the classification stage the Back-Propagation Neural Network has been used as a classifier to classify subjects as normal or abnormal MRI brain images. In the experiment 3×58 datasets of MRI Brain segital images (www.cipr.rpi.edu/resource/sequences/sequence01) have been used for tainting and testing the proposed method. The result of the proposed technique was compared with the results of baseline algorithms, and it presents validity as competitive results quality-wise, and showed that the classification accuracy of our method is 96.33%.
Author Ibrahim, Walaa Hussein
Osman, Ahmed AbdelRhman Ahmed
Mohamed, Yusra Ibrahim
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Snippet Classification of brain tumor using Magnetic resonance Imaging (MRI) is a difficult task due to the variance and complexity of tumors. This paper presents...
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StartPage 253
SubjectTerms Artificial neural networks
Back-Propagation neural networks
Biological neural networks
Brain tumor detection
Linear regression
MRI
Neurons
PCA
Principal component analysis
Training
Vectors
Title MRI brain image classification using neural networks
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