Author:
Nassar Shaimaa E.,Yasser Ibrahim,Amer Hanan M.,Mohamed Mohamed A.
Abstract
AbstractThe brain is the most vital component of the neurological system. Therefore, brain tumor classification is a very challenging task in the field of medical image analysis. There has been a qualitative leap in the field of artificial intelligence, deep learning, and their medical imaging applications in the last decade. The importance of this remarkable development has emerged in the field of biomedical engineering due to the sensitivity and seriousness of the issues related to it. The use of deep learning in the field of detecting and classifying tumors in general and brain tumors in particular using magnetic resonance imaging (MRI) is a crucial factor in the accuracy and speed of diagnosis. This is due to its great ability to deal with huge amounts of data and avoid errors resulting from human intervention. The aim of this research is to develop an efficient automated approach for classifying brain tumors to assist radiologists instead of consuming time looking at several images for a precise diagnosis. The proposed approach is based on 3064 T1-weighted contrast-enhanced brain MR images (T1W-CE MRI) from 233 patients. In this study, the proposed system is based on the results of five different models to use the combined potential of multiple models, trying to achieve promising results. The proposed system has led to a significant improvement in the results, with an overall accuracy of 99.31%.
Publisher
Springer Science and Business Media LLC
Subject
Hardware and Architecture,Information Systems,Theoretical Computer Science,Software
Reference65 articles.
1. Hossain A, Islam MT, Abdul Rahim SK, Rahman MA, Rahman T, Arshad H, Khandakar A, Ayari MA, Chowdhury ME (2023) A lightweight deep learning based microwave brain image network model for brain tumor classification using reconstructed microwave brain (rmb) images. Biosensors 13(2):238
2. T. A. C. S. medical and editorial content team, “Key statistics for brain and spinal cord tumors.” https://www.cancer.org/cancer/brain-spinal-cord-tumors-adults/about/key-statistics.html. Accessed: 2023-03-20
3. Pradhan A, Mishra D, Das K, Panda G, Kumar S, Zymbler M (2021) On the classification of mr images using elm-ssa coated hybrid model. Mathematics 9(17):2095
4. Rasool M, Ismail NA, Boulila W, Ammar A, Samma H, Yafooz WM, Emara A-HM (2022) A hybrid deep learning model for brain tumour classification. Entropy 24(6):799
5. Abd El-Wahab BS, Nasr ME, Khamis S, Ashour AS (2023) Btc-fcnn: fast convolution neural network for multi-class brain tumor classification. Health Inf Sci Syst 11(1):3
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