A deep learning fusion model for accurate classification of brain tumours in Magnetic Resonance images

Author:

Zebari Nechirvan Asaad1,Mohammed Chira Nadheef2,Zebari Dilovan Asaad3,Mohammed Mazin Abed456ORCID,Zeebaree Diyar Qader7,Marhoon Haydar Abdulameer89,Abdulkareem Karrar Hameed10ORCID,Kadry Seifedine11ORCID,Viriyasitavat Wattana12,Nedoma Jan5,Martinek Radek6

Affiliation:

1. Department of Information Technology Lebanese French University Erbil Iraq

2. Department of Computer Science, University of Zakho Zakho Kurdistan Region Iraq

3. Department of Computer Science College of Science Nawroz University Duhok Kurdistan Region Iraq

4. Department of Artificial Intelligence College of Computer Science and Information Technology University of Anbar Ramadi Iraq

5. Department of Telecommunications VSB‐Technical University of Ostrava Ostrava Czech Republic

6. Department of Cybernetics and Biomedical Engineering VSB‐Technical University of Ostrava Ostrava Czech Republic

7. Department of Computer Network and Information Security Technical College of Informatics – Akre Duhok Polytechnic University Duhok Iraq

8. Information and Communication Technology Research Group Scientific Research Center Al‐Ayen University Thi‐Qar Iraq

9. College of Computer Sciences and Information Technology University of Kerbala Karbala Iraq

10. College of Agriculture Al‐Muthanna University Samawah Iraq

11. Department of Applied Data Science Noroff University College Kristiansand Norway

12. Faculty of Commerce and Accountancy Chulalongkorn Business School Chulalongkorn University Bangkok Thailand

Abstract

AbstractDetecting brain tumours is complex due to the natural variation in their location, shape, and intensity in images. While having accurate detection and segmentation of brain tumours would be beneficial, current methods still need to solve this problem despite the numerous available approaches. Precise analysis of Magnetic Resonance Imaging (MRI) is crucial for detecting, segmenting, and classifying brain tumours in medical diagnostics. Magnetic Resonance Imaging is a vital component in medical diagnosis, and it requires precise, efficient, careful, efficient, and reliable image analysis techniques. The authors developed a Deep Learning (DL) fusion model to classify brain tumours reliably. Deep Learning models require large amounts of training data to achieve good results, so the researchers utilised data augmentation techniques to increase the dataset size for training models. VGG16, ResNet50, and convolutional deep belief networks networks extracted deep features from MRI images. Softmax was used as the classifier, and the training set was supplemented with intentionally created MRI images of brain tumours in addition to the genuine ones. The features of two DL models were combined in the proposed model to generate a fusion model, which significantly increased classification accuracy. An openly accessible dataset from the internet was used to test the model's performance, and the experimental results showed that the proposed fusion model achieved a classification accuracy of 98.98%. Finally, the results were compared with existing methods, and the proposed model outperformed them significantly.

Publisher

Institution of Engineering and Technology (IET)

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Vision and Pattern Recognition,Human-Computer Interaction,Information Systems

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