Classification of Brain Tumor Diseases Using Data Augmentation and Transfer Learning

Authors

  • Hadeel Moataz Al-Dabbas Department of Islamic Banking and Finance, College of Islamic Sciences, Aliraqia University, Baghdad, Iraq https://orcid.org/0000-0001-9925-0189
  • Mohammed Salih Mahdi Business Information College, University of Information Technology and Communications, Baghdad, Iraq

DOI:

https://doi.org/10.24996/ijs.2024.65.4.41

Keywords:

Convolutional Neural Networks (CNN), Transfer Learning, Brain MRI Classification

Abstract

     An accumulation of aberrant cells called a brain tumor is the outcome of unregulated cell division. Brain cancers can be found using magnetic resonance imaging (MRI). The exponential growth of deep learning networks has allowed us to tackle complex tasks, even in fields as complicated as medicine. However, using these models requires a large corpus of data for the networks to be highly generalizable and have high performance. This dearth of training data makes it critical to explore methods such as data augmentation. In this sense, data augmentation methods are widely used in strategies to train networks, and with small data sets being vital in medicine due to the limited access to data, this work aims to identify the best classification system by considering the prediction accuracy in this vein. Data augmentation is performed on the database and fed into the three convolutional neural network (CNN) models. A comparison line is drawn between the three models based on accuracy and performance on the Inception v3 models, Mobile Net V2, and Squeeze Net network for brain tumor detection and classifying 350 brain MR images. The statistical methods were modified in order to evaluate these algorithms. With 0.992% accuracy, 0.993% recall, 0.989% precision, and 0.994% F1 score, the Squeeze Net model performed the best. The Mobile Net V2 model, which had an accuracy of 0.964%, came next. When the research's findings were compared to those of related studies in the literature, they revealed better success rates than those of the majority of investigations.

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Published

2024-04-30

Issue

Section

Computer Science

How to Cite

Classification of Brain Tumor Diseases Using Data Augmentation and Transfer Learning. (2024). Iraqi Journal of Science, 65(4), 2275-2286. https://doi.org/10.24996/ijs.2024.65.4.41
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Novel Key Generator-Based SqueezeNet Model and Hyperchaotic Map. Data and Metadata, 4, 743.
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Gunde Mounika, Sreedhar Kollem, Srinivas Samala (2025)
Investigating brain tumor classification using MRI: a scientometric analysis of selected articles from 2015 to 2024. Neuroradiology.
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Hameed I.M. (2025-01-01)
MCNet: Mask Cell of Multi Class Deep Network for Blood Cells Detection and Classification. International Journal of Intelligent Engineering and Systems, 18(1), 321-334.
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Jozi N.S. (2024-01-01)
Lung Cancer Detection: The Role of Transfer Learning in Medical Imaging. 2024 International Conference on Future Telecommunications and Artificial Intelligence IC Ftai 2024 Proceedings.

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