Convolutional neural network based brain tumor identification and classification

Authors

  • Bowei Wang

DOI:

https://doi.org/10.54097/hset.v16i.2611

Keywords:

Brain tumor, CNN, Magnetic reasoning imaging.

Abstract

The human brain is one of the body's most major organs. If there are problems within the human brain, they may cause serious consequences, and even endangers the human life. One of the most fatal diseases for humans is a brain tumor. In the old days, tumor detection was done manually by doctors through reading magnetic resonance images, which might not be time efficient, and sometimes may even produce inaccurate results. Nowadays, with the development of science and technology, Artificial Intelligence (AI) is present in many fields in human life, including medical field. Tumor detection with AI is one of the applications that technology changes human life. The Convolution Neural Network (CNN), a prominent algorithm in deep learning, is widely employed in tumor identification. In this study, a CNN model is proposed. Over 7000 brain tumor magnetic resonance images, including glioma, meningioma, no tumor and pituitary are used in this study. The images are also preprocessed to improve the accuracy of the proposed models. In this study, the well-known VGG16 model, which is a pretrained deep learning model, is utilized to compare with the proposed model. The proposed model and the VGG16 model are trained and evaluated using both the original (uncropped) images and preprocessed (cropped) images. The results of the experiment indicate that the suggested model exceeds the VGG16 model in the light of loss and accuracy.

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References

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Published

10-11-2022

How to Cite

Wang, B. (2022). Convolutional neural network based brain tumor identification and classification. Highlights in Science, Engineering and Technology, 16, 453-460. https://doi.org/10.54097/hset.v16i.2611