A deep learning approach for brain tumor detection using magnetic
resonance imaging
- URL: http://arxiv.org/abs/2210.13882v1
- Date: Tue, 25 Oct 2022 10:13:29 GMT
- Title: A deep learning approach for brain tumor detection using magnetic
resonance imaging
- Authors: Al-Akhir Nayan, Ahamad Nokib Mozumder, Md. Rakibul Haque, Fahim
Hossain Sifat, Khan Raqib Mahmud, Abul Kalam Al Azad, Muhammad Golam Kibria
- Abstract summary: Brain tumors are considered one of the most dangerous disorders in children and adults.
A convolution neural network (CNN)-based illustration has been proposed for detecting brain tumors from MRI images.
The proposed model has achieved 98.6% accuracy and 97.8% precision score with a low cross-entropy rate.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The growth of abnormal cells in the brain's tissue causes brain tumors. Brain
tumors are considered one of the most dangerous disorders in children and
adults. It develops quickly, and the patient's survival prospects are slim if
not appropriately treated. Proper treatment planning and precise diagnoses are
essential to improving a patient's life expectancy. Brain tumors are mainly
diagnosed using magnetic resonance imaging (MRI). As part of a convolution
neural network (CNN)-based illustration, an architecture containing five
convolution layers, five max-pooling layers, a Flatten layer, and two dense
layers has been proposed for detecting brain tumors from MRI images. The
proposed model includes an automatic feature extractor, modified hidden layer
architecture, and activation function. Several test cases were performed, and
the proposed model achieved 98.6% accuracy and 97.8% precision score with a low
cross-entropy rate. Compared with other approaches such as adjacent feature
propagation network (AFPNet), mask region-based CNN (mask RCNN), YOLOv5, and
Fourier CNN (FCNN), the proposed model has performed better in detecting brain
tumors.
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