Title
Mri Brain Classification Using The Quantum Entropy Lbp And Deep-Learning-Based Features
Abstract
Brain tumor detection at early stages can increase the chances of the patient's recovery after treatment. In the last decade, we have noticed a substantial development in the medical imaging technologies, and they are now becoming an integral part in the diagnosis and treatment processes. In this study, we generalize the concept of entropy difference defined in terms of Marsaglia formula (usually used to describe two different figures, statues, etc.) by using the quantum calculus. Then we employ the result to extend the local binary patterns (LBP) to get the quantum entropy LBP (QELBP). The proposed study consists of two approaches of features extractions of MRI brain scans, namely, the QELBP and the deep learning DL features. The classification of MRI brain scan is improved by exploiting the excellent performance of the QELBP-DL feature extraction of the brain in MRI brain scans. The combining all of the extracted features increase the classification accuracy of long short-term memory network when using it as the brain tumor classifier. The maximum accuracy achieved for classifying a dataset comprising 154 MRI brain scan is 98.80%. The experimental results demonstrate that combining the extracted features improves the performance of MRI brain tumor classification.
Year
DOI
Venue
2020
10.3390/e22091033
ENTROPY
Keywords
DocType
Volume
quantum calculus, fractional calculus, quantum entropy, deep learning, MRI classification
Journal
22
Issue
ISSN
Citations 
9
1099-4300
0
PageRank 
References 
Authors
0.34
0
6
Name
Order
Citations
PageRank
Ali M. Hasan1122.24
Hamid A. Jalab214423.33
Rabha W. Ibrahim310417.33
Farid Meziane430837.98
Ala'a R Al-Shamasneh500.34
Suzan J Obaiys600.34