CPRO: Competitive Poor and Rich Optimizer-Enabled Deep Learning Model and Holoentropy Weighted-Power K-Means Clustering for Brain Tumor Classification Using MRI

Author:

Agalya V.1,Kandasamy Manivel2,Venugopal Ellappan3,Maram Balajee4

Affiliation:

1. Department of Electrical & Electronics Engineering, New Horizon College of Engineering (Autonomous), Bengaluru 560103, Karnataka, India

2. Unitedworld School of Computational Intelligence Karnavati University, Uvarsad, Gandhinagar 382422, Gujarat, India

3. Department of Electronics and Communication Engineering, School of Electrical Engineering & Computing, Adama Science and Technology University Adama, Oromia Region, Ethiopia

4. Department of Computer Science and Engineering, GMR Institute of Technology Rajam, Srikakulam 532127, Andhra Pradesh, India

Abstract

A brain tumor is a collection of irregular and needless cell development in the brain region, and it is considered a life-threatening disease. Therefore, early level segmentation and brain tumor detection with Magnetic Resonance Imaging (MRI) is more important to save the patient’s life. Moreover, MRI is more effective in identifying patients with brain tumors since the recognition of this modality is moderately larger than considering other imaging modalities. The classification of brain tumors is the most important, difficult task in medical imaging systems because of size, appearance and shape variations. In this paper, Competitive Poor and Rich Optimization (CPRO)-based Deep Quantum Neural Network (Deep QNN) is proposed for brain tumor classification. Additionally, the pre-processing process assists in eradicating noises and uses image intensity to eliminate the artifacts. The significant features are extracted from pre-processed image to perform a productive classification process. The Deep QNN classifier is employed for classifying the brain tumor regions. Besides, the Deep QNN classifier is trained by the developed CPRO approach, which is newly designed by integrating Poor and Rich Optimization (PRO) and Competitive Swarm Optimizer (CSO). The developed brain tumor detection model outperformed other existing models with accuracy, sensitivity and specificity of 94.44%, 97.60% and 93.78%.

Publisher

World Scientific Pub Co Pte Ltd

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Software

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. An Adaptive Xception Model for Classification of Brain Tumors;International Journal of Pattern Recognition and Artificial Intelligence;2024-06-22

2. Competitive Swarm Optimizer: A decade survey;Swarm and Evolutionary Computation;2024-06

3. Dynamic Scheduling of Multi-agent Electromechanical Production Lines based on Iterative Algorithms;Scalable Computing: Practice and Experience;2024-04-12

4. A Lightweight Attention based MobileNetv2 Model for Brain Tumor Segmentation and Severity of Tumor Classification using Support Vector Machine;2023-10-12

5. Research on Olympic Games Hosting Strategy Based on Machine Learning Algorithm;2023 International Conference on Electronics and Devices, Computational Science (ICEDCS);2023-09-22

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