Hybrid Manta Ray Foraging Optimization for Novel Brain Tumor Detection
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How to Cite

Karuppusamy, P. 2020. “Hybrid Manta Ray Foraging Optimization for Novel Brain Tumor Detection”. Journal of Soft Computing Paradigm 2 (3): 175-85. https://doi.org/10.36548/jscp.2020.3.005.

Keywords

— Magnetic Resonance Image
— Manta Ray Foraging Optimization
— Convolution Neural Network
Published: 23-07-2020

Abstract

In medical image processing, segmentation and extraction of tumor portion from brain MRI is a complex task. It consumes more time and human effort to differentiate the normal and abnormal tissue. Clinical experts need more time to provide accurate results, recent technology developments in image processing reduces the human effort and provides more accurate results which reduces time and death rates by identifying the issues in early stage itself. Machine learning based algorithms occupies a major role in bio medical image processing applications. The performance of machine learning models is in satisfactory levels, but it could be improved by introducing optimization in feature selection stage itself. The research work provides a hybrid manta ray foraging optimization for feature selection from brain tumor MRI images. Convolution neural network is used to test the optimized features and detects the early stage brain tumors. The experimental model is compared with existing artificial neural network, particle swarm optimization algorithm and acquires a better detection and classification accuracy.

References

  1. Mahmoud Khaled Abd-Ellah, Ali Ismail Awad, Ashraf A. M. Khalaf, Hesham F. A. Hamed (2019). A review on brain tumor diagnosis from MRI images: Practical implications, key achievements, and lessons learned. Magnetic Resonance Imaging, 61, 300-318
  2. Devkota, Abeer Alsadoon, P. W. C. Prasad, A. K. Singh, A. Elchouemi (2018). Image Segmentation for Early Stage Brain Tumor Detection using Mathematical Morphological Reconstruction. Procedia Computer Science. 125,115-123
  3. Umit Ilhan, Ahmet Ilhan (2017). Brain tumor segmentation based on a new threshold approach. Procedia Computer Science. 120,580-587.
  4. Gamal G. N. Geweid, M. A. Elsisy, Osama S. Faragallah, Reza Fazel-Rezai (2019). Efficient tumor detection in medical images using pixel intensity estimation based on nonparametric approach. Expert Systems with Applications. 120, 139-154
  5. Sanjeev Kumar, Chetna Dabas, Sunila Godara (2017) Classification of Brain MRI Tumor Images: A Hybrid Approach. Procedia Computer Science. 122, 510-517.
  6. Alexander Zotin, Konstantin Simonov, Mikhail Kurako, Yousif Hamad, Svetlana Kirillova (2018). Edge detection in MRI brain tumor images based on fuzzy C-means clustering. Procedia Computer Science. 126,1261-1270
  7. Solmaz Abbasi, Farshad Tajeripour (2017). Detection of brain tumor in 3D MRI images using local binary patterns and histogram orientation gradient. Neurocomputing. 219,526-535.
  8. Todeschi, C. Bund, H. Cebula, S. Chibbaro, F. Proust (2019). Diagnostic value of fusion of metabolic and structural images for stereotactic biopsy of brain tumors without enhancement after contrast medium injection. Neurochirurgie. 65(6),357-364.
  9. Iván Cabria, Iker Gondra (2017). MRI segmentation fusion for brain tumor detection. Information Fusion. 36, 1-9.
  10. Bindhu, V. (2019). Biomedical Image Analysis Using Semantic Segmentation. Journal of Innovative Image Processing (JIIP), 1(2), 91-101.
  11. Manoharan, S. (2019). Smart Image Processing Algorithm for Text Recognition, Information Extraction and Vocalization for The Visually Challenged. Journal of Innovative Image Processing (JIIP), 1(01), 31-38.
  12. ShaoPeng Wang, YuDong Cai(2018). Identification of the functional alteration signatures across different cancer types with support vector machine and feature analysis. Biochimica et Biophysica Acta (BBA) - Molecular Basis of Disease. 1864(6), 2218-2227.
  13. Bashar, A. (2019). Survey on Evolving Deep Learning Neural Network Architectures. Journal of Artificial Intelligence, 1(02), 73-82.
  14. Alexander Zotin, Konstantin Simonov, Mikhail Kurako, Yousif Hamad, Svetlana Kirillova (2018). Edge detection in MRI brain tumor images based on fuzzy C-means clustering. Procedia Computer Science. 126, 1261-1270.
  15. Javaria Amin, Muhammad Sharif, Mudassar Raza, Tanzila Saba, Muhammad Almas Anjum (2019). Brain tumor detection using statistical and machine learning method. Computer Methods and Programs in Biomedicine. 177, 69-79.
  16. Yuanpu Xie, Fuyong Xing, Xiaoshuang Shi, Xiangfei Kong, Lin Yang (2018). Efficient and robust cell detection: A structured regression approach. Medical Image Analysis. 44,245-254.
  17. Heba Mohsen, El-Sayed A. El-Dahshan, El-Sayed M. El-Horbaty, Abdel-Badeeh M. Salem (2018). Classification using deep learning neural networks for brain tumors. Future Computing and Informatics Journal. 3(1), 68-71.
  18. Saddam Hussain, Syed Muhammad Anwar, Muhammad Majid (2018). Segmentation of glioma tumors in brain using deep convolutional neural network. Neurocomputing. 282,248-261.
  19. Philipp Kickingereder, Fabian Isensee, Irada Tursunova, Jens Petersen, Klaus H Maier-Hein (2019). Automated quantitative tumour response assessment of MRI in neuro-oncology with artificial neural networks: a multicentre, retrospective study. The Lancet Oncology. 20(5),728-740.
  20. Rajesh Chandra, Kolasani Ramchand H. Rao (2016). Tumor Detection in Brain Using Genetic Algorithm. Procedia Computer Science. 79, 449-457.
  21. Muhammad Sharif, Javaria Amin, Mudassar Raza, Mussarat Yasmin, Suresh Chandra Satapathy (2020). An integrated design of particle swarm optimization (PSO) with fusion of features for detection of brain tumor. Pattern Recognition Letters. 129, 150-157.
  22. Rabab Hamed M. Aly, Kamel H. Rahouma, Hesham F. A. Hamed (2019). Brain Tumors Diagnosis and Prediction Based on Applying the Learning Metaheuristic Optimization Techniques of Particle Swarm, Ant Colony and Bee Colony. Procedia Computer Science. 163,165-179