A Gene Selection Algorithm for Microarray Cancer Classification Using an improved Particle Swarm Optimization
Author:
Affiliation:
1. Lahore Garrison University
2. University of Vaasa
3. Bakhtar University
4. University of Central Punjab Pakistan
Abstract
Gene selection is an essential step for the classification of microarray cancer data. Gene expression cancer data (DNA microarray) facilitates computing the robust and concurrent expression of various genes. Particle swarm optimization (PSO) requires simple operators and less number of parameters for tuning the model in gene selection. The selection of a prognostic gene with small redundancy is a great challenge for the researcher as there are a few complications in PSO based selection method. In this research, a new variant of PSO (Self-inertia weight adaptive PSO) has been proposed. In the proposed algorithm, SIW-APSO-ELM is explored to achieve gene selection prediction accuracies. This novel algorithm establishes a balance between the exploitation and exploration capabilities of the improved inertia weight adaptive particle swarm optimization. The self-inertia weight adaptive particle swarm optimization (SIW-APSO) algorithm is employed for solution explorations. Each particle in the SIW-APSO increases its position and velocity iteratively through an evolutionary process. The extreme learning machine (ELM) has been designed for the selection procedure. The proposed method has been to identify several genes in the cancer dataset. The classification algorithm contains ELM, K- centroid nearest neighbor (KCNN), and support vector machine (SVM) to attain high forecast accuracy as compared to the start-of-the-art methods on microarray cancer datasets that show the effectiveness of the proposed method.
Publisher
Springer Science and Business Media LLC
Reference41 articles.
1. 1. E. Alba, J. García-Nieto, L. Jourdan, E.-G. Talbi, Gene selection in cancer classification using PSO/SVM and GA/SVM hybrid algorithms, Evolutionary Computation, 2007. CEC 2007. IEEE Congress on, IEEE, 2007, pp. 284–290.
2. 2. Kasperski, Andrzej. "Life Entrapped in a Network of Atavistic Attractors: How to Find a Rescue." International Journal of Molecular Sciences 23.7 (2022): 4017.
3. 3. Nadimi-Shahraki, Mohammad H., Hoda Zamani, and Seyedali Mirjalili. "Enhanced whale optimization algorithm for medical feature selection: A COVID-19 case study." Computers in Biology and Medicine 148 (2022): 105858.
4. 4. Zamani, H., Nadimi-Shahraki, M. H., & Gandomi, A. H. (2021). QANA: Quantum-based avian navigation optimizer algorithm. Engineering Applications of Artificial Intelligence, 104, 104314.
5. 5. Mundra PA, Rajapakse JC. Gene and sample selection for cancer classification with support vectors based t-statistic. Neurocomputing. 2010;73:2353–62.
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