TY - JOUR ID - 22627 TI - A Modified Metaheuristic Algorithm Integrated ELM model for Cancer Classification JO - Scientia Iranica JA - SCI LA - en SN - 1026-3098 AU - Debata, P. Paramita AU - Mohapatra, P. AD - Department of Computer Science and Engineering, International Institute of Information Technology Bhubaneswar, Odisha, India, 751019 Y1 - 2022 PY - 2022 VL - 29 IS - 2 SP - 613 EP - 631 KW - Self-adaptive multi-population-based Elite Jaya algorithm KW - extreme learning machine KW - Functional Link Artificial Neural Network KW - classification model DO - 10.24200/sci.2022.56265.4630 N2 - Background: In the rapidly defiled environment, cancer has emerged out as the most threatening disease to human species. Therefore, a robust classification model is required to diagnose cancer with high accuracy and less computational complexity.Method: Here, random parameters of Extreme Learning Machine (ELM) are optimized by Self Adaptive Multi-Population-based Elite strategy Jaya (SAMPEJ) algorithm. This strategy constructs a robust ELM classifier named as SAMPEJ-ELM model. This model is tested on Breast cancer, Cervical cancer and Lung cancer datasets. Here, a comparative analysis is presented between the proposed model and basic ELM, Jaya optimized ELM (Jaya-ELM), Teaching Learning Based Optimization (TLBO) optimized ELM (TLBO-ELM), SAMPEJ optimized Neural Network (SAMPEJ-NN), SAMPEJ optimized Functional Link Artificial Neural Network (SAMPEJ-FLANN) models. Numerous performance metrices viz. accuracy, specificity, Gmean, sensitivity, F-score with receiver operating characteristic (ROC) curve are used to estimate the proposed model. Moreover, this model is compared with eleven existing models.Results: SAMPEJ-ELM model resulted the highest degree of accuracy, sensitivity and specificity in Breast Cancer (.9895, 1, .9853), Cervical Cancer (.9822, .9948, .9828), Lung cancer (.9787, 1, 1) datasets. Conclusion: The experimental results reveal that SAMPEJ-ELM model classifies both the positive and negative samples of cancer datasets significantly better than others. UR - https://scientiairanica.sharif.edu/article_22627.html L1 - https://scientiairanica.sharif.edu/article_22627_e923c4ff8aad2aaaba557195db0f8e7c.pdf ER -