Analyzing COVID-19 virus based on enhanced fragmented biological Local Aligner using improved Ions Motion Optimization algorithm

Faculty Engineering Year: 2020
Type of Publication: ZU Hosted Pages:
Authors:
Journal: Applied Soft Computing Elsevier Volume:
Keywords : Analyzing COVID-19 virus based , enhanced fragmented    
Abstract:
SARS-CoV-2 (COVID-19) virus is a havoc pandemic that infects millions of people over the world and thousands of infected cases dead. So, it is vital to propose new intelligent data analysis tools and enhance the existed ones to aid scientists in analyzing the COVID-19 virus. Fragmented Local Aligner Technique (FLAT) is a data analysis tool that is used for detecting the longest common consecutive subsequence (LCCS) between a pair of biological data sequences. FLAT is an aligner tool that can be used to find the LCCS between COVID-19 virus and other viruses to help in other biochemistry and biological operations. In this study, the enhancement of FLAT based on modified Ions Motion Optimization (IMO) is developed to produce acceptable LCCS with efficient performance in a reasonable time. The proposed method was tested to find the LCCS between Orflab poly-protein and surface glycoprotein of COVID-19 and other viruses. The experimental results demonstrate that the proposed model succeeded in producing the best LCCS against other algorithms using real LCCS measured by the SW algorithm as a reference.
   
     
 
       

Author Related Publications

  • Mohammed Alsayed MohamedAli, "PID Controller Tuning Parameters Using Meta-heuristics Algorithms: Comparative Analysis", Springer, Cham, 2018 More
  • Mohammed Alsayed MohamedAli, "Digital Image Watermarking Performance Improvement using Bio-inspired Algorithms", Springer, 2018 More
  • Mohammed Alsayed MohamedAli, "ASCA-PSO: Adaptive sine cosine optimization algorithm integrated with particle swarm for pairwise local sequence alignment", Elsevier, 2018 More
  • Mohammed Alsayed MohamedAli, "A novel reinforcement learning-based reptile search algorithm for solving optimization problems", Springer, 2023 More
  • Mohammed Alsayed MohamedAli, "Two Layer Hybrid Scheme of IMO and PSO for Optimization of Local Aligner: COVID-19 as a Case Study", Springer, 2021 More

Department Related Publications

  • Mohammed Alsayed MohamedAli, "Two Layer Hybrid Scheme of IMO and PSO for Optimization of Local Aligner: COVID-19 as a Case Study", Springer, 2021 More
  • Ahmed Mohamed Helmy Elsadiek, "Two Layer Hybrid Scheme of IMO and PSO for Optimization of Local Aligner: COVID-19 as a Case Study", Springer, 2021 More
  • Ahmed Mohamed Helmy Elsadiek, "A Novel Hybrid Gradient-Based Optimizer and Grey Wolf Optimizer Feature Selection Method for Human Activity Recognition Using Smartphone Sensors", Multidisciplinary Digital Publishing Institute, 2021 More
  • Ibrahiem Elsayed Mohamed Zedan, "An Efficient Convolutional Neural Network Classification Model for Several Sign Language Alphabets", (The Science and Information Organization (SAI, 2023 More
  • Amro Ahmed Ismail Morsy , "An Efficient Convolutional Neural Network Classification Model for Several Sign Language Alphabets", (The Science and Information Organization (SAI, 2023 More
Tweet