ISSN: 2161-0460

Revista de enfermedad de Alzheimer y parkinsonismo

Acceso abierto

Nuestro grupo organiza más de 3000 Series de conferencias Eventos cada año en EE. UU., Europa y América. Asia con el apoyo de 1.000 sociedades científicas más y publica más de 700 Acceso abierto Revistas que contienen más de 50.000 personalidades eminentes, científicos de renombre como miembros del consejo editorial.

Revistas de acceso abierto que ganan más lectores y citas
700 revistas y 15 000 000 de lectores Cada revista obtiene más de 25 000 lectores

Indexado en
  • Índice Copérnico
  • Google Académico
  • sherpa romeo
  • Abrir puerta J
  • Revista GenámicaBuscar
  • Claves Académicas
  • TOC de revistas
  • Infraestructura Nacional del Conocimiento de China (CNKI)
  • Biblioteca de revistas electrónicas
  • Búsqueda de referencia
  • Universidad Hamdard
  • EBSCO AZ
  • OCLC-WorldCat
  • Catálogo en línea SWB
  • Biblioteca Virtual de Biología (vifabio)
  • publones
  • Fundación de Ginebra para la educación y la investigación médicas
  • Pub Europeo
  • ICMJE
Comparte esta página

Abstracto

Feature Extraction of the Alzheimer's Disease Images Using Different Optimization Algorithms

Mohamed M. Dessouky and Mohamed A. Elrashidy

Alzheimer’s disease (AD) is a type of dementia that causes problems with memory, thinking and behavior. The symptoms of the AD are usually developed slowly and got worse over time, till reach to severe enough stage which can’t interfere with daily tasks. This paper extract the most significant features from 3D MRI AD images using different optimization algorithms. Optimization algorithms are stochastic search methods that simulate the social behavior of species or the natural biological evolution. These algorithms had been used to get near-optimum solutions for large-scale optimization problems. This paper compares the formulation and results of five recent evolutionary optimization algorithms: Particle Swarm Optimization, Bat Algorithm, Genetic Algorithm, Pattern Search, and Simulated Annealing. A brief description of each of these five algorithms had been presented. These five optimization algorithm had been applied to two proposed AD feature extraction algorithms to get near-optimum number of features that gives higher accuracy. The comparisons among the algorithms are presented in terms of number of iteration, number of features and metric parameters. The results show that the Pattern Search optimization algorithm gives higher metric parameters values with lower number of iteration and lower number of features as compared to the other optimization algorithms.