INVESTIGADORES
VIDAL Pablo Javier
artículos
Título:
A Memetic Cellular Genetic Algorithm for Cancer Data Microarray Feature Selection
Autor/es:
ROJAS, MATIAS GABRIEL; CARBALLIDO, JESSICA ANDREA; OLIVERA, ANA CAROLINA ; VIDAL, PABLO JAVIER
Revista:
IEEE LATIN AMERICA TRANSACTIONS
Editorial:
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Referencias:
Lugar: New York; Año: 2020 vol. 18
ISSN:
1548-0992
Resumen:
Gene selection aims at identifying a -small- subset of informative genes from the initial data to obtain high predictive accuracy for classification in human cancers. Gene selection can be considered as a combinatorial search problem and thus can be conveniently handled with optimization methods. hl{This paper proposes a Memetic Cellular Genetic Algorithm (MCGA) to solve the Feature Selection problem of cancer microarray datasets.} Benchmark gene expression datasets, i.e., colon, lymphoma, and leukaemia available in the literature were used for experimentation. MCGA is compared with other well-known metaheuristic´ strategies. The results demonstrate that our proposal can provide efficient solutions to find a minimal subset of the genes.