Authors
Matías Gabriel Rojas, Ana Carolina Olivera, Jessica Andrea Carballido, Pablo Javier Vidal
Publication date
2023/2/1
Journal
Intelligent Systems with Applications
Volume
17
Pages
200173
Publisher
Elsevier
Description
Fast and precise medical diagnosis of human cancer is crucial for treatment decisions. Gene selection consists of identifying a set of informative genes from microarray data to allow high predictive accuracy in human cancer classification. This task is a combinatorial search problem, and optimisation methods can be applied for its resolution. In this paper, two memetic micro-genetic algorithms (MμV1 and MμV2) with different hybridisation approaches are proposed for feature selection of cancer microarray data. Seven gene expression datasets are used for experimentation. The comparison with stochastic state-of-the-art optimisation techniques concludes that problem-dependent local search methods combined with micro-genetic algorithms improve feature selection of cancer microarray data.
Total citations
2023202441
Scholar articles
MG Rojas, AC Olivera, JA Carballido, PJ Vidal - Intelligent Systems with Applications, 2023