Title of article
Gene Selection via a New Hybrid Ant Colony Optimization Algorithm for Cancer Classification in High-Dimensional Data
Author/Authors
Bir-Jmel, Ahmed Department of Mathematics - Faculty of Sciences - Mohammed V University - Rabat, Morocco , Douiri, Sidi Mohamed Department of Mathematics - Faculty of Sciences - Mohammed V University - Rabat, Morocco , Elbernoussi, Souad Department of Mathematics - Faculty of Sciences - Mohammed V University - Rabat, Morocco
Pages
20
From page
1
To page
20
Abstract
The recent advance in the microarray data analysis makes it easy to simultaneously measure the expression levels of several
thousand genes. These levels can be used to distinguish cancerous tissues from normal ones. In this work, we are interested in gene
expression data dimension reduction for cancer classification, which is a common task in most microarray data analysis studies.
This reduction has an essential role in enhancing the accuracy of the classification task and helping biologists accurately predict
cancer in the body; this is carried out by selecting a small subset of relevant genes and eliminating the redundant or noisy genes. In
this context, we propose a hybrid approach (MWIS-ACO-LS) for the gene selection problem, based on the combination of a new
graph-based approach for gene selection (MWIS), in which we seek to minimize the redundancy between genes by considering the
correlation between the latter and maximize gene-ranking (Fisher) scores, and a modified ACO coupled with a local search (LS)
algorithm using the classifier 1NN for measuring the quality of the candidate subsets. In order to evaluate the proposed method,
we tested MWIS-ACO-LS on ten well-replicated microarray datasets of high dimensions varying from 2308 to 12600 genes. The
experimental results based on ten high-dimensional microarray classification problems demonstrated the effectiveness of our
proposed method.
Keywords
MWIS-ACO-LS , Hybrid , High-Dimensional
Journal title
Computational and Mathematical Methods in Medicine
Serial Year
2019
Full Text URL
Record number
2611516
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