Gene selection for microarray data classification via multi-objective graph theoretic-based method

Rostami, Mehrdad, Forouzandeh, Saman, , Soltani, Mina, Shahsavari, Meisam, & Oussalah, Mourad (2022) Gene selection for microarray data classification via multi-objective graph theoretic-based method. Artificial Intelligence in Medicine, 123, Article number: 102228.

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Description

In recent decades, the improvement of computer technology has increased the growth of high-dimensional microarray data. Thus, data mining methods for DNA microarray data classification usually involve samples consisting of thousands of genes. One of the efficient strategies to solve this problem is gene selection, which improves the accuracy of microarray data classification and also decreases computational complexity. In this paper, a novel social network analysis-based gene selection approach is proposed. The proposed method has two main objectives of the relevance maximization and redundancy minimization of the selected genes. In this method, on each iteration, a maximum community is selected repetitively. Then among the existing genes in this community, the appropriate genes are selected by using the node centrality-based criterion. The reported results indicate that the developed gene selection algorithm while increasing the classification accuracy of microarray data, will also decrease the time complexity.

Impact and interest:

79 citations in Scopus
43 citations in Web of Science®
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ID Code: 239992
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
Additional Information: Funding Information: This work is supported by the Academy of Finland Profi5 (Project number 326291) on DigiHealth, which gratefully acknowledged.
Measurements or Duration: 13 pages
Keywords: Community detection, Feature selection, Gene selection, Microarray data classification, Multi-objective, Node centrality
DOI: 10.1016/j.artmed.2021.102228
ISSN: 0933-3657
Pure ID: 133280407
Divisions: Current > QUT Faculties and Divisions > Faculty of Science
Current > Schools > School of Computer Science
Funding Information: This work is supported by the Academy of Finland Profi5 (Project number 326291) on DigiHealth, which gratefully acknowledged.
Copyright Owner: 2021 The Authors
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Deposited On: 01 Jun 2023 05:24
Last Modified: 28 Jul 2024 08:46