Litcius/Paper detail

Hybrid Feature Selection of Breast Cancer Gene Expression Microarray Data Based on Metaheuristic Methods: A Comprehensive Review

Nursabillilah Mohd Ali, Rosli Besar, Nor Azlina Ab. Aziz

2022Symmetry23 citationsDOIOpen Access PDF

Abstract

Breast cancer (BC) remains the most dominant cancer among women worldwide. Numerous BC gene expression microarray-based studies have been employed in cancer classification and prognosis. The availability of gene expression microarray data together with advanced classification methods has enabled accurate and precise classification. Nevertheless, the microarray datasets suffer from a large number of gene expression levels, limited sample size, and irrelevant features. Additionally, datasets are often asymmetrical, where the number of samples from different classes is not balanced. These limitations make it difficult to determine the actual features that contribute to the existence of cancer classification in the gene expression profiles. Various accurate feature selection methods exist, and they are being widely applied. The objective of feature selection is to search for a relevant, discriminant feature subset from the basic feature space. In this review, we aim to compile and review the latest hybrid feature selection methods based on bio-inspired metaheuristic methods and wrapper methods for the classification of BC and other types of cancer.

Topics & Concepts

Feature selectionMicroarray analysis techniquesBreast cancerFeature (linguistics)Computer scienceMicroarraySelection (genetic algorithm)Linear discriminant analysisDNA microarrayMicroarray databasesComputational biologyCancerArtificial intelligenceData miningPattern recognition (psychology)BiologyGeneGene expressionGeneticsLinguisticsPhilosophyGene expression and cancer classificationAdvanced Biosensing Techniques and ApplicationsBioinformatics and Genomic Networks
Hybrid Feature Selection of Breast Cancer Gene Expression Microarray Data Based on Metaheuristic Methods: A Comprehensive Review | Litcius