Litcius/Paper detail

Gene selection via improved nuclear reaction optimization algorithm for cancer classification in high-dimensional data

Amr A. Abd El-Mageed, Ahmed E. Elkhouli, Amr A. Abohany, Mona Gafar

2024Journal Of Big Data12 citationsDOIOpen Access PDF

Abstract

Abstract RNA Sequencing (RNA-Seq) has been considered a revolutionary technique in gene profiling and quantification. It offers a comprehensive view of the transcriptome, making it a more expansive technique in comparison with micro-array. Genes that discriminate malignancy and normal can be deduced using quantitative gene expression. However, this data is a high-dimensional dense matrix; each sample has a dimension of more than 20,000 genes. Dealing with this data poses challenges. This paper proposes RBNRO-DE (Relief Binary NRO based on Differential Evolution) for handling the gene selection strategy on (rnaseqv2 illuminahiseq rnaseqv2 un edu Level 3 RSEM genes normalized) with more than 20,000 genes to pick the best informative genes and assess them through 22 cancer datasets. The k -nearest Neighbor ( k -NN) and Support Vector Machine (SVM) are applied to assess the quality of the selected genes. Binary versions of the most common meta-heuristic algorithms have been compared with the proposed RBNRO-DE algorithm. In most of the 22 cancer datasets, the RBNRO-DE algorithm based on k -NN and SVM classifiers achieved optimal convergence and classification accuracy up to 100% integrated with a feature reduction size down to 98%, which is very evident when compared to its counterparts, according to Wilcoxon’s rank-sum test (5% significance level).

Topics & Concepts

Computer scienceSelection (genetic algorithm)Computational Science and EngineeringGene selectionAlgorithmData miningMachine learningGeneGeneticsBiologyGene expressionMicroarray analysis techniquesGene expression and cancer classificationMachine Learning in BioinformaticsGenetics, Bioinformatics, and Biomedical Research