A genetic algorithm for prediction of RNA-seq malaria vector gene expression data classification using SVM kernels
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Bulletin of Electrical Engineering and Informatics
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Abstract
Malaria larvae embrace unpredictable variable life periods as they spread
across many stratospheres of the mosquito vectors. There are transcriptomes
of a thousand distinct species. Ribonucleic acid sequencing (RNA-seq) is a
ubiquitous gene expression strategy that contributes to the improvement of
genetic survey recognition. RNA-seq measures gene expression transcripts
data, including methodological enhancements to machine learning procedures.
Scientists have suggested many addressed learning for the study of biological
evidence. An enhanced optimized Genetic Algorithm feature selection
technique is used in this analysis to obtain relevant information from a highdimensional Anopheles gambiae dataset and test its classification using SVMKernel algorithms. The efficacy of this assay is tested, and the outcome of the
experiment obtained an accuracy metric of 93% and 96% respectively.