Fuzzy Gene Selection and Cancer Classification Based on Deep Learning Model
Mahmood Khalsan, Mu Mu, Eman Salih Al-Shamery, Lee Machado, Suraj, Ajit, Michael Opoku Agyeman

TL;DR
This paper introduces a fuzzy gene selection technique combined with deep learning to improve cancer classification accuracy using high-dimensional gene expression data, outperforming standard methods.
Contribution
The study presents a novel fuzzy gene selection method that enhances deep learning models for cancer classification, reducing dimensionality and increasing accuracy.
Findings
Achieved over 95% accuracy in cancer classification.
Significantly outperformed standard MLP methods.
Effective across multiple gene expression datasets.
Abstract
Machine learning (ML) approaches have been used to develop highly accurate and efficient applications in many fields including bio-medical science. However, even with advanced ML techniques, cancer classification using gene expression data is still complicated because of the high dimensionality of the datasets employed. We developed a new fuzzy gene selection technique (FGS) to identify informative genes to facilitate cancer classification and reduce the dimensionality of the available gene expression data. Three feature selection methods (Mutual Information, F-ClassIf, and Chi-squared) were evaluated and employed to obtain the score and rank for each gene. Then, using Fuzzification and Defuzzification methods to obtain the best single score for each gene, which aids in the identification of significant genes. Our study applied the fuzzy measures to six gene expression datasets…
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Taxonomy
TopicsGene expression and cancer classification · Machine Learning in Bioinformatics · Face and Expression Recognition
MethodsFeature Selection
