The Effect of Different Classifiers on Recursive Cluster Elimination in the Analysis of Transcriptomic Data
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Abstract
Gene expression data with limited sample size and a large number of genes are frequently encountered in genetic studies. In such high-dimensional data, identification of genes that distinguish between disease states is a challenging task. Feature selection (FS) is a useful approach in dealing with high dimensionality. Support Vector Machines Recursive Cluster Elimination (SVM-RCE) is a technique for FS in high-dimensional data. The SVM-RCE approach has been utilized for identification of clusters of genes whose expression levels correlate with pathological state. A key step in SVM-RCE is the use of an SVM classifier to assign an area under the curve (AUC) score to each gene cluster based on its ability to predict class labels. In this study, we investigate the use of alternative classifiers in the cluster-scoring step. Specifically, we compare Support Vector Machines, Random Forest, XgBoost, Naive Bayes, and linear logistic regression. In addition to AUC score performance evaluation, the algorithms are compared in terms of the number of selected genes at different levels of clustering and in terms of the running time. © 2023 Elsevier B.V., All rights reserved.
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Clustering, Feature Selection, Gene Expression Data Analysis, Recursive Cluster Elimination, Clustering Algorithms, Feature Selection, Gene Expression, Logistic Regression, Areas Under The Curves, Clusterings, Features Selection, Gene Expression Data, Gene Expression Data Analysis, High Dimensional Data, Recursive Cluster Elimination, Sample Sizes, Support Vectors Machine, Transcriptomics, Support Vector Machines
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