Litcius/Paper detail

Feature Selection From Gene Expression Data Using Simulated Annealing and Partial Least Squares Regression Coefficients

Nimrita Koul, Sunilkumar S. Manvi

2022Global Transitions Proceedings18 citationsDOIOpen Access PDF

Abstract

Accurate characterization of the molecular nature of a tumour is important for its effective treatment. Therefore, the classification of tumours is an important research problem. The application of data science and machine learning techniques to the gene-expression data has enabled computational researchers to separate the gene-expression samples into different classes based on the difference in gene-expression patterns. This has also facilitated the discovery of new classes and new disease biomarkers. However, gene-expression data is very high-dimensional and noisy. The number of features is high in comparison to the number of samples. The classes in the data are often imbalanced. Out of thousands of genes, only a few are relevant to the disease. The machine learning approaches for the classification of gene-expression samples need to address all these issues to obtain reliable performance. This paper proposed a method using simulated annealing and partial least squares regression for gene selection from six open-source microarray cancer gene-expression datasets. Selected subset of genes was used to fit support-vector machines, random-forest, voting-classifiers, and multilayer-perceptron classifiers. A comparison with existing methods shows the superior performance of the proposed method.

Topics & Concepts

Support vector machineRandom forestFeature selectionComputer sciencePartial least squares regressionGene selectionRegressionSimulated annealingMachine learningArtificial intelligenceMultilayer perceptronMicroarray analysis techniquesData miningElastic net regularizationGenePattern recognition (psychology)Computational biologyGene expressionBiologyMathematicsArtificial neural networkStatisticsGeneticsGene expression and cancer classificationEvolutionary Algorithms and ApplicationsMolecular Biology Techniques and Applications