Abstract

The application of gene expression data to the diagnosis and classification of cancer has become a hot issue in the field of cancer classification. Gene expression data usually contains a large number of tumor-free data and has the characteristics of high dimensions. In order to select determinant genes related to breast cancer from the initial gene expression data, we propose a new feature selection method, namely, support vector machine based on recursive feature elimination and parameter optimization (SVM-RFE-PO). The grid search (GS) algorithm, the particle swarm optimization (PSO) algorithm, and the genetic algorithm (GA) are applied to search the optimal parameters in the feature selection process. Herein, the new feature selection method contains three kinds of algorithms: support vector machine based on recursive feature elimination and grid search (SVM-RFE-GS), support vector machine based on recursive feature elimination and particle swarm optimization (SVM-RFE-PSO), and support vector machine based on recursive feature elimination and genetic algorithm (SVM-RFE-GA). Then the selected optimal feature subsets are used to train the SVM classifier for cancer classification. We also use random forest feature selection (RFFS), random forest feature selection and grid search (RFFS-GS), and minimal redundancy maximal relevance (mRMR) algorithm as feature selection methods to compare the effects of the SVM-RFE-PO algorithm. The results showed that the feature subset obtained by feature selection using SVM-RFE-PSO algorithm results has a better prediction performance of Area Under Curve (AUC) in the testing data set. This algorithm not only is time-saving, but also is capable of extracting more representative and useful genes.

Highlights

  • Cancer has become the main cause of morbidity and mortality worldwide, due to population growth, aging, and the spread of risk factors such as tobacco, obesity, and infection, which will worsen in the decade, in which breast cancer is the most common cancer, especially in women [1,2,3,4,5,6,7,8]

  • The idea of parameter optimization is introduced by improving the algorithm in the feature elimination stage, and the optimal classification parameters are found and the optimal classification model is obtained by selecting different parameter optimization methods

  • We developed an integrated method in the early detection of breast cancer

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Summary

Introduction

Cancer has become the main cause of morbidity and mortality worldwide, due to population growth, aging, and the spread of risk factors such as tobacco, obesity, and infection, which will worsen in the decade, in which breast cancer is the most common cancer, especially in women [1,2,3,4,5,6,7,8]. The treatment of breast cancer is seriously lagging behind. The generation and development of tumor are closely related to genes, and, from gene level to cancer diagnosis, can be detected by the gene [14,15,16,17,18]. As a method of early prediction and risk assessment, machine learning can reduce the incidence of cancer in a simpler and more effective way, thereby reducing the pain of patients and improving the quality of human life. The prediction of breast cancer genes is still critical, BioMed Research International which can improve breast cancer prediction, interfere with the treatment as soon as possible, and reduce the incidence of breast cancer, thereby further improving the quality of human life

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