Abstract

A novel multi-classification method, which integrates the elastic net and probabilistic support vector machine, was proposed to solve this problem in cancer detection with gene expression profile data of platelets, whose problems mainly are a kind of multi-class classification problem with high dimension, small samples, and collinear data. The strategy of one-against-all (OVA) was employed to decompose the multi-classification problem into a series of binary classification problems. The elastic net was used to select class-specific features for the binary classification problems, and the probabilistic support vector machine was used to make the outputs of the binary classifiers with class-specific features comparable. Simulation data and gene expression profile data were intended to verify the effectiveness of the proposed method. Results indicate that the proposed method can automatically select class-specific features and obtain better performance of classification than that of the conventional multi-class classification methods, which are mainly based on global feature selection methods. This study indicates the proposed method is suitable for general multi-classification problems featured with high-dimension, small samples, and collinear data.

Highlights

  • Cancer detection plays a vital role in improving the survival rate and living quality of patients

  • It was focused on the problem of how to use the class-specific feature selection method to enhance the performance of the classification algorithm in cancer detection with gene expression profile data

  • This paper proposed a new idea that embedding elastic net in classifiers for solving the problem of detecting cancer using tumor-educated platelets dataset

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Summary

Introduction

Cancer detection plays a vital role in improving the survival rate and living quality of patients. The multi-class classification algorithm proposed on the basis of class-specific features is more complex than that based on the global features, and that how to fuse the outputs of the binary classifiers based on the class-specific features to get the final classification result of the initial multi-classification problem is an ongoing concern In this study, it was focused on the problem of how to use the class-specific feature selection method to enhance the performance of the classification algorithm in cancer detection with gene expression profile data. It was focused on the problem of how to use the class-specific feature selection method to enhance the performance of the classification algorithm in cancer detection with gene expression profile data In this work, it was presented a new multi-class classification algorithm, which integrates the elastic net and probabilistic support vector machine.

Support Vector Machine and Probabilistic Support Vector Machine
Feature Selection Methods
Relieff Algorithm
SVM-RFE
Elastic Net
The Proposed Method of Embedding Elastic Net in PSVM
Experiments
Simulation Data
Platelets Data for Cancer Detection
Microarray Data for Cancer Detection
Parameter
Simulation
Cancer
Methods
Conclusions
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