Title
Recursive SVM feature selection and sample classification for mass-spectrometry and microarray data.
Abstract
Like microarray-based investigations, high-throughput proteomics techniques require machine learning algorithms to identify biomarkers that are informative for biological classification problems. Feature selection and classification algorithms need to be robust to noise and outliers in the data.We developed a recursive support vector machine (R-SVM) algorithm to select important genes/biomarkers for the classification of noisy data. We compared its performance to a similar, state-of-the-art method (SVM recursive feature elimination or SVM-RFE), paying special attention to the ability of recovering the true informative genes/biomarkers and the robustness to outliers in the data. Simulation experiments show that a 5%- approximately 20% improvement over SVM-RFE can be achieved regard to these properties. The SVM-based methods are also compared with a conventional univariate method and their respective strengths and weaknesses are discussed. R-SVM was applied to two sets of SELDI-TOF-MS proteomics data, one from a human breast cancer study and the other from a study on rat liver cirrhosis. Important biomarkers found by the algorithm were validated by follow-up biological experiments.The proposed R-SVM method is suitable for analyzing noisy high-throughput proteomics and microarray data and it outperforms SVM-RFE in the robustness to noise and in the ability to recover informative features. The multivariate SVM-based method outperforms the univariate method in the classification performance, but univariate methods can reveal more of the differentially expressed features especially when there are correlations between the features.
Year
DOI
Venue
2006
10.1186/1471-2105-7-197
BMC Bioinformatics
Keywords
Field
DocType
support vector machine,breast cancer,proteome,feature selection,microarray data,gene expression profiling,bioinformatics,high throughput,algorithms,machine learning,simulation experiment,microarrays,cluster analysis,mass spectrometry,artificial intelligence
Feature selection,Computer science,Multivariate statistics,Support vector machine,Outlier,Robustness (computer science),Artificial intelligence,Bioinformatics,Univariate,Statistical classification,DNA microarray,Machine learning
Journal
Volume
Issue
ISSN
7
1
1471-2105
Citations 
PageRank 
References 
83
3.09
10
Authors
10
Name
Order
Citations
PageRank
Xuegong Zhang170451.44
Xin Lu2833.09
Qian Shi3833.09
Xiu-Qin Xu4833.09
Hon-Chiu E Leung5833.09
Lyndsay N Harris6833.43
James D Iglehart7833.09
Alexander Miron8833.09
Jun S Liu924614.98
Wing Hung Wong1060796.45