Title
Robust integrated framework for effective feature selection and sample classification and its application to gene expression data analysis
Abstract
Genes are encoding regions that form essential building block within the cell and lead to proteins which are achieving various functions. However, some genes may be mutated due to internal or external factors and this is a main cause for various diseases. The latter case could be discovered by closely examining samples taken from patients to identify faulty genes. In other words, it is important to identify mutated genes as disease biomarkers. Then consider certain normal and infected samples to build a classifier model capable of successfully classifying new samples as infected or normal. The work described in this paper addresses this problem by introducing a comprehensive framework that incorporates the two stages of the process, namely feature selection and sample classification. In fact, high dimensionality in terms of the number of genes and small number of samples distinguishes gene expression data as an ideal application for the proposed framework. Reducing the dimensionality is essential to efficiently analysis the samples for effective knowledge discovery. Actually, there is a tradeoff between feature selection and maintaining acceptable accuracy. The target is to find the reduction level or compact set of features which once used for knowledge discovery will lead to improved performance and acceptable accuracy. For the first stage, we concentrate on four feature selection techniques, namely chi-square from statistics, frequent pattern mining and clustering from data mining, and community detection from network analysis. The effectiveness of the feature reduction techniques is demonstrated in the second stage by coupling them with classification techniques, namely associative classification, support vector machine and naive Bayesian classifier. Majority voting is applied for both stages. The results reported for four cancer datasets demonstrate the applicability and effectiveness of the proposed framework.
Year
DOI
Venue
2012
10.1109/CIBCB.2012.6217219
CIBCB
Keywords
Field
DocType
gene expression data analysis,feature reduction technique,feature selection,mutation,naive bayesian classifier,classifier model,statistics,bayes methods,disease biomarker,genetics,pattern classification,chisquare,proteins,dimensionality reduction,associative classification,chi-square method,svm,molecular biophysics,cancer,frequent pattern mining,feature extraction,support vector machine,gene expression data,data clustering,knowledge discovery,data mining,network analysis,classification,bioinformatics,community detection,support vector machines,associative classifier,clustering,entropy,gene expression,bayesian method,bayesian methods,biomarkers,majority voting
Data mining,Feature selection,Computer science,Artificial intelligence,Cluster analysis,Classifier (linguistics),Pattern recognition,Support vector machine,Curse of dimensionality,Feature extraction,Knowledge extraction,Machine learning,Bayesian probability
Conference
ISBN
Citations 
PageRank 
978-1-4673-1190-8
0
0.34
References 
Authors
11
13
Name
Order
Citations
PageRank
Shang Gao129159.33
Omar Addam2243.23
Ala Qabaja3184.39
Abdallah M. ElSheikh4302.26
Omar Zarour5202.76
Mohamad Nagi6352.90
Flouris Triant700.68
Wadhah Almansoori8272.30
Omer Sair900.34
Tansel Özyer1019623.30
Jia Zeng11537.43
Jon G. Rokne1226345.63
Reda Alhajj131919205.67