Maker Gene Identification: a Multiple Kernel Support Vector Machine Approach
Recently, gene expression profiling using DNA microarray technique has been shown as a promising tool to improve the diagnosis and treatment of cancer. Support vector machine has been successfully used to classify cancer tissue based on gene expression data. Besides performance,the ability to discover underlying princioles will be a crucial point in the medical field In this paper, we present a novel marker gene identification method based on multiple kernel support vector machine (MK-SVM). The main strength of this technique is the detection of gene groups that are strongly associated with specific types of cancer and maybe useful to the diagnosis and treatment It achieves this by employing a two phases framework. Firstly, a 1-norm based regularized cost function is used to enforce sparsity and obtain gene subset. Secondly, a support vectors based rule extraction algorithm is implemented to determine the final marker genes. The ALL-AML Leukemia dataset is used to demonstrate the promising performance of this approach.
support vector machine rule extraction gene expression analysis feature selection
Zhenyu Chen Jianping Li Liwei Wei Zhenyu Chen Liwei Wei
Institute of Policy & Management Chinese Academy of Sciences Beijing 100080, China Graduate University of Chinese Academy of Sciences Chinese Academy of Sciences Beijing 100080, China
国际会议
武汉
英文
280-283
2007-07-06(万方平台首次上网日期,不代表论文的发表时间)