用于微阵列分类和基因集选择的网络核支持向量机

Bing Yang, Junyan Tan, N. Deng, Ling Jing
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摘要

越来越多的人认识到基于网络的方法识别生物标记物的重要性。大量文献表明,在生物过程中,网络中的基因倾向于共同作用,因此充分利用生物观察可以提高微阵列分类的性能。然而,许多支持向量机方法在构建分类器时并没有考虑到这种情况。本文的主要思想是将基因网络的信息嵌入到一个新的支持向量机学习框架中。基于一种新的正则化方法,提出了一种用于二值分类和基因集选择的网络核支持向量机(NK-SVM)方法。新的NK-SVM方法利用基因网络的先验信息构造特定的核矩阵,使同一集合中的基因一起被选择(或淘汰)。实际微阵列应用的数值实验表明,该方法在基因集选择方面具有较好的性能。
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Network Kernel SVM for microarray classification and gene sets selection
The importance of network-based approach to identifying biological markers has been increasingly recognized. Lots of papers indicated that genes in a network tend to function together in biological processes, so taking full advantage of the biological observation can improve the performance of microarray classification. However, lots of SVM methods don't consider this situation during their classifier building. The main idea of this paper intends to embed the information of gene networks into a new SVM learning framework. Based on a new regularization, we propose a novel method, Network Kernel SVM (NK-SVM), for binary classification problem and gene sets selection. By constructing some special kernel matrixes from the prior information of gene network, the new NK-SVM method makes the genes in the same set to be selected (or eliminated) together. The numerical experiments on a real microarray application show that the proposed method tends to provide a better performance than other methods on gene sets selection.
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