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A DSRPCL-SVM Approach to Informative Gene Analysis

机译:信息基因分析的DSRPCL-SVM方法

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摘要

Microarray data based tumor diagnosis is a very interesting topic in bioinformatics. One of the key problems is the discovery and analysis of informative genes of a tumor. Although there are many elaborate approaches to this problem, it is still difficult to select a reasonable set of informative genes for tumor diagnosis only with microarray data. In this paper, we classify the genes expressed through microarray data into a number of clusters via the distance sensitive rival penalized competitive learning (DSRPCL) algorithm and then detect the informative gene cluster or set with the help of support vector machine (SVM). Moreover, the critical or powerful informative genes can be found through further classifications and detections on the obtained informative gene clusters. It is well demonstrated by experiments on the colon, leukemia, and breast cancer datasets that our proposed DSRPCL-SVM approach leads to a reasonable selection of informative genes for tumor diagnosis.
机译:基于微阵列数据的肿瘤诊断是生物信息学中一个非常有趣的话题。关键问题之一是发现和分析肿瘤的信息基因。尽管有许多复杂的方法可以解决此问题,但仍然很难仅通过微阵列数据来选择一套合理的信息基因进行肿瘤诊断。在本文中,我们通过距离敏感竞争对手惩罚性竞争学习(DSRPCL)算法将通过微阵列数据表达的基因分为多个簇,然后检测信息性基因簇或借助支持向量机(SVM)进行设置。此外,可以通过对获得的信息基因簇进行进一步分类和检测,找到关键或功能强大的信息基因。在结肠癌,白血病和乳腺癌数据集上的实验已充分证明,我们提出的DSRPCL-SVM方法可为肿瘤诊断提供合理的信息基因选择。

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