基因表达分析中基于互信息的数据挖掘降维方法

V. Marohnic, Z. Debeljak, N. Bogunovic
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引用次数: 5

摘要

本文介绍了一种降低基因微阵列分析中常见分类问题维数复杂度的新方法。在数千个被分析的基因中揭示最相关的基因子集对于获得准确的疾病分类是必要的。属性(基因)过滤器就是为此目的而开发的。该滤波器首先作为互信息特征选择(MIPS)引入,在留一环(LOO)中与支持向量机(SVM)分类器相结合,形成了一种高效可靠的MIFS/SVM混合工具。由两种白血病类型组成的基因微阵列集被用作基准。其他人对这一组进行了彻底的分析。因此,用它来测试基于MIFS/SVM混合滤波的精度是合适的
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Mutual information based reduction of data mining dimensionality in gene expression analysis
This article introduces a novel method for reducing dimensional complexity of classification problems which are frequently present in gene microarray analysis. Revealing the most relevant subset of genes among few thousands of analyzed genes is necessary to get accurate disease classification. Attribute (gene) filter was developed for such a purpose. The filter, first introduced as mutual information feature selection (MIPS) was coupled with the support vector machines (SVM) classifier in the leave-one-out (LOO) loop, which resulted in an efficient and reliable tool named MIFS/SVM hybrid. The set of gene microarrays, which consists of two leukemia types, was used as a benchmark. That particular set was thoroughly analyzed by others. Hence, it was appropriate to use it for testing the accuracy of MIFS/SVM hybrid based filter
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