Fusing Gene Interaction to Improve Disease Discrimination on Classification Analysis.

Ji-Gang Zhang, Jian Li, Wenlong Tang, Hong-Wen Deng
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Abstract

It is usually observed that among genes there exist strong statistical interactions associated with diseases of public health importance. Gene interactions can potentially contribute to the improvement of disease classification accuracy. Especially when gene expression differs across different classes are not great enough, it is more important to take use of gene interactions for disease classification analyses. However, most gene selection algorithms in classification analyses merely focus on genes whose expression levels show differences across classes, and ignore the discriminatory information from gene interactions. In this study, we develop a two-stage algorithm that can take gene interaction into account during a gene selection procedure. Its biggest advantage is that it can take advantage of discriminatory information from gene interactions as well as gene expression differences, by using "Bayes error" as a gene selection criterion. Using simulated and real microarray data sets, we demonstrate the ability of gene interactions for classification accuracy improvement, and present that the proposed algorithm can yield small informative sets of genes while leading to highly accurate classification results. Thus our study may give a novel sight for future gene selection algorithms of human diseases discrimination.

融合基因互作提高分类分析中的疾病识别。
通常观察到,基因之间存在着与具有公共卫生重要性的疾病相关的很强的统计相互作用。基因相互作用可能有助于提高疾病分类的准确性。特别是当不同类别的基因表达差异不够大时,利用基因相互作用进行疾病分类分析就显得尤为重要。然而,大多数分类分析中的基因选择算法只关注表达水平在类别间存在差异的基因,而忽略了基因相互作用带来的歧视性信息。在这项研究中,我们开发了一种两阶段算法,可以在基因选择过程中考虑基因相互作用。它最大的优点是利用基因相互作用和基因表达差异带来的歧视性信息,将“贝叶斯误差”作为基因选择的标准。通过模拟和真实的微阵列数据集,我们证明了基因相互作用提高分类精度的能力,并表明所提出的算法可以产生小信息量的基因集,同时导致高度准确的分类结果。因此,我们的研究可能为未来人类疾病识别的基因选择算法提供新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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