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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >DISCOVERY OF HIGHLY DIFFERENTIATIVE GENE GROUPS FROM MICROARRAY GENE EXPRESSION DATA USING THE GENE CLUB APPROACH
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DISCOVERY OF HIGHLY DIFFERENTIATIVE GENE GROUPS FROM MICROARRAY GENE EXPRESSION DATA USING THE GENE CLUB APPROACH

机译:利用基因俱乐部方法从微阵列基因表达数据中发现高分化基因组

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摘要

Motivation: It is commonly believed that suitable analysis of microarray gene expression profile data can lead to better understanding of diseases, and better ways to diagnose and treat diseases. To achieve those goals, it is of interest to discover the gene interaction networks, and perhaps even pathways, underlying given diseases from such data. In this paper, we consider methods for efficiently discovering highly differentiative gene groups (HDGG), which may provide insights on gene interaction networks. HDGGs are groups of genes which completely or nearly completely characterize the diseased or normal tissues. Discovering HDGGs is challenging, due to the high dimensionality of the data. Results: Our methods are based on the novel concept of gene clubs. A gene club consists of a set of genes having high potential to be interactive with each other. The methods can (i) efficiently discover signature HDGGs which completely characterize the diseased and the normal tissues respectively, (ii) find strongest or near strongest HDGGs containing any given gene, and (iii) find much stronger HDGGs than previous methods. As part of the experimental evaluation, the methods are applied to colon, prostate, ovarian, and breast cancer, and leukemia and so on. Some of the genes in the extracted signature HDGGs have known biological functions, and some have attracted little attention in biology and medicine. We hope that appropriate study on them can lead to medical breakthroughs. Some HDGGs for colon and prostate cancers are listed here. The website listed below contains HDGGs for the other cancers. Availability: HDGG is implemented in C++ and runs on Unix or Windows platform. The code is available at: http://www.cs.wright.edu/~gdong/hdgg/.
机译:动机:人们普遍认为,对微阵列基因表达谱数据进行适当的分析,可以使人们更好地了解疾病,以及更好地诊断和治疗疾病。为了实现这些目标,从此类数据中发现特定疾病的基因相互作用网络,甚至可能是途径是很有意义的。在本文中,我们考虑了有效发现高分化基因组(HDGG)的方法,这些方法可能会提供有关基因相互作用网络的见识。 HDGG是完全或几乎完全表征患病或正常组织的基因组。由于数据的高维度,发现HDGG具有挑战性。结果:我们的方法基于基因俱乐部的新概念。一个基因俱乐部由一组具有高度相互作用潜力的基因组成。该方法可以(i)有效地发现分别完全表征​​患病组织和正常组织的特征性HDGGs,(ii)发现含有任何给定基因的最强或接近最强的HDGGs,以及(iii)发现比以前的方法强得多的HDGGs。作为实验评估的一部分,这些方法适用于结肠癌,前列腺癌,卵巢癌和乳腺癌以及白血病等。提取的特征性HDGGs中的某些基因具有已知的生物学功能,而某些基因在生物学和医学上却很少受到关注。我们希望对它们进行适当的研究可以带来医学上的突破。此处列出了一些结肠癌和前列腺癌的HDGG。下面列出的网站包含其他癌症的HDGG。可用性:HDGG以C ++实现,并在Unix或Windows平台上运行。该代码可从以下网站获得:http://www.cs.wright.edu/~gdong/hdgg/。

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