K4. Gene network construction and pathways analysis for high throughput microarrays

N. A. Samee, N. Solouma, Y. Kadah
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引用次数: 4

Abstract

The key idea discussed in this paper is to infer gene regulatory network from high throughput microarray data for Hepatocellular Carcinoma (HCC). Working with such huge number of genes is a complex process. So, our framework for inferring gene interactions from large scale microarrays is based on a selected set of informative genes. We applied two measures of dependencies between genes: Correlation and mutual information. Therefore, two types of networks were constructed: Co-expression network and Mutual information network. Some Mutual information network inference algorithms: Context Likelihood of Relatedness (CLR), Algorithm for the Reconstruction of Accurate Cellular Networks (ARACNE), and Minimum Redundancy Network (MRNET) were applied. A proposed method for simplifying the complex structure of the inferred network is introduced using the Minimum Spanning Tree (MST) which provides a better visual interpretation of the constructed networks. From the constructed networks we were able to identify a set of functional gene modules. These modules were validated using the Gene Ontology (GO) enrichment. The GO enrichment analysis has proven the strength of the ARACNE inference algorithm over all other employed algorithms. Moreover, a comparison was carried out between the Mutual information network inference and the well known Bayesian inference. To establish this comparison, specific pathways in HCC were rather chosen. These pathways were tested for their significance using singular value decomposition. According to this comparison, again the ARACNE showed better results.
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K4。高通量微阵列基因网络构建及通路分析
本文讨论的关键思想是从肝细胞癌(HCC)的高通量微阵列数据中推断基因调控网络。处理如此大量的基因是一个复杂的过程。因此,我们从大规模微阵列推断基因相互作用的框架是基于一组选定的信息基因。我们采用了两种方法来衡量基因之间的依赖关系:相关性和互信息。因此,我们构建了两种类型的网络:共表达网络和互信息网络。应用了上下文关联似然(CLR)、精确蜂窝网络重构算法(ARACNE)和最小冗余网络(MRNET)等互信息网络推理算法。提出了一种利用最小生成树(MST)简化推理网络复杂结构的方法,该方法可以更好地直观地解释所构建的网络。从构建的网络中,我们能够识别出一组功能基因模块。这些模块使用基因本体(GO)富集进行验证。GO富集分析证明了ARACNE推理算法比所有其他采用的算法的强度。并将互信息网络推理与贝叶斯推理进行了比较。为了建立这种比较,我们选择了HCC的特定途径。使用奇异值分解测试了这些路径的显著性。通过比较,ARACNE再次显示出更好的效果。
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K4. Gene network construction and pathways analysis for high throughput microarrays D4. Monte Carlo simulation of single electronics based on orthodox theory C34. Enhanced blind, adaptive channel shortening for multi-carrier systems C46. Robust beamforming in multi-users cognitive radio system D2. Simplified analytical iterations for electron wavefunction using self-consistent solution for nm MOS gate stacks
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