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Statistical Approaches for Gene Selection Hub Gene Identification and Module Interaction in Gene Co-Expression Network Analysis: An Application to Aluminum Stress in Soybean (Glycine max L.)

机译:基因共表达网络分析中用于基因选择集线器基因识别和模块相互作用的统计方法:在大豆铝胁迫中的应用

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摘要

Selection of informative genes is an important problem in gene expression studies. The small sample size and the large number of genes in gene expression data make the selection process complex. Further, the selected informative genes may act as a vital input for gene co-expression network analysis. Moreover, the identification of hub genes and module interactions in gene co-expression networks is yet to be fully explored. This paper presents a statistically sound gene selection technique based on support vector machine algorithm for selecting informative genes from high dimensional gene expression data. Also, an attempt has been made to develop a statistical approach for identification of hub genes in the gene co-expression network. Besides, a differential hub gene analysis approach has also been developed to group the identified hub genes into various groups based on their gene connectivity in a case vs. control study. Based on this proposed approach, an R package, i.e., dhga () has been developed. The comparative performance of the proposed gene selection technique as well as hub gene identification approach was evaluated on three different crop microarray datasets. The proposed gene selection technique outperformed most of the existing techniques for selecting robust set of informative genes. Based on the proposed hub gene identification approach, a few number of hub genes were identified as compared to the existing approach, which is in accordance with the principle of scale free property of real networks. In this study, some key genes along with their Arabidopsis orthologs has been reported, which can be used for Aluminum toxic stress response engineering in soybean. The functional analysis of various selected key genes revealed the underlying molecular mechanisms of Aluminum toxic stress response in soybean.
机译:信息基因的选择是基因表达研究中的重要问题。基因表达数据中的小样本量和大量基因使选择过程变得复杂。此外,选择的信息基因可以作为基因共表达网络分析的重要输入。此外,基因共表达网络中毂基因和模块相互作用的鉴定尚待充分探索。本文提出了一种基于支持向量机算法的统计合理的基因选择技术,用于从高维基因表达数据中选择信息基因。另外,已经尝试开发一种统计方法来鉴定基因共表达网络中的集线器基因。此外,在案例与对照研究中,还开发了差异集线器基因分析方法,以根据其基因连通性将识别出的集线器基因分为不同的组。基于此提议的方法,开发了一种R程序包,即dhga()。在三个不同的农作物微阵列数据集上评估了拟议的基因选择技术和中枢基因鉴定方法的比较性能。拟议的基因选择技术优于大多数现有技术来选择可靠的信息基因集。基于提出的中枢基因识别方法,与现有方法相比,识别了许多中枢基因,这符合真实网络的无标度特性原理。在这项研究中,已经报道了一些关键基因及其拟南芥直系同源基因,可用于大豆中铝毒性胁迫响应工程。各种关键基因的功能分析揭示了大豆铝毒胁迫响应的潜在分子机制。

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