差异基因调控网络分析。

Pub Date : 2018-01-01 DOI:10.1504/IJDMB.2018.094891
Youngsoon Kim, Jie Hao, Yadu Gautam, Tesfaye B Mersha, Mingon Kang
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引用次数: 0

摘要

鉴定在不同条件下具有显著变化的差异基因调节因子对于了解疾病的复杂生物学机制至关重要。差分网络分析(DiNA)基于基因调控网络,用图形模型表征基因之间的调控相互作用,研究不同的生物过程。大多数DiNA研究考虑基于关联推理的基因表达数据构建基因调控网络,由于其表征直观、实现简单,但缺乏对基因间因果效应和多变量效应的表征。在本文中,我们提出了一种名为差异基因调控网络(DiffGRN)的方法来推断两组之间的差异基因调控。我们利用随机LASSO方法推断两组基因调控网络,然后通过提出的显著性检验确定差异基因调控。DiffGRN的优势在于能够捕捉同时调控一个基因的基因的多变量效应,识别基因调控的因果关系,发现基于回归的基因调控网络之间的差异基因调控。我们通过仿真实验对DiffGRN进行了评估,并证明其优于当前最先进的基于相关的DINGO方法。DiffGRN应用于哮喘的基因表达数据。具有哮喘数据的DiNA显示了生物学文献中报道的许多基因调控,如ADAM12和RELB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

DiffGRN: differential gene regulatory network analysis.

DiffGRN: differential gene regulatory network analysis.

DiffGRN: differential gene regulatory network analysis.

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DiffGRN: differential gene regulatory network analysis.

Identification of differential gene regulators with significant changes under disparate conditions is essential to understand complex biological mechanism in a disease. Differential Network Analysis (DiNA) examines different biological processes based on gene regulatory networks that represent regulatory interactions between genes with a graph model. While most studies in DiNA have considered correlation-based inference to construct gene regulatory networks from gene expression data due to its intuitive representation and simple implementation, the approach lacks in the representation of causal effects and multivariate effects between genes. In this paper, we propose an approach named Differential Gene Regulatory Network (DiffGRN) that infers differential gene regulation between two groups. We infer gene regulatory networks of two groups using Random LASSO, and then we identify differential gene regulations by the proposed significance test. The advantages of DiffGRN are to capture multivariate effects of genes that regulate a gene simultaneously, to identify causality of gene regulations, and to discover differential gene regulators between regression-based gene regulatory networks. We assessed DiffGRN by simulation experiments and showed its outstanding performance than the current state-of-the-art correlation-based method, DINGO. DiffGRN is applied to gene expression data in asthma. The DiNA with asthma data showed a number of gene regulations, such as ADAM12 and RELB, reported in biological literature.

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