PKI:一种通过伪敲除指数量化基因调控网络中节点重要性的生物信息学方法

IF 2.6 3区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Yijuan Wang , Chao Liu , Xu Qiao , Xianhua Han , Zhi-Ping Liu
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引用次数: 0

摘要

基因调控网络(gene regulatory network, GRN)是一种描述基因之间复杂关系的模型,从而提供了一个信息学环境来衡量节点的重要性。对GRN中重要节点的评估可以有效地参考它们在特定生物过程中作为关键参与者的功能含义,如主调控基因和驱动基因。目前,它主要基于网络拓扑参数,只关注单个节点的单独评估。然而,基因和产物是通过相互作用来发挥功能的。值得注意的是,基因组合在GRN中的作用并不是简单的相加性的。关键组合的发现对于揭示具有重要功能的基因集具有重要意义。最近,随着单细胞rna测序(scRNA-seq)技术的发展,我们可以量化单个细胞的基因表达谱,这为识别特定条件下基因调控的关键节点提供了潜力,例如干细胞分化。在本文中,我们提出了一种生物信息学方法,称为伪敲除重要性(PKI),利用时间过程scRNA-seq数据来量化特定GRN结构中节点和节点集的重要性。首先,我们构建了常微分方程来探讨细胞分化过程中的基因调控。然后设计基因伪敲除实验,并根据决定系数定义PKI评分评价标准。节点的重要性可以用去除变量对ODE系统的影响来描述。对于关键基因组合,PKI是一个量化硅基因敲除效应的组合优化问题。结论通过时间序列基因表达谱分析胚胎干细胞特异性GRN。为了验证PKI方法的有效性和优势,我们将其节点重要性排名与其他12种基于中心性的方法(如度和Latora亲密度)进行了比较。对于关键节点组合,我们将结果与基于最小优势集的方法进行了比较。此外,还利用诱导多能干细胞中著名的转录因子组合来验证PKI识别的重要基因组合。这些结果证明了该方法的可靠性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PKI: A bioinformatics method of quantifying the importance of nodes in gene regulatory network via a pseudo knockout index

Background

Gene regulatory network (GRN) is a model that characterizes the complex relationships between genes and thereby provides an informatics environment to measure the importance of nodes. The evaluation of important nodes in a GRN can effectively refer to their functional implications severing as key players in particular biological processes, such as master regulator and driver gene. Currently, it is mainly based on network topological parameters and focuses only on evaluating a single node individually. However, genes and products play their functions by interacting with each other. It is worth noting that the effects of gene combinations in GRN are not simply additive. Key combinations discovery is of significance in revealing gene sets with important functions. Recently, with the development of single-cell RNA-sequencing (scRNA-seq) technology, we can quantify gene expression profiles of individual cells that provide the potential to identify crucial nodes in gene regulations regarding specific condition, e.g., stem cell differentiation.

Results

In this paper, we propose a bioinformatics method, called Pseudo Knockout Importance (PKI), to quantify the importance of node and node sets in a specific GRN structure using time-course scRNA-seq data. First, we construct ordinary differential equations to approach the gene regulations during cell differentiation. Then we design gene pseudo knockout experiments and define PKI score evaluation criteria based on the coefficient of determination. The importance of nodes can be described as the influence on the ODE system of removing variables. For key gene combinations, PKI is derived as a combinatorial optimization problem of quantifying the in silico gene knockout effects.

Conclusions

Here, we focus our analyses on the specific GRN of embryonic stem cells with time series gene expression profile. To verify the effectiveness and advantage of PKI method, we compare its node importance rankings with other twelve kinds of centrality-based methods, such as degree and Latora closeness. For key node combinations, we compare the results with the method based on minimum dominant set. Moreover, the famous combinations of transcription factors in induced pluripotent stem cell are also employed to verify the vital gene combinations identified by PKI. These results demonstrate the reliability and superiority of the proposed method.

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来源期刊
CiteScore
9.20
自引率
2.10%
发文量
63
审稿时长
44 days
期刊介绍: BBA Gene Regulatory Mechanisms includes reports that describe novel insights into mechanisms of transcriptional, post-transcriptional and translational gene regulation. Special emphasis is placed on papers that identify epigenetic mechanisms of gene regulation, including chromatin, modification, and remodeling. This section also encompasses mechanistic studies of regulatory proteins and protein complexes; regulatory or mechanistic aspects of RNA processing; regulation of expression by small RNAs; genomic analysis of gene expression patterns; and modeling of gene regulatory pathways. Papers describing gene promoters, enhancers, silencers or other regulatory DNA regions must incorporate significant functions studies.
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