Bayesian inference of sample-specific coexpression networks.

IF 6.2 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Enakshi Saha, Viola Fanfani, Panagiotis Mandros, Marouen Ben Guebila, Jonas Fischer, Katherine H Shutta, Dawn L DeMeo, Camila M Lopes-Ramos, John Quackenbush
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引用次数: 0

Abstract

Gene regulatory networks (GRNs) are effective tools for inferring complex interactions between molecules that regulate biological processes and hence can provide insights into drivers of biological systems. Inferring coexpression networks is a critical element of GRN inference, as the correlation between expression patterns may indicate that genes are coregulated by common factors. However, methods that estimate coexpression networks generally derive an aggregate network representing the mean regulatory properties of the population and so fail to fully capture population heterogeneity. Bayesian optimized networks obtained by assimilating omic data (BONOBO) is a scalable Bayesian model for deriving individual sample-specific coexpression matrices that recognizes variations in molecular interactions across individuals. For each sample, BONOBO assumes a Gaussian distribution on the log-transformed centered gene expression and a conjugate prior distribution on the sample-specific coexpression matrix constructed from all other samples in the data. Combining the sample-specific gene coexpression with the prior distribution, BONOBO yields a closed-form solution for the posterior distribution of the sample-specific coexpression matrices, thus allowing the analysis of large data sets. We demonstrate BONOBO's utility in several contexts, including analyzing gene regulation in yeast transcription factor knockout studies, the prognostic significance of miRNA-mRNA interaction in human breast cancer subtypes, and sex differences in gene regulation within human thyroid tissue. We find that BONOBO outperforms other methods that have been used for sample-specific coexpression network inference and provides insight into individual differences in the drivers of biological processes.

样本特异性共表达网络的贝叶斯推断。
基因调控网络(GRN)是推断调控生物过程的分子之间复杂相互作用的有效工具,因此可以深入了解生物系统的驱动因素。推断共表达网络是基因调控网络推断的关键要素,因为表达模式之间的相关性可能表明基因受到共同因素的核心调控。然而,估算共表达网络的方法通常会推导出一个代表群体平均调控特性的总体网络,因此无法完全捕捉群体的异质性。BONOBO(Bayesian Optimized Networks Obtained By assimilating Omics data)是一种可扩展的贝叶斯模型,用于推导个体样本特异性共表达矩阵,它能识别个体间分子相互作用的差异。对于每个样本,BONOBO 假设对数转换后的中心基因表达量呈高斯分布,并假设从数据中所有其他样本构建的样本特异性共表达矩阵呈共轭先验分布。结合样本特异性基因共表达与先验分布,BONOBO 得出了样本特异性共表达矩阵后验分布的闭式解,从而可以对大型数据集进行分析。我们在多种情况下展示了 BONOBO 的实用性,包括分析酵母转录因子敲除研究中的基因调控、人类乳腺癌亚型中 miRNA-mRNA 相互作用的预后意义以及人类甲状腺组织中基因调控的性别差异。我们发现,BONOBO 优于其他用于样本特异性共表达网络推断的方法,并能深入了解生物过程驱动因素的个体差异。
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来源期刊
Genome research
Genome research 生物-生化与分子生物学
CiteScore
12.40
自引率
1.40%
发文量
140
审稿时长
6 months
期刊介绍: Launched in 1995, Genome Research is an international, continuously published, peer-reviewed journal that focuses on research that provides novel insights into the genome biology of all organisms, including advances in genomic medicine. Among the topics considered by the journal are genome structure and function, comparative genomics, molecular evolution, genome-scale quantitative and population genetics, proteomics, epigenomics, and systems biology. The journal also features exciting gene discoveries and reports of cutting-edge computational biology and high-throughput methodologies. New data in these areas are published as research papers, or methods and resource reports that provide novel information on technologies or tools that will be of interest to a broad readership. Complete data sets are presented electronically on the journal''s web site where appropriate. The journal also provides Reviews, Perspectives, and Insight/Outlook articles, which present commentary on the latest advances published both here and elsewhere, placing such progress in its broader biological context.
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