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MIRA: mutual information-based reporter algorithm for metabolic networks

机译:MIRA:用于代谢网络的基于互信息的报告程序算法

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摘要

>Motivation: Discovering the transcriptional regulatory architecture of the metabolism has been an important topic to understand the implications of transcriptional fluctuations on metabolism. The reporter algorithm (RA) was proposed to determine the hot spots in metabolic networks, around which transcriptional regulation is focused owing to a disease or a genetic perturbation. Using a z-score-based scoring scheme, RA calculates the average statistical change in the expression levels of genes that are neighbors to a target metabolite in the metabolic network. The RA approach has been used in numerous studies to analyze cellular responses to the downstream genetic changes. In this article, we propose a mutual information-based multivariate reporter algorithm (MIRA) with the goal of eliminating the following problems in detecting reporter metabolites: (i) conventional statistical methods suffer from small sample sizes, (ii) as z-score ranges from minus to plus infinity, calculating average scores can lead to canceling out opposite effects and (iii) analyzing genes one by one, then aggregating results can lead to information loss. MIRA is a multivariate and combinatorial algorithm that calculates the aggregate transcriptional response around a metabolite using mutual information. We show that MIRA’s results are biologically sound, empirically significant and more reliable than RA.>Results: We apply MIRA to gene expression analysis of six knockout strains of Escherichia coli and show that MIRA captures the underlying metabolic dynamics of the switch from aerobic to anaerobic respiration. We also apply MIRA to an Autism Spectrum Disorder gene expression dataset. Results indicate that MIRA reports metabolites that highly overlap with recently found metabolic biomarkers in the autism literature. Overall, MIRA is a promising algorithm for detecting metabolic drug targets and understanding the relation between gene expression and metabolic activity.>Availability and implementation: The code is implemented in C# language using .NET framework. Project is available upon request.>Contact: >Supplementary information: are available at Bioinformatics online
机译:>动机:发现新陈代谢的转录调控结构一直是理解转录波动对新陈代谢的影响的重要课题。提出了报告子算法(RA)来确定代谢网络中的热点,由于疾病或遗传扰动,转录调控集中在热点附近。 RA使用基于z评分的评分方案,计算与代谢网络中目标代谢物相邻的基因表达水平的平均统计变化。 RA方法已在许多研究中用于分析细胞对下游遗传变化的反应。在本文中,我们提出了一种基于互信息的多元报告算法(MIRA),目的是消除检测报告代谢物时出现的以下问题:(i)传统统计方法的样本量较小,(ii)作为z评分范围从负到正无穷大,计算平均分数可以抵消相反的影响;(iii)逐一分析基因,然后汇总结果可能导致信息丢失。 MIRA是一种多元组合算法,可使用互信息来计算代谢物周围的总转录反应。我们证明MIRA的结果在生物学上是合理的,在经验上比RA更可靠。>结果:我们将MIRA应用于6种大肠杆菌的基因敲除菌株的基因表达分析,并表明MIRA捕获了大肠埃希菌的潜在代谢动力学。从有氧呼吸转换为无氧呼吸。我们还将MIRA应用于自闭症谱系障碍基因表达数据集。结果表明,MIRA报告的代谢产物与自闭症文献中最近发现的代谢生物标志物高度重叠。总体而言,MIRA是用于检测代谢药物靶标并了解基因表达与代谢活性之间关系的有前途的算法。>可用性和实现:该代码使用.NET框架以C#语言实现。可根据要求提供项目。>联系方式: >补充信息:可在线访问生物信息学

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