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使用贝叶斯模型选择阐明酵母GATA因子网络中的遗传相互作用。

Elucidation of Genetic Interactions in the Yeast GATA-Factor Network Using Bayesian Model Selection.

作者信息

Milias-Argeitis Andreas, Oliveira Ana Paula, Gerosa Luca, Falter Laura, Sauer Uwe, Lygeros John

机构信息

Department of Biosystems Science and Engineering, ETH Zurich, Basel, Switzerland.

Institute of Molecular Systems Biology, ETH Zurich, Zurich, Switzerland.

出版信息

PLoS Comput Biol. 2016 Mar 11;12(3):e1004784. doi: 10.1371/journal.pcbi.1004784. eCollection 2016 Mar.

Abstract

Understanding the structure and function of complex gene regulatory networks using classical genetic assays is an error-prone procedure that frequently generates ambiguous outcomes. Even some of the best-characterized gene networks contain interactions whose validity is not conclusively proven. Founded on dynamic experimental data, mechanistic mathematical models are able to offer detailed insights that would otherwise require prohibitively large numbers of genetic experiments. Here we attempt mechanistic modeling of the transcriptional network formed by the four GATA-factor proteins, a well-studied system of central importance for nitrogen-source regulation of transcription in the yeast Saccharomyces cerevisiae. To resolve ambiguities in the network organization, we encoded a set of five interactions hypothesized in the literature into a set of 32 mathematical models, and employed Bayesian model selection to identify the most plausible set of interactions based on dynamic gene expression data. The top-ranking model was validated on newly generated GFP reporter dynamic data and was subsequently used to gain a better understanding of how yeast cells organize their transcriptional response to dynamic changes of nitrogen sources. Our work constitutes a necessary and important step towards obtaining a holistic view of the yeast nitrogen regulation mechanisms; on the computational side, it provides a demonstration of how powerful Monte Carlo techniques can be creatively combined and used to address the great challenges of large-scale dynamical system inference.

摘要

使用经典遗传学分析方法来理解复杂基因调控网络的结构和功能是一个容易出错的过程,常常会产生不明确的结果。即使是一些特征最明确的基因网络,也包含一些其有效性尚未得到确凿证明的相互作用。基于动态实验数据构建的机械数学模型,能够提供详细的见解,否则这些见解需要进行大量成本过高的基因实验才能获得。在此,我们尝试对由四种GATA因子蛋白形成的转录网络进行机械建模,这是一个对酿酒酵母转录的氮源调控至关重要且研究充分的系统。为了解决网络组织中的模糊性问题,我们将文献中假设的一组五种相互作用编码为一组32个数学模型,并采用贝叶斯模型选择方法,根据动态基因表达数据确定最合理的相互作用集。排名靠前的模型在新生成的绿色荧光蛋白(GFP)报告基因动态数据上得到了验证,随后被用于更好地理解酵母细胞如何组织其对氮源动态变化的转录反应。我们的工作是朝着全面了解酵母氮调控机制迈出的必要且重要的一步;在计算方面,它展示了蒙特卡罗技术如何能够创造性地结合并用于应对大规模动态系统推断的巨大挑战。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cdcf/4788432/1dea0922eacc/pcbi.1004784.g001.jpg

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