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首页> 外文期刊>BMC Systems Biology >A regulatory network modeled from wild-type gene expression data guides functional predictions in Caenorhabditis elegans development
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A regulatory network modeled from wild-type gene expression data guides functional predictions in Caenorhabditis elegans development

机译:以野生型基因表达数据为模型的调控网络可指导秀丽隐杆线虫发育的功能预测

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Background Complex gene regulatory networks underlie many cellular and developmental processes. While a variety of experimental approaches can be used to discover how genes interact, few biological systems have been systematically evaluated to the extent required for an experimental definition of the underlying network. Therefore, the development of computational methods that can use limited experimental data to define and model a gene regulatory network would provide a useful tool to evaluate many important but incompletely understood biological processes. Such methods can assist in extracting all relevant information from data that are available, identify unexpected regulatory relationships and prioritize future experiments. Results To facilitate the analysis of gene regulatory networks, we have developed a computational modeling pipeline method that complements traditional evaluation of experimental data. For a proof-of-concept example, we have focused on the gene regulatory network in the nematode C. elegans that mediates the developmental choice between mesodermal (muscle) and ectodermal (skin) cell fates in the embryonic C lineage. We have used gene expression data to build two models: a knowledge-driven model based on gene expression changes following gene perturbation experiments, and a data-driven mathematical model derived from time-course gene expression data recovered from wild-type animals. We show that both models can identify a rich set of network gene interactions. Importantly, the mathematical model built only from wild-type data can predict interactions demonstrated by the perturbation experiments better than chance, and better than an existing knowledge-driven model built from the same data set. The mathematical model also provides new biological insight, including a dissection of zygotic from maternal functions of a key transcriptional regulator, PAL-1, and identification of non-redundant activities of the T-box genes tbx-8 and tbx-9. Conclusions This work provides a strong example for a mathematical modeling approach that solely uses wild-type data to predict an underlying gene regulatory network. The modeling approach complements traditional methods of data analysis, suggesting non-intuitive network relationships and guiding future experiments.
机译:背景技术复杂的基因调控网络是许多细胞和发育过程的基础。尽管可以使用多种实验方法来发现基因如何相互作用,但是很少有生物系统被系统地评估为基础网络的实验定义所需的程度。因此,可以使用有限的实验数据来定义和建模基因调控网络的计算方法的开发将提供一个有用的工具来评估许多重要但尚未完全理解的生物学过程。此类方法可帮助从可用数据中提取所有相关信息,识别意外的监管关系并确定未来实验的优先级。结果为了促进基因调控网络的分析,我们开发了一种计算建模流水线方法,以补充对实验数据的传统评估。对于概念验证的示例,我们集中于线虫秀丽隐杆线虫中的基因调控网络,该基因调控网络介导了胚胎C谱系的中胚层(肌肉)和外胚层(皮肤)细胞命运之间的发育选择。我们已经使用基因表达数据构建了两个模型:一个基于基因扰动实验后基因表达变化的知识驱动模型,以及一个从野生动物身上回收的时程基因表达数据衍生的数据驱动数学模型。我们显示这两个模型可以识别丰富的网络基因相互作用集。重要的是,仅基于野生型数据构建的数学模型可以更好地预测由微扰实验证明的相互作用,而不是偶然性,并且优于根据相同数据集构建的现有知识驱动模型。该数学模型还提供了新的生物学见解,包括从关键转录调节子PAL-1的母体功能中分离合子,并鉴定T-box基因tbx-8和tbx-9的非冗余活性。结论这项工作为仅使用野生型数据预测潜在基因调控网络的数学建模方法提供了有力的例子。建模方法是对传统数据分析方法的补充,提出了非直观的网络关系并指导了未来的实验。

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