Ghaffarizadeh Ahmadreza, Podgorski Gregory J, Flann Nicholas S
Computer Science Department, Utah State University, 4205 Old Main Hill, Logan, UT 84322, United States.
Biology Department, Utah State University, 5305 Old Main Hill, Logan, UT 84322, United States; Center for Integrated BioSystems, 4700 Old Main Hill, Logan, UT 84322, United States.
Biosystems. 2017 May;155:29-41. doi: 10.1016/j.biosystems.2016.12.004. Epub 2017 Feb 28.
The dynamics of gene regulatory networks (GRNs) guide cellular differentiation. Determining the ways regulatory genes control expression of their targets is essential to understand and control cellular differentiation. The way a regulatory gene controls its target can be expressed as a gene regulatory function. Manual derivation of these regulatory functions is slow, error-prone and difficult to update as new information arises. Automating this process is a significant challenge and the subject of intensive effort. This work presents a novel approach to discovering biologically plausible gene regulatory interactions that control cellular differentiation. This method integrates known cell type expression data, genetic interactions, and knowledge of the effects of gene knockouts to determine likely GRN regulatory functions. We employ a genetic algorithm to search for candidate GRNs that use a set of transcription factors that control differentiation within a lineage. Nested canalyzing functions are used to constrain the search space to biologically plausible networks. The method identifies an ensemble of GRNs whose dynamics reproduce the gene expression pattern for each cell type within a particular lineage. The method's effectiveness was tested by inferring consensus GRNs for myeloid and pancreatic cell differentiation and comparing the predicted gene regulatory interactions to manually derived interactions. We identified many regulatory interactions reported in the literature and also found differences from published reports. These discrepancies suggest areas for biological studies of myeloid and pancreatic differentiation. We also performed a study that used defined synthetic networks to evaluate the accuracy of the automated search method and found that the search algorithm was able to discover the regulatory interactions in these defined networks with high accuracy. We suggest that the GRN functions derived from the methods described here can be used to fill gaps in knowledge about regulatory interactions and to offer hypotheses for experimental testing of GRNs that control differentiation and other biological processes.
基因调控网络(GRNs)的动力学指导细胞分化。确定调控基因控制其靶标表达的方式对于理解和控制细胞分化至关重要。调控基因控制其靶标的方式可以表示为基因调控功能。手动推导这些调控功能速度慢、容易出错,并且随着新信息的出现难以更新。自动化这个过程是一项重大挑战,也是大量研究工作的主题。这项工作提出了一种新颖的方法来发现控制细胞分化的生物学上合理的基因调控相互作用。该方法整合了已知的细胞类型表达数据、遗传相互作用以及基因敲除效应的知识,以确定可能的GRN调控功能。我们采用遗传算法来搜索候选GRNs,这些GRNs使用一组控制谱系内分化的转录因子。嵌套的 canalyzing 函数用于将搜索空间限制在生物学上合理的网络。该方法识别出一组GRNs,其动力学重现了特定谱系内每种细胞类型的基因表达模式。通过推断髓系和胰腺细胞分化的共识GRNs,并将预测的基因调控相互作用与手动推导的相互作用进行比较,测试了该方法的有效性。我们确定了文献中报道的许多调控相互作用,也发现了与已发表报告的差异。这些差异为髓系和胰腺分化的生物学研究指明了方向。我们还进行了一项研究,使用定义的合成网络来评估自动搜索方法的准确性,发现搜索算法能够高精度地发现这些定义网络中的调控相互作用。我们建议,从这里描述的方法中得出的GRN功能可用于填补关于调控相互作用的知识空白,并为控制分化和其他生物学过程的GRNs的实验测试提供假设。