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真菌病原体与上皮细胞接触时铁摄取的调控网络建模

Regulatory network modelling of iron acquisition by a fungal pathogen in contact with epithelial cells.

作者信息

Linde Jörg, Wilson Duncan, Hube Bernhard, Guthke Reinhard

机构信息

Leibniz-Institute for Natural Product Research and Infection Biology-Hans-Knoell-Institute, Jena, Germany.

出版信息

BMC Syst Biol. 2010 Nov 4;4:148. doi: 10.1186/1752-0509-4-148.

Abstract

BACKGROUND

Reverse engineering of gene regulatory networks can be used to predict regulatory interactions of an organism faced with environmental changes, but can prove problematic, especially when focusing on complicated multi-factorial processes. Candida albicans is a major human fungal pathogen. During the infection process, this fungus is able to adapt to conditions of very low iron availability. Such adaptation is an important virulence attribute of virtually all pathogenic microbes. Understanding the regulation of iron acquisition genes will extend our knowledge of the complex regulatory changes during the infection process and might identify new potential drug targets. Thus, there is a need for efficient modelling approaches predicting key regulatory events of iron acquisition genes during the infection process.

RESULTS

This study deals with the regulation of C. albicans iron uptake genes during adhesion to and invasion into human oral epithelial cells. A reverse engineering strategy is presented, which is able to infer regulatory networks on the basis of gene expression data, making use of relevant selection criteria such as sparseness and robustness. An exhaustive use of available knowledge from different data sources improved the network prediction. The predicted regulatory network proposes a number of new target genes for the transcriptional regulators Rim101, Hap3, Sef1 and Tup1. Furthermore, the molecular mode of action for Tup1 is clarified. Finally, regulatory interactions between the transcription factors themselves are proposed. This study presents a model describing how C. albicans may regulate iron acquisition during contact with and invasion of human oral epithelial cells. There is evidence that some of the proposed regulatory interactions might also occur during oral infection.

CONCLUSIONS

This study focuses on a typical problem in Systems Biology where an interesting biological phenomenon is studied using a small number of available experimental data points. To overcome this limitation, a special modelling strategy was used which identifies sparse and robust networks. The data is augmented by an exhaustive search for additional data sources, helping to make proposals on regulatory interactions and to guide the modelling approach. The proposed modelling strategy is capable of finding known regulatory interactions and predicts a number of yet unknown biologically relevant regulatory interactions.

摘要

背景

基因调控网络的逆向工程可用于预测生物体在面对环境变化时的调控相互作用,但可能存在问题,尤其是在关注复杂的多因素过程时。白色念珠菌是一种主要的人类真菌病原体。在感染过程中,这种真菌能够适应铁可用性极低的条件。这种适应性实际上是所有致病微生物的重要毒力属性。了解铁获取基因的调控将扩展我们对感染过程中复杂调控变化的认识,并可能识别出新的潜在药物靶点。因此,需要有效的建模方法来预测感染过程中铁获取基因的关键调控事件。

结果

本研究探讨了白色念珠菌在黏附并侵入人口腔上皮细胞过程中铁摄取基因的调控。提出了一种逆向工程策略,该策略能够基于基因表达数据推断调控网络,并利用稀疏性和稳健性等相关选择标准。充分利用来自不同数据源的现有知识改进了网络预测。预测的调控网络为转录调节因子Rim101、Hap3、Sef1和Tup1提出了许多新的靶基因。此外,还阐明了Tup1的分子作用模式。最后,提出了转录因子之间的调控相互作用。本研究提出了一个模型,描述了白色念珠菌在与人口腔上皮细胞接触和侵入过程中如何调控铁的获取。有证据表明,一些提出的调控相互作用在口腔感染过程中也可能发生。

结论

本研究聚焦于系统生物学中的一个典型问题,即利用少量可用的实验数据点来研究一个有趣的生物学现象。为克服这一限制,使用了一种特殊的建模策略,该策略可识别稀疏且稳健的网络。通过详尽搜索额外数据源来扩充数据,有助于提出调控相互作用的建议并指导建模方法。所提出的建模策略能够找到已知的调控相互作用,并预测一些尚未知晓的生物学相关调控相互作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f224/3225834/5ff481936182/1752-0509-4-148-1.jpg

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