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首页> 外文期刊>Briefings in bioinformatics >Genome-scale bacterial transcriptional regulatory networks: reconstruction and integrated analysiswithmetabolic models
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Genome-scale bacterial transcriptional regulatory networks: reconstruction and integrated analysiswithmetabolic models

机译:基因组规模的细菌转录调控网络:代谢模型的重建和综合分析

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摘要

Advances in sequencing technology are resulting in the rapid emergence of large numbers of complete genome sequences. High-throughput annotation and metabolic modeling of these genomes is now a reality. The highthroughput reconstruction and analysis of genome-scale transcriptional regulatory networks represent the next frontier in microbial bioinformatics. The fruition of this next frontier will depend on the integration of numerous data sources relating to mechanisms, components and behavior of the transcriptional regulatory machinery, as well as the integration of the regulatory machinery into genome-scale cellular models. Here, we review existing repositories for different types of transcriptional regulatory data, including expression data, transcription factor data and binding site locations and we explore how these data are being used for the reconstruction of new regulatory networks. From template network-basedmethods to de novo reverse engineering from expression data, we discuss how regulatory networks can be reconstructed and integrated with metabolic models to improve model predictions and performance.We also explore the impact these integrated models can have in simulating phenotypes, optimizing the production of compounds of interest or paving the way to a whole-cell model.
机译:测序技术的进步导致大量完整的基因组序列迅速出现。这些基因组的高通量注释和代谢建模现已成为现实。基因组规模的转录调控网络的高通量重建和分析代表了微生物生物信息学的下一个前沿领域。下一个前沿成果的实现将取决于与转录调控机制的机制,成分和行为有关的众多数据源的整合,以及将调控机制整合到基因组规模的细胞模型中的方式。在这里,我们回顾了现有存储库中不同类型的转录调控数据,包括表达数据,转录因子数据和结合位点位置,并探讨了如何将这些数据用于重建新的调控网络。从基于模板网络的方法到表达数据的从头逆向工程,我们讨论了如何重建调控网络并将其与代谢模型集成以改善模型预测和性能,还探讨了这些集成模型在模拟表型,优化基因组表达方面可能产生的影响。生产感兴趣的化合物或为全细胞模型铺平道路。

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