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Managing uncertainty in metabolic network structure and improving predictions using EnsembleFBA

机译:使用EnsembleFBA管理代谢网络结构的不确定性并改善预测

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Genome-scale metabolic network reconstructions (GENREs) are repositories of knowledge about the metabolic processes that occur in an organism. GENREs have been used to discover and interpret metabolic functions, and to engineer novel network structures. A major barrier preventing more widespread use of GENREs, particularly to study non-model organisms, is the extensive time required to produce a high-quality GENRE. Many automated approaches have been developed which reduce this time requirement, but automatically-reconstructed draft GENREs still require curation before useful predictions can be made. We present a novel approach to the analysis of GENREs which improves the predictive capabilities of draft GENREs by representing many alternative network structures, all equally consistent with available data, and generating predictions from this ensemble. This ensemble approach is compatible with many reconstruction methods. We refer to this new approach as Ensemble Flux Balance Analysis (EnsembleFBA). We validate EnsembleFBA by predicting growth and gene essentiality in the model organism Pseudomonas aeruginosa UCBPP-PA14. We demonstrate how EnsembleFBA can be included in a systems biology workflow by predicting essential genes in six Streptococcus species and mapping the essential genes to small molecule ligands from DrugBank. We found that some metabolic subsystems contributed disproportionately to the set of predicted essential reactions in a way that was unique to each Streptococcus species, leading to species-specific outcomes from small molecule interactions. Through our analyses of P. aeruginosa and six Streptococci, we show that ensembles increase the quality of predictions without drastically increasing reconstruction time, thus making GENRE approaches more practical for applications which require predictions for many non-model organisms. All of our functions and accompanying example code are available in an open online repository.
机译:基因组规模的代谢网络重建(GENRE)是有关生物体中发生的代谢过程的知识的知识库。 GENRE已被用来发现和解释代谢功能,并设计出新颖的网络结构。阻止更广泛地使用GENRE(尤其是研究非模型生物)的主要障碍是生产高质量GENRE所需的大量时间。已经开发了许多自动方法来减少这种时间需求,但是在可以做出有用的预测之前,自动重构的GENRE草案仍然需要策划。我们提出了一种新颖的GENRE分析方法,该方法通过表示许多替代网络结构(均与可用数据均一致)并从该集合生成预测来提高GENRE草案的预测能力。这种集成方法与许多重建方法兼容。我们将此新方法称为“整体通量平衡分析(EnsembleFBA)”。我们通过预测模型生物铜绿假单胞菌UCBPP-PA14中的生长和基因必需性来验证EnsembleFBA。我们通过预测六个链球菌物种中的必需基因并将必需基因映射到DrugBank的小分子配体,证明了EnsembleFBA如何包含在系统生物学工作流程中。我们发现某些代谢子系统以每种链球菌物种所独有的方式,对一组预期的基本反应的贡献不成比例,从而导致小分子相互作用的物种特异性结果。通过对铜绿假单胞菌和六个链球菌的分析,我们发现合奏可提高预测的质量,而无需大量增加重建时间,从而使GENRE方法更适用于需要对许多非模式生物进行预测的应用。我们所有的功能和随附的示例代码都可以在开放的在线存储库中找到。

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