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Transcriptome-guided parsimonious flux analysis improves predictions with metabolic networks in complex environments

机译:转录组导向的定期通量分析在复杂环境中与代谢网络提高了预测

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Transcriptomic analyses of bacteria have become instrumental to our understanding of their responses to changes in their environment. While traditional analyses have been informative, leveraging these datasets within genome-scale metabolic network reconstructions (GENREs) can provide greatly improved context for shifts in pathway utilization and downstream/upstream ramifications for changes in metabolic regulation. Many previous techniques for GENRE transcript integration have focused on creating maximum consensus with input datasets, but these approaches were recently shown to generate less accurate metabolic predictions than a transcript-agnostic method of flux minimization (pFBA), which identifies the most efficient/economic patterns of metabolism given certain growth constraints. Despite this success, growth conditions are not always easily quantifiable and highlights the need for novel platforms that build from these findings. Our new method, RIPTiDe, combines these concepts and utilizes overall minimization of flux weighted by transcriptomic analysis to identify the most energy efficient pathways to achieve growth that include more highly transcribed enzymes, without previous insight into extracellular conditions. Utilizing a well-studied GENRE from Escherichia coli, we demonstrate that this new approach correctly predicts patterns of metabolism utilizing a variety of both in vitro and in vivo transcriptomes. This platform could be important for revealing context-specific bacterial phenotypes in line with governing principles of adaptive evolution, that drive disease manifestation or interactions between microbes.
机译:细菌的转录组分析使我们对他们对环境变化的反应来了解。虽然传统分析已经提供了信息,但利用这些数据集在基因组 - 级代谢网络重建(流程)中,可以在代谢调节的变化中提供途径利用率和下游/上游后游的变化来提供大大改进的背景。许多以前的类型转录集成技术集中于创造与输入数据集的最大共识,但最近显示这些方法,而不是透明度最小化(PFBA)的转录性 - 不可知方法产生更低的准确代谢预测,这识别最有效/经济模式代谢鉴于某些生长约束。尽管取得了这一成功,但增长条件并不总是可量化的,并且突出了从这些调查结果建立的新颖平台的需要。我们的新方法RiptiDe结合了这些概念,并利用通过转录组分析加权的总体最小化,以确定最有效的途径,以实现包括更高度转录的酶的生长,而无需先前的洞察细胞状况。利用来自大肠杆菌的学习类型,我们证明这种新方法能够在体外和体内转录om中正确预测新陈代谢的模式。该平台对于揭示符合适应性进化的管道原理的揭示上下文特异性细菌表型,这一平台可能是重要的,该疾病表现或微生物之间的相互作用。

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