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Iterative reconstruction of a global metabolic model of Acinetobacter baylyi ADP1 using high-throughput growth phenotype and gene essentiality data

机译:使用高通量生长表型和基因必需性数据迭代重建贝氏不动杆菌ADP1的全球代谢模型

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Background Genome-scale metabolic models are powerful tools to study global properties of metabolic networks. They provide a way to integrate various types of biological information in a single framework, providing a structured representation of available knowledge on the metabolism of the respective species. Results We reconstructed a constraint-based metabolic model of Acinetobacter baylyi ADP1, a soil bacterium of interest for environmental and biotechnological applications with large-spectrum biodegradation capabilities. Following initial reconstruction from genome annotation and the literature, we iteratively refined the model by comparing its predictions with the results of large-scale experiments: (1) high-throughput growth phenotypes of the wild-type strain on 190 distinct environments, (2) genome-wide gene essentialities from a knockout mutant library, and (3) large-scale growth phenotypes of all mutant strains on 8 minimal media. Out of 1412 predictions, 1262 were initially consistent with our experimental observations. Inconsistencies were systematically examined, leading in 65 cases to model corrections. The predictions of the final version of the model, which included three rounds of refinements, are consistent with the experimental results for (1) 91% of the wild-type growth phenotypes, (2) 94% of the gene essentiality results, and (3) 94% of the mutant growth phenotypes. To facilitate the exploitation of the metabolic model, we provide a web interface allowing online predictions and visualization of results on metabolic maps. Conclusion The iterative reconstruction procedure led to significant model improvements, showing that genome-wide mutant phenotypes on several media can significantly facilitate the transition from genome annotation to a high-quality model.
机译:背景技术基因组规模的代谢模型是研究代谢网络整体特性的强大工具。它们提供了将各种类型的生物信息整合到单个框架中的方法,从而提供了有关各个物种代谢的可用知识的结构化表示。结果我们重建了不动杆菌Baylyi ADP1的基于约束的代谢模型,这是一种具有广谱生物降解能力的环境和生物技术应用的土壤细菌。根据基因组注释和文献进行的初步重建后,我们通过将模型的预测结果与大规模实验的结果进行比较来反复完善模型:(1)在190种不同环境下野生型菌株的高通量生长表型,(2)基因组范围内的基因必需性来自敲除突变体文库,以及(3)在8种基本培养基上所有突变株的大规模生长表型。在1412个预测中,有1262个最初与我们的实验观察结果一致。系统地检查了不一致之处,导致65例模型更正。该模型最终版本的预测(包括三轮改进)与(1)91%的野生型生长表型,(2)94%的基因必需性结果和( 3)94%的突变体生长表型。为了促进代谢模型的开发,我们提供了一个Web界面,可以在线预测和在代谢图上显示结果。结论迭代重建程序导致了显着的模型改进,表明在多种培养基上的全基因组突变表型可以显着促进从基因组注释向高质量模型的过渡。

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