Resendis-Antonio Osbaldo, Hernández Magdalena, Salazar Emmanuel, Contreras Sandra, Batallar Gabriel Martínez, Mora Yolanda, Encarnación Sergio
Programa de Genomica Funcional de Procariotes, Centro de Ciencias Genómicas-UNAM, Av, Universidad s/n, Col, Chamilpa, Cuernavaca Morelos, C,P, 62210, Mexico.
BMC Syst Biol. 2011 Jul 29;5:120. doi: 10.1186/1752-0509-5-120.
Bacterial nitrogen fixation is the biological process by which atmospheric nitrogen is uptaken by bacteroids located in plant root nodules and converted into ammonium through the enzymatic activity of nitrogenase. In practice, this biological process serves as a natural form of fertilization and its optimization has significant implications in sustainable agricultural programs. Currently, the advent of high-throughput technology supplies with valuable data that contribute to understanding the metabolic activity during bacterial nitrogen fixation. This undertaking is not trivial, and the development of computational methods useful in accomplishing an integrative, descriptive and predictive framework is a crucial issue to decoding the principles that regulated the metabolic activity of this biological process.
In this work we present a systems biology description of the metabolic activity in bacterial nitrogen fixation. This was accomplished by an integrative analysis involving high-throughput data and constraint-based modeling to characterize the metabolic activity in Rhizobium etli bacteroids located at the root nodules of Phaseolus vulgaris (bean plant). Proteome and transcriptome technologies led us to identify 415 proteins and 689 up-regulated genes that orchestrate this biological process. Taking into account these data, we: 1) extended the metabolic reconstruction reported for R. etli; 2) simulated the metabolic activity during symbiotic nitrogen fixation; and 3) evaluated the in silico results in terms of bacteria phenotype. Notably, constraint-based modeling simulated nitrogen fixation activity in such a way that 76.83% of the enzymes and 69.48% of the genes were experimentally justified. Finally, to further assess the predictive scope of the computational model, gene deletion analysis was carried out on nine metabolic enzymes. Our model concluded that an altered metabolic activity on these enzymes induced different effects in nitrogen fixation, all of these in qualitative agreement with observations made in R. etli and other Rhizobiaceas.
In this work we present a genome scale study of the metabolic activity in bacterial nitrogen fixation. This approach leads us to construct a computational model that serves as a guide for 1) integrating high-throughput data, 2) describing and predicting metabolic activity, and 3) designing experiments to explore the genotype-phenotype relationship in bacterial nitrogen fixation.
细菌固氮是一个生物学过程,通过该过程,位于植物根瘤中的类菌体吸收大气中的氮,并通过固氮酶的酶活性将其转化为铵。在实践中,这一生物学过程作为一种自然施肥形式,其优化在可持续农业项目中具有重要意义。目前,高通量技术的出现提供了有价值的数据,有助于理解细菌固氮过程中的代谢活性。这项工作并非易事,开发有助于构建综合、描述性和预测性框架的计算方法是解读调控这一生物学过程代谢活性原理的关键问题。
在这项工作中,我们对细菌固氮的代谢活性进行了系统生物学描述。这是通过整合高通量数据和基于约束的建模来实现的,以表征位于菜豆(豆科植物)根瘤中的埃氏根瘤菌的类菌体中的代谢活性。蛋白质组学和转录组学技术使我们鉴定出了415种蛋白质和689个上调基因,这些基因共同协调这一生物学过程。考虑到这些数据,我们:1)扩展了已报道的埃氏根瘤菌的代谢重建;2)模拟了共生固氮过程中的代谢活性;3)根据细菌表型评估了计算机模拟结果。值得注意的是,基于约束的建模模拟固氮活性的方式使得76.83%的酶和69.48%的基因在实验上得到了验证。最后,为了进一步评估计算模型的预测范围,对9种代谢酶进行了基因缺失分析。我们的模型得出结论,这些酶的代谢活性改变在固氮过程中产生了不同的影响,所有这些都与在埃氏根瘤菌和其他根瘤菌科中观察到的结果在定性上一致。
在这项工作中,我们对细菌固氮的代谢活性进行了全基因组规模的研究。这种方法使我们构建了一个计算模型,该模型可作为以下方面的指南:1)整合高通量数据;2)描述和预测代谢活性;3)设计实验以探索细菌固氮中的基因型-表型关系。