Ma Shuyi, Minch Kyle J, Rustad Tige R, Hobbs Samuel, Zhou Suk-Lin, Sherman David R, Price Nathan D
Department of Chemical and Biomolecular Engineering, University of Illinois, Urbana-Champaign, Illinois, United States of America.
Institute for Systems Biology, Seattle, Washington, United States of America.
PLoS Comput Biol. 2015 Nov 30;11(11):e1004543. doi: 10.1371/journal.pcbi.1004543. eCollection 2015 Nov.
Mycobacterium tuberculosis (MTB) is the causative bacterium of tuberculosis, a disease responsible for over a million deaths worldwide annually with a growing number of strains resistant to antibiotics. The development of better therapeutics would greatly benefit from improved understanding of the mechanisms associated with MTB responses to different genetic and environmental perturbations. Therefore, we expanded a genome-scale regulatory-metabolic model for MTB using the Probabilistic Regulation of Metabolism (PROM) framework. Our model, MTBPROM2.0, represents a substantial knowledge base update and extension of simulation capability. We incorporated a recent ChIP-seq based binding network of 2555 interactions linking to 104 transcription factors (TFs) (representing a 3.5-fold expansion of TF coverage). We integrated this expanded regulatory network with a refined genome-scale metabolic model that can correctly predict growth viability over 69 source metabolite conditions and predict metabolic gene essentiality more accurately than the original model. We used MTBPROM2.0 to simulate the metabolic consequences of knocking out and overexpressing each of the 104 TFs in the model. MTBPROM2.0 improves performance of knockout growth defect predictions compared to the original PROM MTB model, and it can successfully predict growth defects associated with TF overexpression. Moreover, condition-specific models of MTBPROM2.0 successfully predicted synergistic growth consequences of overexpressing the TF whiB4 in the presence of two standard anti-TB drugs. MTBPROM2.0 can screen in silico condition-specific transcription factor perturbations to generate putative targets of interest that can help prioritize future experiments for therapeutic development efforts.
结核分枝杆菌(MTB)是结核病的致病菌,这种疾病每年在全球导致超过100万人死亡,且耐药菌株数量不断增加。更好地了解与MTB对不同基因和环境扰动反应相关的机制,将极大地有助于开发更好的治疗方法。因此,我们使用代谢概率调控(PROM)框架扩展了MTB的基因组规模调控代谢模型。我们的模型MTBPROM2.0代表了模拟能力的实质性知识库更新和扩展。我们纳入了一个基于ChIP-seq的最新结合网络,该网络包含2555个相互作用,与104个转录因子(TFs)相关联(TF覆盖范围扩大了3.5倍)。我们将这个扩展的调控网络与一个经过优化的基因组规模代谢模型整合在一起,该模型能够在69种源代谢物条件下正确预测生长活力,并且比原始模型更准确地预测代谢基因的必需性。我们使用MTBPROM2.0来模拟敲除和过表达模型中104个TFs各自的代谢后果。与原始的PROM MTB模型相比,MTBPROM2.0提高了敲除生长缺陷预测的性能,并且能够成功预测与TF过表达相关的生长缺陷。此外,MTBPROM2.0的条件特异性模型成功预测了在两种标准抗结核药物存在的情况下过表达TF whiB4的协同生长后果。MTBPROM2.0可以在计算机上筛选条件特异性转录因子扰动,以生成感兴趣的假定靶点,这有助于为未来的治疗开发工作确定实验优先级。