DoD Biotechnology High-Performance-Computing Software Applications Institute, Telemedicine and Advanced Technology Research Center, U.S. Army Medical Research and Materiel Command, Fort Detrick, Maryland, USA.
PLoS Comput Biol. 2012;8(9):e1002688. doi: 10.1371/journal.pcbi.1002688. Epub 2012 Sep 13.
The ability to adapt to different conditions is key for Mycobacterium tuberculosis, the causative agent of tuberculosis (TB), to successfully infect human hosts. Adaptations allow the organism to evade the host immune responses during acute infections and persist for an extended period of time during the latent infectious stage. In latently infected individuals, estimated to include one-third of the human population, the organism exists in a variety of metabolic states, which impedes the development of a simple strategy for controlling or eradicating this disease. Direct knowledge of the metabolic states of M. tuberculosis in patients would aid in the management of the disease as well as in forming the basis for developing new drugs and designing more efficacious drug cocktails. Here, we propose an in silico approach to create state-specific models based on readily available gene expression data. The coupling of differential gene expression data with a metabolic network model allowed us to characterize the metabolic adaptations of M. tuberculosis H37Rv to hypoxia. Given the microarray data for the alterations in gene expression, our model predicted reduced oxygen uptake, ATP production changes, and a global change from an oxidative to a reductive tricarboxylic acid (TCA) program. Alterations in the biomass composition indicated an increase in the cell wall metabolites required for cell-wall growth, as well as heightened accumulation of triacylglycerol in preparation for a low-nutrient, low metabolic activity life style. In contrast, the gene expression program in the deletion mutant of dosR, which encodes the immediate hypoxic response regulator, failed to adapt to low-oxygen stress. Our predictions were compatible with recent experimental observations of M. tuberculosis activity under hypoxic and anaerobic conditions. Importantly, alterations in the flow and accumulation of a particular metabolite were not necessarily directly linked to differential gene expression of the enzymes catalyzing the related metabolic reactions.
适应不同条件的能力是结核分枝杆菌(导致结核病(TB)的病原体)成功感染人类宿主的关键。适应使该生物体在急性感染期间逃避宿主免疫反应,并在潜伏感染阶段持续很长时间。在潜伏感染的个体中,据估计包括三分之一的人口,该生物体存在于多种代谢状态,这阻碍了开发控制或根除这种疾病的简单策略。直接了解患者中结核分枝杆菌的代谢状态将有助于疾病的管理,并为开发新药和设计更有效的药物鸡尾酒奠定基础。在这里,我们提出了一种基于现成基因表达数据创建特定状态模型的计算方法。差异基因表达数据与代谢网络模型的耦合使我们能够描述结核分枝杆菌 H37Rv 对低氧的代谢适应。鉴于基因表达变化的微阵列数据,我们的模型预测了氧摄取减少、ATP 产生变化以及从氧化到还原三羧酸(TCA)程序的全局变化。生物量组成的变化表明需要更多的细胞壁代谢物来促进细胞壁生长,以及在低营养、低代谢活性生活方式之前积累更多的三酰基甘油。相比之下,编码即时低氧反应调节剂 dosR 的缺失突变体的基因表达程序未能适应低氧应激。我们的预测与结核分枝杆菌在低氧和厌氧条件下的最新实验观察结果一致。重要的是,特定代谢物的流动和积累的变化不一定与催化相关代谢反应的酶的差异基因表达直接相关。