Institute for Systems Biology, Seattle, WA, USA.
Center for Systems Biology, University of Iceland, Reykjavik, Iceland.
NPJ Syst Biol Appl. 2021 Dec 6;7(1):43. doi: 10.1038/s41540-021-00205-6.
The ability of Mycobacterium tuberculosis (Mtb) to adopt heterogeneous physiological states underlies its success in evading the immune system and tolerating antibiotic killing. Drug tolerant phenotypes are a major reason why the tuberculosis (TB) mortality rate is so high, with over 1.8 million deaths annually. To develop new TB therapeutics that better treat the infection (faster and more completely), a systems-level approach is needed to reveal the complexity of network-based adaptations of Mtb. Here, we report a new predictive model called PRIME (Phenotype of Regulatory influences Integrated with Metabolism and Environment) to uncover environment-specific vulnerabilities within the regulatory and metabolic networks of Mtb. Through extensive performance evaluations using genome-wide fitness screens, we demonstrate that PRIME makes mechanistically accurate predictions of context-specific vulnerabilities within the integrated regulatory and metabolic networks of Mtb, accurately rank-ordering targets for potentiating treatment with frontline drugs.
结核分枝杆菌(Mtb)能够采用异质生理状态,这是其逃避免疫系统和耐受抗生素杀伤的成功基础。耐药表型是导致结核病(TB)死亡率如此之高的主要原因之一,每年有超过 180 万人因此死亡。为了开发更好地治疗感染的新结核病治疗方法(更快、更彻底),需要采用系统级方法来揭示 Mtb 基于网络的适应性的复杂性。在这里,我们报告了一种称为 PRIME(受调节影响的表型与代谢和环境综合)的新预测模型,以揭示 Mtb 调节和代谢网络中特定于环境的脆弱性。通过使用全基因组适应性筛选进行广泛的性能评估,我们证明 PRIME 可以对 Mtb 综合调节和代谢网络中特定于上下文的脆弱性做出机械上准确的预测,准确地对一线药物治疗的增效目标进行排序。