Kumar S Pavan, Bhatt Nirav Pravinbhai
BioSystems Engineering and Control (BiSECt) Lab, Department of Biotechnology, Bhupat and Jyoti Mehta School of Biosciences, Indian Institute of Technology Madras, Chennai, Tamil Nadu, India.
The Centre for Integrative Biology and Systems Medicine (IBSE), Indian Institute of Technology Madras, Chennai, Tamil Nadu, India.
iScience. 2025 Jun 26;28(8):113005. doi: 10.1016/j.isci.2025.113005. eCollection 2025 Aug 15.
Reliable genome-scale metabolic models (GEMs) of metabolic processes are important for understanding cellular behavior. However, the presence of thermodynamically infeasible cycles (TICs) limits their predictive ability. We present ThermOptCOBRA, a comprehensive solution consisting of four algorithms for optimal model construction and analysis that integrate thermodynamic constraints to address TICs. By leveraging network topology, ThermOptCOBRA efficiently identifies TICs in 7,401 published models. It determines thermodynamically feasible flux directions, thereby detecting the blocked reactions, which yields more refined models with fewer TICs. Furthermore, it constructs thermodynamically consistent context-specific models that are compact in comparison to Fastcore in 80% of cases. ThermOptCOBRA also facilitates efficient loop detection and removal from flux distributions, improving predictive accuracy across flux analysis methods. Moreover, it enhances sampling algorithms by enabling loopless sample generation. In summary, ThermOptCOBRA significantly improves TIC handling in GEMs, advancing metabolic model quality for deeper insights into cellular metabolism.
可靠的代谢过程基因组规模代谢模型(GEMs)对于理解细胞行为至关重要。然而,热力学上不可行的循环(TICs)的存在限制了它们的预测能力。我们提出了ThermOptCOBRA,这是一个由四种算法组成的综合解决方案,用于最佳模型构建和分析,该方案整合了热力学约束以解决TICs问题。通过利用网络拓扑结构,ThermOptCOBRA在7401个已发表的模型中有效地识别出TICs。它确定热力学上可行的通量方向,从而检测出受阻反应,从而产生具有更少TICs的更精细模型。此外,它构建了热力学一致的上下文特异性模型,在80%的情况下,这些模型与Fastcore相比更为紧凑。ThermOptCOBRA还便于从通量分布中进行高效的环检测和去除,提高了各种通量分析方法的预测准确性。此外,它通过实现无环样本生成增强了采样算法。总之,ThermOptCOBRA显著改善了GEMs中TICs的处理,提高了代谢模型质量,以便更深入地洞察细胞代谢。