Morrissey James, Barberi Gianmarco, Strain Benjamin, Facco Pierantonio, Kontoravdi Cleo
Department of Chemical Engineering, Imperial College London, London, United Kingdom.
CAPE-Lab (Computer-Aided Process Engineering Laboratory), Department of Industrial Engineering, University of Padova, Padova, Italy.
Metab Eng. 2025 Sep;91:130-144. doi: 10.1016/j.ymben.2025.03.010. Epub 2025 Mar 19.
Genome-scale metabolic models (GEMs) have been widely utilized to understand cellular metabolism. The application of GEMs has been advanced by computational methods that enable the prediction and analysis of intracellular metabolic states. However, the accuracy and biological relevance of these predictions often suffer from the many degrees of freedom and scarcity of available data to constrain the models adequately. Here, we introduce Neural-net EXtracellular Trained Flux Balance Analysis, (NEXT-FBA), a novel computational methodology that addresses these limitations by utilizing exometabolomic data to derive biologically relevant constraints for intracellular fluxes in GEMs. We achieve this by training artificial neural networks (ANNs) with exometabolomic data from Chinese hamster ovary (CHO) cells and correlating it with C-labeled intracellular fluxomic data. By capturing the underlying relationships between exometabolomics and cell metabolism, NEXT-FBA predicts upper and lower bounds for intracellular reaction fluxes to constrain GEMs. We demonstrate the efficacy of NEXT-FBA across several validation experiments, where it outperforms existing methods in predicting intracellular flux distributions that align closely with experimental observations. Furthermore, a case study demonstrates how NEXT-FBA can guide bioprocess optimization by identifying key metabolic shifts and refining flux predictions to yield actionable process and metabolic engineering targets. Overall, NEXT-FBA aims to improve the accuracy and biological relevance of intracellular flux predictions in metabolic modelling, with minimal input data requirements for pre-trained models.
基因组规模代谢模型(GEMs)已被广泛用于理解细胞代谢。计算方法推动了GEMs的应用,这些方法能够预测和分析细胞内代谢状态。然而,这些预测的准确性和生物学相关性常常受到模型中众多自由度以及可用数据匮乏的影响,难以充分约束模型。在此,我们引入神经网络细胞外训练通量平衡分析(NEXT-FBA),这是一种新颖的计算方法,通过利用胞外代谢组学数据为GEMs中的细胞内通量推导生物学相关约束,从而解决这些局限性。我们通过用中国仓鼠卵巢(CHO)细胞的胞外代谢组学数据训练人工神经网络(ANNs),并将其与C标记的细胞内通量组学数据相关联来实现这一目标。通过捕捉胞外代谢组学与细胞代谢之间的潜在关系,NEXT-FBA预测细胞内反应通量的上下界以约束GEMs。我们在多个验证实验中证明了NEXT-FBA的有效性,在预测与实验观察结果紧密匹配的细胞内通量分布方面,它优于现有方法。此外,一个案例研究展示了NEXT-FBA如何通过识别关键代谢转变和优化通量预测来指导生物过程优化,从而产生可操作的过程和代谢工程目标。总体而言,NEXT-FBA旨在提高代谢建模中细胞内通量预测的准确性和生物学相关性,对预训练模型的输入数据要求最低。