ΔFBA-Predicting metabolic flux alterations using genome-scale metabolic models and differential transcriptomic data.
Sudharshan RaviRudiyanto GunawanPublished in: PLoS computational biology (2021)
Genome-scale metabolic models (GEMs) provide a powerful framework for simulating the entire set of biochemical reactions in a cell using a constraint-based modeling strategy called flux balance analysis (FBA). FBA relies on an assumed metabolic objective for generating metabolic fluxes using GEMs. But, the most appropriate metabolic objective is not always obvious for a given condition and is likely context-specific, which often complicate the estimation of metabolic flux alterations between conditions. Here, we propose a new method, called ΔFBA (deltaFBA), that integrates differential gene expression data to evaluate directly metabolic flux differences between two conditions. Notably, ΔFBA does not require specifying the cellular objective. Rather, ΔFBA seeks to maximize the consistency and minimize inconsistency between the predicted flux differences and differential gene expression. We showcased the performance of ΔFBA through several case studies involving the prediction of metabolic alterations caused by genetic and environmental perturbations in Escherichia coli and caused by Type-2 diabetes in human muscle. Importantly, in comparison to existing methods, ΔFBA gives a more accurate prediction of flux differences.
Keyphrases
- gene expression
- type diabetes
- escherichia coli
- dna methylation
- cardiovascular disease
- stem cells
- endothelial cells
- machine learning
- metabolic syndrome
- electronic health record
- mesenchymal stem cells
- glycemic control
- bone marrow
- skeletal muscle
- cystic fibrosis
- pseudomonas aeruginosa
- big data
- climate change
- multidrug resistant
- weight loss
- copy number
- human health