Accurate quantification of flux uncertainty is critical for validating therapeutic targets, optimizing microbial cell factories, and ensuring the reliability of metabolic models in biomedical research.
This article provides a comprehensive guide for researchers and scientists on optimizing 13C substrate labeling patterns to achieve high-resolution metabolic flux analysis (MFA).
This article provides a comprehensive overview of parallel labeling experiments for 13C metabolic flux analysis (13C-MFA), a powerful methodology for quantifying intracellular metabolic reaction rates.
Accurate genome annotation for non-model organisms is a critical yet challenging frontier in genomics, with profound implications for biomedical and drug discovery research.
This comprehensive guide explores CHESHIRE (CHEbyshev Spectral HyperlInk pREdictor), a deep learning method that predicts missing reactions in Genome-scale Metabolic Models (GEMs) using only metabolic network topology, without requiring experimental...
Flux inconsistent reactions present significant challenges in genome-scale metabolic models (GEMs), undermining predictive accuracy in biomedical and biotechnological applications.
Genome-scale metabolic models (GSMMs) are powerful computational tools for predicting cellular phenotypes, but their accuracy is often limited by metabolic gaps resulting from incomplete genomic annotations and knowledge.
This article provides a comprehensive resource for researchers and scientists on applying Flux Balance Analysis (FBA) to Escherichia coli's central carbon metabolism (CCM).
This article provides a comprehensive overview of Flux Balance Analysis (FBA) as a cornerstone constraint-based modeling approach for elucidating Escherichia coli metabolism.
Flux Balance Analysis (FBA) is a cornerstone of constraint-based modeling, enabling the prediction of metabolic behavior in Escherichia coli, a key organism in biotechnology and biomedical research.