AbstractThe ability to characterize biological dynamics is important for understanding the integrated molecular processes that underlie normal and abnormal cellular states. The availability of metabolomic data, in addition to new developments in the formal description of dynamic states of networks, has enabled a new data integration approach for building large-scale kinetic networks. We show that dynamic network models can be constructed in a scalable manner using metabolomic data mapped onto stoichiometric models, resulting in mass action stoichiometric simulation (MASS) models. Enzymes and their various functional states are represented explicitly as compounds, or nodes in a stoichiometric network, within this formalism. Analyses and simu...
Mathematical models of biological networks play an important role in metabolic engineering through t...
While the stoichiometry of metabolism is probably the best studied cellular level, the dynamics in m...
Integrative analysis between dynamical modeling of metabolic networks and data obtained from high th...
AbstractThe ability to characterize biological dynamics is important for understanding the integrate...
Mathematical modeling is an essential tool for a comprehensive understanding of cell metabolism and ...
Analysis of the dynamic and steady-state properties of biochemical networks hinges on information ab...
Mathematical models of metabolic networks utilize simulation to study system-level mechanisms and fu...
Copyright © The Author(s) 2017. Background Advances in bioinformatic techniques and analyses hav...
The quantitative effects of environmental and genetic perturbations on metabolism can be studied in ...
Mathematical models of metabolic networks utilize simulation to study system-level mechanisms and fu...
<div><p>The quantitative effects of environmental and genetic perturbations on metabolism can be stu...
Mechanistic (also called kinetic) models quantitatively describe dynamic and steady states of bioche...
The quantitative effects of environmental and genetic perturbations on metabolism can be studied in ...
AbstractComplete modeling of metabolic networks is desirable, but it is difficult to accomplish beca...
Detailed kinetic models at the network reaction level are usually constructed using enzymatic mechan...
Mathematical models of biological networks play an important role in metabolic engineering through t...
While the stoichiometry of metabolism is probably the best studied cellular level, the dynamics in m...
Integrative analysis between dynamical modeling of metabolic networks and data obtained from high th...
AbstractThe ability to characterize biological dynamics is important for understanding the integrate...
Mathematical modeling is an essential tool for a comprehensive understanding of cell metabolism and ...
Analysis of the dynamic and steady-state properties of biochemical networks hinges on information ab...
Mathematical models of metabolic networks utilize simulation to study system-level mechanisms and fu...
Copyright © The Author(s) 2017. Background Advances in bioinformatic techniques and analyses hav...
The quantitative effects of environmental and genetic perturbations on metabolism can be studied in ...
Mathematical models of metabolic networks utilize simulation to study system-level mechanisms and fu...
<div><p>The quantitative effects of environmental and genetic perturbations on metabolism can be stu...
Mechanistic (also called kinetic) models quantitatively describe dynamic and steady states of bioche...
The quantitative effects of environmental and genetic perturbations on metabolism can be studied in ...
AbstractComplete modeling of metabolic networks is desirable, but it is difficult to accomplish beca...
Detailed kinetic models at the network reaction level are usually constructed using enzymatic mechan...
Mathematical models of biological networks play an important role in metabolic engineering through t...
While the stoichiometry of metabolism is probably the best studied cellular level, the dynamics in m...
Integrative analysis between dynamical modeling of metabolic networks and data obtained from high th...