Determining the sensitivity of certain system states or outputs to variations in parameters facilitates our understanding of the inner working of that system and is an essential design tool for the de novo construction of robust systems. In cell biology, the output of interest is often the response of a certain reaction network to some input (e.g., stressors or nutrients) and one aims to quantify the sensitivity of this response in the presence of parameter heterogeneity. We argue that for such applications, parametric sensitivities in their standard form do not paint a complete picture of a system’s robustness since one assumes that all cells in the population have the same parameters and are perturbed in the same way. Here, we consider st...
Sensitivity Analysis (SA) provides techniques which can be used to identify the parameters which hav...
Stochastic dynamical system models are often used to help understand the behavior of intracellular b...
AbstractCellular processes are noisy due to the stochastic nature of biochemical reactions. As such,...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Background: Stochastic modeling and simulation provide powerful predictive methods for the intrinsic...
Background Stochastic modeling and simulation provide powerful predictive methods for the intrinsic ...
<div><p>Existing sensitivity analysis approaches are not able to handle efficiently stochastic react...
Existing sensitivity analysis approaches are not able to handle efficiently stochastic reaction netw...
A key objective of systems biology is to understand how the uncertainty in parameter values affects ...
Stochastic models for chemical reaction networks have become very popular in recent years. For such ...
Sensitivity analysis for stochastic chemical reaction networks with multiple time-scales Ankit Gupta...
Funding: This research was funded by the BBSRC Grant BB/K003097/1 (Systems Biology Analysis of Biolo...
<div><p>Most biological models of intermediate size, and probably all large models, need to cope wit...
The robustness of mathematical models for biological systems is studied by sensitivity analysis and ...
Sensitivity Analysis (SA) provides techniques which can be used to identify the parameters which hav...
Stochastic dynamical system models are often used to help understand the behavior of intracellular b...
AbstractCellular processes are noisy due to the stochastic nature of biochemical reactions. As such,...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Background: Stochastic modeling and simulation provide powerful predictive methods for the intrinsic...
Background Stochastic modeling and simulation provide powerful predictive methods for the intrinsic ...
<div><p>Existing sensitivity analysis approaches are not able to handle efficiently stochastic react...
Existing sensitivity analysis approaches are not able to handle efficiently stochastic reaction netw...
A key objective of systems biology is to understand how the uncertainty in parameter values affects ...
Stochastic models for chemical reaction networks have become very popular in recent years. For such ...
Sensitivity analysis for stochastic chemical reaction networks with multiple time-scales Ankit Gupta...
Funding: This research was funded by the BBSRC Grant BB/K003097/1 (Systems Biology Analysis of Biolo...
<div><p>Most biological models of intermediate size, and probably all large models, need to cope wit...
The robustness of mathematical models for biological systems is studied by sensitivity analysis and ...
Sensitivity Analysis (SA) provides techniques which can be used to identify the parameters which hav...
Stochastic dynamical system models are often used to help understand the behavior of intracellular b...
AbstractCellular processes are noisy due to the stochastic nature of biochemical reactions. As such,...