Mathematical modelling offers a variety of useful techniques to help in understanding the intrinsic behaviour of complex signal transduction networks. From the system engineering point of view, the dynamics of metabolic and signal transduction models can always be described by nonlinear ordinary differential equations (ODEs) following mass balance principles. Based on the state-space formulation, many methods from the area of automatic control can conveniently be applied to the modelling, analysis and design of cell networks. In the present study, dynamic sensitivity analysis is performed on a model of the IB-NF-B signal pathway system. Univariate analysis of the Euclidean-form overall sensitivities shows that only 8 out of the 64 parameter...
Experimental design for cellular networks based on sensitivity analysis is studied in this work. Bot...
Modeling the dynamic behavior of signal transduction pathways is an important topic in systems biolo...
Recent advances in quantification methods of regulatory and signaling gene networks has lead to an i...
Mathematical modelling offers a variety of useful techniques to help in understanding the intrinsic ...
In order to understand the complexity of cellular signaling pathways as nonlinear autonomous systems...
Sensitivity analysis is normally used to analyze how sensitive a system is with respect to the chang...
Systems biology applies quantitative, mechanistic modelling to study genetic networks, signal transd...
Mathematical modeling and dynamic simulation of signal transduction pathways is a central theme in s...
Based on a simplified model of the (TNF-α mediated) IκBα-NF-κB signal transduction pathway, global s...
The paper is focused on sensitivity analysis of large-scale models of biological systems that descri...
Mathematical modeling and dynamic simulation of signal transduction pathways is a central theme in s...
The dynamic behavior of a cell model is affected by its structural complexity and parametric uncerta...
Cell signal transduction network structure and dynamics of complex uncertain parameters affect the d...
In order to study the impact of inner structure of biological systems and variations of correlative ...
In systems biology, models often contain a large number of unknown or only roughly known parameters ...
Experimental design for cellular networks based on sensitivity analysis is studied in this work. Bot...
Modeling the dynamic behavior of signal transduction pathways is an important topic in systems biolo...
Recent advances in quantification methods of regulatory and signaling gene networks has lead to an i...
Mathematical modelling offers a variety of useful techniques to help in understanding the intrinsic ...
In order to understand the complexity of cellular signaling pathways as nonlinear autonomous systems...
Sensitivity analysis is normally used to analyze how sensitive a system is with respect to the chang...
Systems biology applies quantitative, mechanistic modelling to study genetic networks, signal transd...
Mathematical modeling and dynamic simulation of signal transduction pathways is a central theme in s...
Based on a simplified model of the (TNF-α mediated) IκBα-NF-κB signal transduction pathway, global s...
The paper is focused on sensitivity analysis of large-scale models of biological systems that descri...
Mathematical modeling and dynamic simulation of signal transduction pathways is a central theme in s...
The dynamic behavior of a cell model is affected by its structural complexity and parametric uncerta...
Cell signal transduction network structure and dynamics of complex uncertain parameters affect the d...
In order to study the impact of inner structure of biological systems and variations of correlative ...
In systems biology, models often contain a large number of unknown or only roughly known parameters ...
Experimental design for cellular networks based on sensitivity analysis is studied in this work. Bot...
Modeling the dynamic behavior of signal transduction pathways is an important topic in systems biolo...
Recent advances in quantification methods of regulatory and signaling gene networks has lead to an i...