Abstract Structural identifiability is a binary property that determines whether or not unique parameter values can, in principle, be estimated from error-free input–output data. The many papers that have been written on this topic collectively stress the importance of this a priori analysis in the model development process. The story however, often ends with a structurally unidentifiable model. This may leave a model developer with no plan of action on how to address this potential issue. We continue this model exploration journey by identifying one of the possible sources of a model’s unidentifiability: problematic initial conditions. It is well-known that certain initial values may result in the loss of local structural identifiability. ...
Background: Structural identifiability concerns whether the parameters in a postulated model structu...
Biological system's dynamics are increasingly studied with nonlinear ordinary differential equations...
Structural identifiability analysis of nonlinear dynamic models requires symbolic manipulations, who...
4 pages, 1 figureA parameter is structurally identifiable if its value can theoretically be estimate...
Background: Models of dynamical systems described by ordinary differential equations often contains ...
We may attempt to encapsulate what we know about a physical system by a model structure, S. This col...
The local structural identifiability problem is investigated for the general case and demonstrated f...
Abstract: Dynamic modelling is a powerful tool for studying biological networks. Reachability (contr...
Analysing the properties of a biological system through in silico experimentation requires a satisfa...
A powerful way of gaining insight into biological systems is by creating a nonlinear differential eq...
The notion of identifiability addresses the question of whether it is at all possible to obtain uniq...
A fundamental principle of systems biology is its perpetual need for new technologies that can solve...
Constructing dynamic mathematical models of biological systems requires estimating unknown parameter...
A prerequisite for a well-posed inference problem is that there exists a unique solution for any giv...
Issues of parameter identifiability of routinely used pharmacodynamics models are considered in this...
Background: Structural identifiability concerns whether the parameters in a postulated model structu...
Biological system's dynamics are increasingly studied with nonlinear ordinary differential equations...
Structural identifiability analysis of nonlinear dynamic models requires symbolic manipulations, who...
4 pages, 1 figureA parameter is structurally identifiable if its value can theoretically be estimate...
Background: Models of dynamical systems described by ordinary differential equations often contains ...
We may attempt to encapsulate what we know about a physical system by a model structure, S. This col...
The local structural identifiability problem is investigated for the general case and demonstrated f...
Abstract: Dynamic modelling is a powerful tool for studying biological networks. Reachability (contr...
Analysing the properties of a biological system through in silico experimentation requires a satisfa...
A powerful way of gaining insight into biological systems is by creating a nonlinear differential eq...
The notion of identifiability addresses the question of whether it is at all possible to obtain uniq...
A fundamental principle of systems biology is its perpetual need for new technologies that can solve...
Constructing dynamic mathematical models of biological systems requires estimating unknown parameter...
A prerequisite for a well-posed inference problem is that there exists a unique solution for any giv...
Issues of parameter identifiability of routinely used pharmacodynamics models are considered in this...
Background: Structural identifiability concerns whether the parameters in a postulated model structu...
Biological system's dynamics are increasingly studied with nonlinear ordinary differential equations...
Structural identifiability analysis of nonlinear dynamic models requires symbolic manipulations, who...