In systems biology, one of the major tasks is to tailor model complexity to information content of the data. A useful model should describe the data and produce well-determined parameter estimates and predictions. Too small of a model will not be able to describe the data whereas a model which is too large tends to overfit measurement errors and does not provide precise predictions. Typically, the model is modified and tuned to fit the data, which often results in an oversized model. To restore the balance between model complexity and available measurements, either new data has to be gathered or the model has to be reduced. In this manuscript, we present a data-based method for reducing non-linear models. The profile likelihood is utilised ...
Background: Predicting a system's behavior based on a mathematical model is a primary task in Sy...
Scientists use mathematical modelling as a tool for understanding and predicting the properties of c...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
<div><p>In systems biology, one of the major tasks is to tailor model complexity to information cont...
Rational selection of experimental readout and intervention sites for reducing uncertainties in comp...
Inferring knowledge about biological processes by a mathematical description is a major characterist...
Ordinary differential equation (ODE) models are often used to quantitatively describe and predict th...
Practical identifiability of Systems Biology models has received a lot of attention in recent scient...
Background: Predicting a systems behavior based on a mathematical model is a primary task in Systems...
Various modifications of the profile likelihood have been proposed over the past 20 years. Their mai...
Various modifications of the profile likelihood have been proposed over the past twenty years. Their...
Estimating model parameters is a crucial step in mathematical modelling and typically involves minim...
doi:10.1111/febs.12276 Inferring knowledge about biological processes by a mathematical descrip-tion...
We consider a general scheme for reduction and identification of dynamic models using available expe...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Background: Predicting a system's behavior based on a mathematical model is a primary task in Sy...
Scientists use mathematical modelling as a tool for understanding and predicting the properties of c...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
<div><p>In systems biology, one of the major tasks is to tailor model complexity to information cont...
Rational selection of experimental readout and intervention sites for reducing uncertainties in comp...
Inferring knowledge about biological processes by a mathematical description is a major characterist...
Ordinary differential equation (ODE) models are often used to quantitatively describe and predict th...
Practical identifiability of Systems Biology models has received a lot of attention in recent scient...
Background: Predicting a systems behavior based on a mathematical model is a primary task in Systems...
Various modifications of the profile likelihood have been proposed over the past 20 years. Their mai...
Various modifications of the profile likelihood have been proposed over the past twenty years. Their...
Estimating model parameters is a crucial step in mathematical modelling and typically involves minim...
doi:10.1111/febs.12276 Inferring knowledge about biological processes by a mathematical descrip-tion...
We consider a general scheme for reduction and identification of dynamic models using available expe...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Background: Predicting a system's behavior based on a mathematical model is a primary task in Sy...
Scientists use mathematical modelling as a tool for understanding and predicting the properties of c...
Biochemical systems involving a high number of components with intricate interactions often lead to ...