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**Harvard**

Andersson, R., Jirstrand, M. och Gabrielsson, J. (2014) *Dose-response-time data analysis of nicotinic acid-induced changes in non-esterified fatty acids in rats*.

** BibTeX **

@conference{

Andersson2014,

author={Andersson, Robert and Jirstrand, Mats and Gabrielsson, Johan},

title={Dose-response-time data analysis of nicotinic acid-induced changes in non-esterified fatty acids in rats},

booktitle={In proceedings of PKUK 2014},

abstract={Background: Structural identifiability concerns whether the parameters in a postulated model structure can be uniquely determined given the input and output functions to and from that model. What this means in practice is that if a model is structurally unidentifiable, the model structure itself allows a subset (or all) of the model parameters to vary while the model output remains unchanged. Conclusions drawn from such a model are potentially unreliable. For instance, if the estimated value of Emax is of interest, but if Emax is a member of the subset of unidentifiable parameters as a result of the model structure, the estimated value of Emax is effectively meaningless. For deterministic models, there exist several different structural identifiability analysis techniques for both linear and nonlinear systems. However, little has been done on the identifiability analysis of models having a mixed-effects framework. Here the main challenge comes from the fact that, apart from having a deterministic part describing the typical individual, there is also an additional statistical sub-model describing the random effects for the parameters and the covariance between them. In population modelling, these parameters represent the variability in the population. Since estimation of the variability is often one of the main goals in population modelling, it is important to determine whether these parameters can be uniquely determined or otherwise. This motivates the need to extend the concept of structural identifiability for deterministic models to non-deterministic models such as mixed-effects models.
Aim: To develop ways of analysing structural identifiability in mixed-effects models. Methods: In statistics, and in particular statistical inference, there exist problems which are similar to those encountered in parameter estimation for mixed-effect models. In this work, we make use of these similarities and use these relevant relations to study structural identifiability in mixed-effects models.
Results: Some initial results from a structural identifiability analysis on a particular mixed-effects model structure are presented.},

year={2014},

}

** RefWorks **

RT Conference Proceedings

SR Electronic

ID 210773

A1 Andersson, Robert

A1 Jirstrand, Mats

A1 Gabrielsson, Johan

T1 Dose-response-time data analysis of nicotinic acid-induced changes in non-esterified fatty acids in rats

YR 2014

T2 In proceedings of PKUK 2014

AB Background: Structural identifiability concerns whether the parameters in a postulated model structure can be uniquely determined given the input and output functions to and from that model. What this means in practice is that if a model is structurally unidentifiable, the model structure itself allows a subset (or all) of the model parameters to vary while the model output remains unchanged. Conclusions drawn from such a model are potentially unreliable. For instance, if the estimated value of Emax is of interest, but if Emax is a member of the subset of unidentifiable parameters as a result of the model structure, the estimated value of Emax is effectively meaningless. For deterministic models, there exist several different structural identifiability analysis techniques for both linear and nonlinear systems. However, little has been done on the identifiability analysis of models having a mixed-effects framework. Here the main challenge comes from the fact that, apart from having a deterministic part describing the typical individual, there is also an additional statistical sub-model describing the random effects for the parameters and the covariance between them. In population modelling, these parameters represent the variability in the population. Since estimation of the variability is often one of the main goals in population modelling, it is important to determine whether these parameters can be uniquely determined or otherwise. This motivates the need to extend the concept of structural identifiability for deterministic models to non-deterministic models such as mixed-effects models.
Aim: To develop ways of analysing structural identifiability in mixed-effects models. Methods: In statistics, and in particular statistical inference, there exist problems which are similar to those encountered in parameter estimation for mixed-effect models. In this work, we make use of these similarities and use these relevant relations to study structural identifiability in mixed-effects models.
Results: Some initial results from a structural identifiability analysis on a particular mixed-effects model structure are presented.

LA eng

LK http://www.pkuk.org.uk/ContentImages/PKUK_2014_Programme_and_Abstractsnew.pdf

OL 30