Resources

Potential Scenario

2012-Transtrum-Qiu-Optimal experiment selection for parameter estimation in biological differential equation models

Author(s): Mark Transtrum

NA

Keywords: experimental design systems biology Association & Data Fitting reaction rates decay rates

175 total view(s), 47 download(s)

Abstract

Resource Image We explore the question to what extent parameters can be efficiently estimated by appropriate experimental selection.

Citation

Researchers should cite this work as follows:

Article Context

Resource Type
Differential Equation Type
Technique
Qualitative Analysis
Application Area
Course
Course Level
Lesson Length
Technology
Approach
Skills

Description

Transtrum, Mark K and Peng Qiu. 2012. Optimal experiment selection for parameter estimation in biological differential equation models. Bioinformatics.  13(181): 1-12.

See https://bmcbioinformatics.biomedcentral.com/articles/10.1186/1471-2105-13-181 . Accessed 28 March 2023.

Abstract
Background: Parameter estimation in biological models is a common yet challenging problem. In this work we explore the problem for gene regulatory networks modeled by differential equations with unknown parameters, such as decay rates, reaction rates, Michaelis-Menten constants, and Hill coefficients. We explore the question to what extent parameters can be efficiently estimated by appropriate experimental selection.

Results: A minimization formulation is used to find the parameter values that best fit the experiment data. When the data is insufficient, the minimization problem often has many local minima that fit the data reasonably well. We show that selecting a new experiment based on the local Fisher Information of one local minimum generates additional data that allows one to successfully discriminate among the many local minima. The parameters can be estimated to high accuracy by iteratively performing minimization and experiment selection. We show that the experiment choices are roughly independent of which local minima is used to calculate the local Fisher Information.

Conclusions: We show that by an appropriate choice of experiments, one can, in principle, efficiently and accurately estimate all the parameters of gene regulatory network. In addition, we demonstrate that appropriate experiment selection can also allow one to restrict model predictions without constraining the parameters using many fewer experiments. We suggest that predicting model behaviors and inferring parameters represent two different approaches to model calibration with different requirements on data and experimental cost.

Keywords: systems biology, differential equation models, experimental design, parameter estimation, data fitting

 

Article Files

Authors

Author(s): Mark Transtrum

NA

Comments

Comments

There are no comments on this resource.