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Relationship Between Dimensionality and Convergence of Optimization Algorithms: A Comparison Between Data-Driven Normalization and Scaling Factor-Based Methods Using PEPSSBI
Editor(s)
Date Issued
2022
Date Available
2025-03-31T17:03:03Z
Abstract
Ordinary differential equation models are used to represent intracellular signaling pathways in silico, aiding and guiding biological experiments to elucidate intracellular regulation. To construct such quantitative and predictive models of intracellular interactions, unknown parameters need to be estimated. Most of biological data are expressed in relative or arbitrary units, raising the question of how to compare model simulations with data. It has recently been shown that for models with large number of unknown parameters, fitting algorithms using a data-driven normalization of the simulations (DNS) performs best in terms of the convergence time and parameter identifiability. DNS approach compares model simulations and corresponding data both normalized by the same normalization procedure, without requiring additional parameters to be estimated, as necessary for widely used scaling factor-based methods. However, currently there is no parameter estimation software that directly supports DNS. In this chapter, we show how to apply DNS to dynamic models of systems and synthetic biology using PEPSSBI (Parameter Estimation Pipeline for Systems and Synthetic Biology). PEPSSBI is the first software that supports DNS, through algorithmically supported data normalization and objective function construction. PEPSSBI also supports model import using SBML and repeated parameter estimation runs executed in parallel either on a personal computer or a multi-CPU cluster.
Sponsorship
European Commission Horizon 2020
Other Sponsorship
EC Framework (FP7)
Type of Material
Book Chapter
Publisher
Springer
Series
Methods in Molecular Biology book series
Volume 2385
Copyright (Published Version)
2022 Springer Science+Business Media
Language
English
Status of Item
Peer reviewed
Journal
Vanhaelen, Q. (eds.). Computational Methods for Estimating the Kinetic Parameters of Biological Systems
ISBN
978-1-0716-1766-3
This item is made available under a Creative Commons License
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MiMB2020_Degasperi_final_CORRECTION.docx
Size
3.82 MB
Format
Unknown
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d8cda9ea50a18b3be85b13fd8a066722
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