Sensitivity analysis of signaling pathway models based on discrete-time measurements

The paper is focused on sensitivity analysis of large-scale models of biological systems that describe dynamics of the so called signaling pathways. These systems are continuous in time but their models are based on discrete-time measurements. Therefore, if sensitivity analysis is used as a tool sup...

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Main Authors: Kardynska Malgorzata, Smieja Jaroslaw
Format: Article
Language:English
Published: Polish Academy of Sciences 2017-06-01
Series:Archives of Control Sciences
Subjects:
Online Access:http://www.degruyter.com/view/j/acsc.2017.27.issue-2/acsc-2017-0015/acsc-2017-0015.xml?format=INT
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spelling doaj-bf6fb6f8c1d64e31abd8f244dec207ca2020-11-25T02:50:01ZengPolish Academy of SciencesArchives of Control Sciences2300-26112017-06-0127223925010.1515/acsc-2017-0015acsc-2017-0015Sensitivity analysis of signaling pathway models based on discrete-time measurementsKardynska Malgorzata0Smieja Jaroslaw1Institute of Automatic Control, Silesian University of Technology, Akademicka str. 16, 44-100Gliwice, Poland.Institute of Automatic Control, Silesian University of Technology, Akademicka str. 16, 44-100Gliwice, Poland.The paper is focused on sensitivity analysis of large-scale models of biological systems that describe dynamics of the so called signaling pathways. These systems are continuous in time but their models are based on discrete-time measurements. Therefore, if sensitivity analysis is used as a tool supporting model development and evaluation of its quality, it should take this fact into account. Such models are usually very complex and include many parameters difficult to estimate in an experimental way. Changes of many of those parameters have little effect on model dynamics, and therefore they are called sloppy. In contrast, other parameters, when changed, lead to substantial changes in model responses and these are called stiff parameters. While this is a well-known fact, and there are methods to discern sloppy parameters from the stiff ones, they have not been utilized, so far, to create parameter rankings and quantify the influence of single parameter changes on system time responses. These single parameter changes are particularly important in analysis of signalling pathways, because they may pinpoint parameters, associated with the processes to be targeted at the molecular level in laboratory experiments. In the paper we present a new, original method of creating parameter rankings, based on an Hessian of a cost function which describes the fit of the model to a discrete experimental data. Its application is explained with simple dynamical systems, representing two typical dynamics exhibited by the signaling pathways.http://www.degruyter.com/view/j/acsc.2017.27.issue-2/acsc-2017-0015/acsc-2017-0015.xml?format=INTsensitivity analysissignaling pathwaysmeasurement uncertaintydiscretetime measurements
collection DOAJ
language English
format Article
sources DOAJ
author Kardynska Malgorzata
Smieja Jaroslaw
spellingShingle Kardynska Malgorzata
Smieja Jaroslaw
Sensitivity analysis of signaling pathway models based on discrete-time measurements
Archives of Control Sciences
sensitivity analysis
signaling pathways
measurement uncertainty
discretetime measurements
author_facet Kardynska Malgorzata
Smieja Jaroslaw
author_sort Kardynska Malgorzata
title Sensitivity analysis of signaling pathway models based on discrete-time measurements
title_short Sensitivity analysis of signaling pathway models based on discrete-time measurements
title_full Sensitivity analysis of signaling pathway models based on discrete-time measurements
title_fullStr Sensitivity analysis of signaling pathway models based on discrete-time measurements
title_full_unstemmed Sensitivity analysis of signaling pathway models based on discrete-time measurements
title_sort sensitivity analysis of signaling pathway models based on discrete-time measurements
publisher Polish Academy of Sciences
series Archives of Control Sciences
issn 2300-2611
publishDate 2017-06-01
description The paper is focused on sensitivity analysis of large-scale models of biological systems that describe dynamics of the so called signaling pathways. These systems are continuous in time but their models are based on discrete-time measurements. Therefore, if sensitivity analysis is used as a tool supporting model development and evaluation of its quality, it should take this fact into account. Such models are usually very complex and include many parameters difficult to estimate in an experimental way. Changes of many of those parameters have little effect on model dynamics, and therefore they are called sloppy. In contrast, other parameters, when changed, lead to substantial changes in model responses and these are called stiff parameters. While this is a well-known fact, and there are methods to discern sloppy parameters from the stiff ones, they have not been utilized, so far, to create parameter rankings and quantify the influence of single parameter changes on system time responses. These single parameter changes are particularly important in analysis of signalling pathways, because they may pinpoint parameters, associated with the processes to be targeted at the molecular level in laboratory experiments. In the paper we present a new, original method of creating parameter rankings, based on an Hessian of a cost function which describes the fit of the model to a discrete experimental data. Its application is explained with simple dynamical systems, representing two typical dynamics exhibited by the signaling pathways.
topic sensitivity analysis
signaling pathways
measurement uncertainty
discretetime measurements
url http://www.degruyter.com/view/j/acsc.2017.27.issue-2/acsc-2017-0015/acsc-2017-0015.xml?format=INT
work_keys_str_mv AT kardynskamalgorzata sensitivityanalysisofsignalingpathwaymodelsbasedondiscretetimemeasurements
AT smiejajaroslaw sensitivityanalysisofsignalingpathwaymodelsbasedondiscretetimemeasurements
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