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What Can We Learn from Global Sensitivity Analysis of Biochemical Systems?

Edward Kent, Stefan Neumann, Ursula Kummer, Pedro Mendes

P L o S One. 2013;8(11).

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Abstract

Most biological models of intermediate size, and probably all large models, need to cope with the fact that many of their parameter values are unknown. In addition, it may not be possible to identify these values unambiguously on the basis of experimental data. This poses the question how reliable predictions made using such models are. Sensitivity analysis is commonly used to measure the impact of each model parameter on its variables. However, the results of such analyses can be dependent on an exact set of parameter values due to nonlinearity. To mitigate this problem, global sensitivity analysis techniques are used to calculate parameter sensitivities in a wider parameter space. We applied global sensitivity analysis to a selection of five signalling and metabolic models, several of which incorporate experimentally well-determined parameters. Assuming these models represent physiological reality, we explored how the results could change under increasing amounts of parameter uncertainty. Our results show that parameter sensitivities calculated with the physiological parameter values are not necessarily the most frequently observed under random sampling, even in a small interval around the physiological values. Often multimodal distributions were observed. Unsurprisingly, the range of possible sensitivity coefficient values increased with the level of parameter uncertainty, though the amount of parameter uncertainty at which the pattern of control was able to change differed among the models analysed. We suggest that this level of uncertainty can be used as a global measure of model robustness. Finally a comparison of different global sensitivity analysis techniques shows that, if high-throughput computing resources are available, then random sampling may actually be the most suitable technique.

Bibliographic metadata

Type of resource:
Content type:
Publication status:
Published
Publication type:
Publication form:
Published date:
Accepted date:
2013-09-20
Submitted date:
2013-05-17
Journal title:
Abbreviated journal title:
ISSN:
Publishers website:
http://www.plosone.org/article/info%3Adoi%2F10.1371%2Fjournal.pone.0079244
Volume:
8
Issue:
11
Article number:
e79244
Digital Object Identifier:
10.1371/journal.pone.0079244
Funding awarded to University:
  • BBSRC - RESBBSRC
  • European Commission - GOV30
Funder(s) acknowledged in this article?:
Yes
Research data access statement included:
Yes
Access to research data:
all data is supplied in supplementary files published with the article
Attached files Open Access licence:
Creative Commons Attribution (CC BY)
Attached files embargo period:
Immediate release
Attached files release date:
19th June, 2014
Access state:
Active

Institutional metadata

University researcher(s):

Record metadata

Manchester eScholar ID:
uk-ac-man-scw:227427
Created by:
Pedrosa Mendes, Pedro
Created:
19th June, 2014, 15:06:21
Last modified by:
Pedrosa Mendes, Pedro
Last modified:
19th June, 2014, 15:06:21

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