Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.

BACKGROUND: Heidenreich et al. (Risk Anal 1997 17 391-399) considered parameter identifiability in the context of the two-mutation cancer model and demonstrated that combinations of all but two of the model parameters are identifiable. We consider the problem of identifiability in the recently devel...

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Main Authors: Mark P Little, Wolfgang F Heidenreich, Guangquan Li
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2009-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC2797326?pdf=render
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spelling doaj-4e3f9f0b0b004cea80a6cbcc259567a52020-11-25T01:45:56ZengPublic Library of Science (PLoS)PLoS ONE1932-62032009-01-01412e852010.1371/journal.pone.0008520Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.Mark P LittleWolfgang F HeidenreichGuangquan LiBACKGROUND: Heidenreich et al. (Risk Anal 1997 17 391-399) considered parameter identifiability in the context of the two-mutation cancer model and demonstrated that combinations of all but two of the model parameters are identifiable. We consider the problem of identifiability in the recently developed carcinogenesis models of Little and Wright (Math Biosci 2003 183 111-134) and Little et al. (J Theoret Biol 2008 254 229-238). These models, which incorporate genomic instability, generalize a large number of other quasi-biological cancer models, in particular those of Armitage and Doll (Br J Cancer 1954 8 1-12), the two-mutation model (Moolgavkar et al. Math Biosci 1979 47 55-77), the generalized multistage model of Little (Biometrics 1995 51 1278-1291), and a recently developed cancer model of Nowak et al. (PNAS 2002 99 16226-16231). METHODOLOGY/PRINCIPAL FINDINGS: We show that in the simpler model proposed by Little and Wright (Math Biosci 2003 183 111-134) the number of identifiable combinations of parameters is at most two less than the number of biological parameters, thereby generalizing previous results of Heidenreich et al. (Risk Anal 1997 17 391-399) for the two-mutation model. For the more general model of Little et al. (J Theoret Biol 2008 254 229-238) the number of identifiable combinations of parameters is at most less than the number of biological parameters, where is the number of destabilization types, thereby also generalizing all these results. Numerical evaluations suggest that these bounds are sharp. We also identify particular combinations of identifiable parameters. CONCLUSIONS/SIGNIFICANCE: We have shown that the previous results on parameter identifiability can be generalized to much larger classes of quasi-biological carcinogenesis model, and also identify particular combinations of identifiable parameters. These results are of theoretical interest, but also of practical significance to anyone attempting to estimate parameters for this large class of cancer models.http://europepmc.org/articles/PMC2797326?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Mark P Little
Wolfgang F Heidenreich
Guangquan Li
spellingShingle Mark P Little
Wolfgang F Heidenreich
Guangquan Li
Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.
PLoS ONE
author_facet Mark P Little
Wolfgang F Heidenreich
Guangquan Li
author_sort Mark P Little
title Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.
title_short Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.
title_full Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.
title_fullStr Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.
title_full_unstemmed Parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.
title_sort parameter identifiability and redundancy in a general class of stochastic carcinogenesis models.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2009-01-01
description BACKGROUND: Heidenreich et al. (Risk Anal 1997 17 391-399) considered parameter identifiability in the context of the two-mutation cancer model and demonstrated that combinations of all but two of the model parameters are identifiable. We consider the problem of identifiability in the recently developed carcinogenesis models of Little and Wright (Math Biosci 2003 183 111-134) and Little et al. (J Theoret Biol 2008 254 229-238). These models, which incorporate genomic instability, generalize a large number of other quasi-biological cancer models, in particular those of Armitage and Doll (Br J Cancer 1954 8 1-12), the two-mutation model (Moolgavkar et al. Math Biosci 1979 47 55-77), the generalized multistage model of Little (Biometrics 1995 51 1278-1291), and a recently developed cancer model of Nowak et al. (PNAS 2002 99 16226-16231). METHODOLOGY/PRINCIPAL FINDINGS: We show that in the simpler model proposed by Little and Wright (Math Biosci 2003 183 111-134) the number of identifiable combinations of parameters is at most two less than the number of biological parameters, thereby generalizing previous results of Heidenreich et al. (Risk Anal 1997 17 391-399) for the two-mutation model. For the more general model of Little et al. (J Theoret Biol 2008 254 229-238) the number of identifiable combinations of parameters is at most less than the number of biological parameters, where is the number of destabilization types, thereby also generalizing all these results. Numerical evaluations suggest that these bounds are sharp. We also identify particular combinations of identifiable parameters. CONCLUSIONS/SIGNIFICANCE: We have shown that the previous results on parameter identifiability can be generalized to much larger classes of quasi-biological carcinogenesis model, and also identify particular combinations of identifiable parameters. These results are of theoretical interest, but also of practical significance to anyone attempting to estimate parameters for this large class of cancer models.
url http://europepmc.org/articles/PMC2797326?pdf=render
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