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Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance

This is a practical example of a powerful research strategy: putting together data from studies covering a diversity of conditions can yield a scientifically sound grasp of the phenomenon when the individual observations failed to provide definitive understanding. The rationale is that defining a re...

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Autores principales: Raymond, G. M., Bassingthwaighte, J. B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4905731/
https://www.ncbi.nlm.nih.gov/pubmed/27308260
http://dx.doi.org/10.9734/BJPR/2015/19156
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author Raymond, G. M.
Bassingthwaighte, J. B.
author_facet Raymond, G. M.
Bassingthwaighte, J. B.
author_sort Raymond, G. M.
collection PubMed
description This is a practical example of a powerful research strategy: putting together data from studies covering a diversity of conditions can yield a scientifically sound grasp of the phenomenon when the individual observations failed to provide definitive understanding. The rationale is that defining a realistic, quantitative, explanatory hypothesis for the whole set of studies, brings about a “consilience” of the often competing hypotheses considered for individual data sets. An internally consistent conjecture linking multiple data sets simultaneously provides stronger evidence on the characteristics of a system than does analysis of individual data sets limited to narrow ranges of conditions. Our example examines three very different data sets on the clearance of salicylic acid from humans: a high concentration set from aspirin overdoses; a set with medium concentrations from a research study on the influences of the route of administration and of sex on the clearance kinetics, and a set on low dose aspirin for cardiovascular health. Three models were tested: (1) a first order reaction, (2) a Michaelis-Menten (M-M) approach, and (3) an enzyme kinetic model with forward and backward reactions. The reaction rates found from model 1 were distinctly different for the three data sets, having no commonality. The M-M model 2 fitted each of the three data sets but gave a reliable estimates of the Michaelis constant only for the medium level data (K(m) = 24±5.4 mg/L); analyzing the three data sets together with model 2 gave K(m) = 18±2.6 mg/L. (Estimating parameters using larger numbers of data points in an optimization increases the degrees of freedom, constraining the range of the estimates). Using the enzyme kinetic model (3) increased the number of free parameters but nevertheless improved the goodness of fit to the combined data sets, giving tighter constraints, and a lower estimated K(m) = 14.6±2.9 mg/L, demonstrating that fitting diverse data sets with a single model improves confidence in the results. This modeling effort is also an example of reproducible science available at html://www.physiome.org/jsim/models/webmodel/NSR/SalicylicAcidClearance
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spelling pubmed-49057312016-06-13 Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance Raymond, G. M. Bassingthwaighte, J. B. Br J Pharm Res Article This is a practical example of a powerful research strategy: putting together data from studies covering a diversity of conditions can yield a scientifically sound grasp of the phenomenon when the individual observations failed to provide definitive understanding. The rationale is that defining a realistic, quantitative, explanatory hypothesis for the whole set of studies, brings about a “consilience” of the often competing hypotheses considered for individual data sets. An internally consistent conjecture linking multiple data sets simultaneously provides stronger evidence on the characteristics of a system than does analysis of individual data sets limited to narrow ranges of conditions. Our example examines three very different data sets on the clearance of salicylic acid from humans: a high concentration set from aspirin overdoses; a set with medium concentrations from a research study on the influences of the route of administration and of sex on the clearance kinetics, and a set on low dose aspirin for cardiovascular health. Three models were tested: (1) a first order reaction, (2) a Michaelis-Menten (M-M) approach, and (3) an enzyme kinetic model with forward and backward reactions. The reaction rates found from model 1 were distinctly different for the three data sets, having no commonality. The M-M model 2 fitted each of the three data sets but gave a reliable estimates of the Michaelis constant only for the medium level data (K(m) = 24±5.4 mg/L); analyzing the three data sets together with model 2 gave K(m) = 18±2.6 mg/L. (Estimating parameters using larger numbers of data points in an optimization increases the degrees of freedom, constraining the range of the estimates). Using the enzyme kinetic model (3) increased the number of free parameters but nevertheless improved the goodness of fit to the combined data sets, giving tighter constraints, and a lower estimated K(m) = 14.6±2.9 mg/L, demonstrating that fitting diverse data sets with a single model improves confidence in the results. This modeling effort is also an example of reproducible science available at html://www.physiome.org/jsim/models/webmodel/NSR/SalicylicAcidClearance 2015 /pmc/articles/PMC4905731/ /pubmed/27308260 http://dx.doi.org/10.9734/BJPR/2015/19156 Text en This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Article
Raymond, G. M.
Bassingthwaighte, J. B.
Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance
title Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance
title_full Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance
title_fullStr Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance
title_full_unstemmed Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance
title_short Diverse Data Sets Can Yield Reliable Information through Mechanistic Modeling: Salicylic Acid Clearance
title_sort diverse data sets can yield reliable information through mechanistic modeling: salicylic acid clearance
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4905731/
https://www.ncbi.nlm.nih.gov/pubmed/27308260
http://dx.doi.org/10.9734/BJPR/2015/19156
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