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Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors

Tumor growth curves are classically modeled by means of ordinary differential equations. In analyzing the Gompertz model several studies have reported a striking correlation between the two parameters of the model, which could be used to reduce the dimensionality and improve predictive power. We ana...

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Autores principales: Vaghi, Cristina, Rodallec, Anne, Fanciullino, Raphaëlle, Ciccolini, Joseph, Mochel, Jonathan P., Mastri, Michalis, Poignard, Clair, Ebos, John M. L., Benzekry, Sébastien
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7059968/
https://www.ncbi.nlm.nih.gov/pubmed/32097421
http://dx.doi.org/10.1371/journal.pcbi.1007178
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author Vaghi, Cristina
Rodallec, Anne
Fanciullino, Raphaëlle
Ciccolini, Joseph
Mochel, Jonathan P.
Mastri, Michalis
Poignard, Clair
Ebos, John M. L.
Benzekry, Sébastien
author_facet Vaghi, Cristina
Rodallec, Anne
Fanciullino, Raphaëlle
Ciccolini, Joseph
Mochel, Jonathan P.
Mastri, Michalis
Poignard, Clair
Ebos, John M. L.
Benzekry, Sébastien
author_sort Vaghi, Cristina
collection PubMed
description Tumor growth curves are classically modeled by means of ordinary differential equations. In analyzing the Gompertz model several studies have reported a striking correlation between the two parameters of the model, which could be used to reduce the dimensionality and improve predictive power. We analyzed tumor growth kinetics within the statistical framework of nonlinear mixed-effects (population approach). This allowed the simultaneous modeling of tumor dynamics and inter-animal variability. Experimental data comprised three animal models of breast and lung cancers, with 833 measurements in 94 animals. Candidate models of tumor growth included the exponential, logistic and Gompertz models. The exponential and—more notably—logistic models failed to describe the experimental data whereas the Gompertz model generated very good fits. The previously reported population-level correlation between the Gompertz parameters was further confirmed in our analysis (R(2) > 0.92 in all groups). Combining this structural correlation with rigorous population parameter estimation, we propose a reduced Gompertz function consisting of a single individual parameter (and one population parameter). Leveraging the population approach using Bayesian inference, we estimated times of tumor initiation using three late measurement timepoints. The reduced Gompertz model was found to exhibit the best results, with drastic improvements when using Bayesian inference as compared to likelihood maximization alone, for both accuracy and precision. Specifically, mean accuracy (prediction error) was 12.2% versus 78% and mean precision (width of the 95% prediction interval) was 15.6 days versus 210 days, for the breast cancer cell line. These results demonstrate the superior predictive power of the reduced Gompertz model, especially when combined with Bayesian estimation. They offer possible clinical perspectives for personalized prediction of the age of a tumor from limited data at diagnosis. The code and data used in our analysis are publicly available at https://github.com/cristinavaghi/plumky.
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spelling pubmed-70599682020-03-12 Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors Vaghi, Cristina Rodallec, Anne Fanciullino, Raphaëlle Ciccolini, Joseph Mochel, Jonathan P. Mastri, Michalis Poignard, Clair Ebos, John M. L. Benzekry, Sébastien PLoS Comput Biol Research Article Tumor growth curves are classically modeled by means of ordinary differential equations. In analyzing the Gompertz model several studies have reported a striking correlation between the two parameters of the model, which could be used to reduce the dimensionality and improve predictive power. We analyzed tumor growth kinetics within the statistical framework of nonlinear mixed-effects (population approach). This allowed the simultaneous modeling of tumor dynamics and inter-animal variability. Experimental data comprised three animal models of breast and lung cancers, with 833 measurements in 94 animals. Candidate models of tumor growth included the exponential, logistic and Gompertz models. The exponential and—more notably—logistic models failed to describe the experimental data whereas the Gompertz model generated very good fits. The previously reported population-level correlation between the Gompertz parameters was further confirmed in our analysis (R(2) > 0.92 in all groups). Combining this structural correlation with rigorous population parameter estimation, we propose a reduced Gompertz function consisting of a single individual parameter (and one population parameter). Leveraging the population approach using Bayesian inference, we estimated times of tumor initiation using three late measurement timepoints. The reduced Gompertz model was found to exhibit the best results, with drastic improvements when using Bayesian inference as compared to likelihood maximization alone, for both accuracy and precision. Specifically, mean accuracy (prediction error) was 12.2% versus 78% and mean precision (width of the 95% prediction interval) was 15.6 days versus 210 days, for the breast cancer cell line. These results demonstrate the superior predictive power of the reduced Gompertz model, especially when combined with Bayesian estimation. They offer possible clinical perspectives for personalized prediction of the age of a tumor from limited data at diagnosis. The code and data used in our analysis are publicly available at https://github.com/cristinavaghi/plumky. Public Library of Science 2020-02-25 /pmc/articles/PMC7059968/ /pubmed/32097421 http://dx.doi.org/10.1371/journal.pcbi.1007178 Text en © 2020 Vaghi et al http://creativecommons.org/licenses/by/4.0/ 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 author and source are credited.
spellingShingle Research Article
Vaghi, Cristina
Rodallec, Anne
Fanciullino, Raphaëlle
Ciccolini, Joseph
Mochel, Jonathan P.
Mastri, Michalis
Poignard, Clair
Ebos, John M. L.
Benzekry, Sébastien
Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors
title Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors
title_full Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors
title_fullStr Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors
title_full_unstemmed Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors
title_short Population modeling of tumor growth curves and the reduced Gompertz model improve prediction of the age of experimental tumors
title_sort population modeling of tumor growth curves and the reduced gompertz model improve prediction of the age of experimental tumors
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7059968/
https://www.ncbi.nlm.nih.gov/pubmed/32097421
http://dx.doi.org/10.1371/journal.pcbi.1007178
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