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Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection

BACKGROUND: Computer simulation models can project long-term patient outcomes and inform health policy. We internally validated and then calibrated a model of HIV disease in children before initiation of antiretroviral therapy to provide a framework against which to compare the impact of pediatric H...

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Autores principales: Ciaranello, Andrea L., Morris, Bethany L., Walensky, Rochelle P., Weinstein, Milton C., Ayaya, Samuel, Doherty, Kathleen, Leroy, Valeriane, Hou, Taige, Desmonde, Sophie, Lu, Zhigang, Noubary, Farzad, Patel, Kunjal, Ramirez-Avila, Lynn, Losina, Elena, Seage III, George R., Freedberg, Kenneth A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3862684/
https://www.ncbi.nlm.nih.gov/pubmed/24349503
http://dx.doi.org/10.1371/journal.pone.0083389
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author Ciaranello, Andrea L.
Morris, Bethany L.
Walensky, Rochelle P.
Weinstein, Milton C.
Ayaya, Samuel
Doherty, Kathleen
Leroy, Valeriane
Hou, Taige
Desmonde, Sophie
Lu, Zhigang
Noubary, Farzad
Patel, Kunjal
Ramirez-Avila, Lynn
Losina, Elena
Seage III, George R.
Freedberg, Kenneth A.
author_facet Ciaranello, Andrea L.
Morris, Bethany L.
Walensky, Rochelle P.
Weinstein, Milton C.
Ayaya, Samuel
Doherty, Kathleen
Leroy, Valeriane
Hou, Taige
Desmonde, Sophie
Lu, Zhigang
Noubary, Farzad
Patel, Kunjal
Ramirez-Avila, Lynn
Losina, Elena
Seage III, George R.
Freedberg, Kenneth A.
author_sort Ciaranello, Andrea L.
collection PubMed
description BACKGROUND: Computer simulation models can project long-term patient outcomes and inform health policy. We internally validated and then calibrated a model of HIV disease in children before initiation of antiretroviral therapy to provide a framework against which to compare the impact of pediatric HIV treatment strategies. METHODS: We developed a patient-level (Monte Carlo) model of HIV progression among untreated children <5 years of age, using the Cost-Effectiveness of Preventing AIDS Complications model framework: the CEPAC-Pediatric model. We populated the model with data on opportunistic infection and mortality risks from the International Epidemiologic Database to Evaluate AIDS (IeDEA), with mean CD4% at birth (42%) and mean CD4% decline (1.4%/month) from the Women and Infants’ Transmission Study (WITS). We internally validated the model by varying WITS-derived CD4% data, comparing the corresponding model-generated survival curves to empirical survival curves from IeDEA, and identifying best-fitting parameter sets as those with a root-mean square error (RMSE) <0.01. We then calibrated the model to other African settings by systematically varying immunologic and HIV mortality-related input parameters. Model-generated survival curves for children aged 0-60 months were compared, again using RMSE, to UNAIDS data from >1,300 untreated, HIV-infected African children. RESULTS: In internal validation analyses, model-generated survival curves fit IeDEA data well; modeled and observed survival at 16 months of age were 91.2% and 91.1%, respectively. RMSE varied widely with variations in CD4% parameters; the best fitting parameter set (RMSE = 0.00423) resulted when CD4% was 45% at birth and declined by 6%/month (ages 0-3 months) and 0.3%/month (ages >3 months). In calibration analyses, increases in IeDEA-derived mortality risks were necessary to fit UNAIDS survival data. CONCLUSIONS: The CEPAC-Pediatric model performed well in internal validation analyses. Increases in modeled mortality risks required to match UNAIDS data highlight the importance of pre-enrollment mortality in many pediatric cohort studies.
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spelling pubmed-38626842013-12-17 Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection Ciaranello, Andrea L. Morris, Bethany L. Walensky, Rochelle P. Weinstein, Milton C. Ayaya, Samuel Doherty, Kathleen Leroy, Valeriane Hou, Taige Desmonde, Sophie Lu, Zhigang Noubary, Farzad Patel, Kunjal Ramirez-Avila, Lynn Losina, Elena Seage III, George R. Freedberg, Kenneth A. PLoS One Research Article BACKGROUND: Computer simulation models can project long-term patient outcomes and inform health policy. We internally validated and then calibrated a model of HIV disease in children before initiation of antiretroviral therapy to provide a framework against which to compare the impact of pediatric HIV treatment strategies. METHODS: We developed a patient-level (Monte Carlo) model of HIV progression among untreated children <5 years of age, using the Cost-Effectiveness of Preventing AIDS Complications model framework: the CEPAC-Pediatric model. We populated the model with data on opportunistic infection and mortality risks from the International Epidemiologic Database to Evaluate AIDS (IeDEA), with mean CD4% at birth (42%) and mean CD4% decline (1.4%/month) from the Women and Infants’ Transmission Study (WITS). We internally validated the model by varying WITS-derived CD4% data, comparing the corresponding model-generated survival curves to empirical survival curves from IeDEA, and identifying best-fitting parameter sets as those with a root-mean square error (RMSE) <0.01. We then calibrated the model to other African settings by systematically varying immunologic and HIV mortality-related input parameters. Model-generated survival curves for children aged 0-60 months were compared, again using RMSE, to UNAIDS data from >1,300 untreated, HIV-infected African children. RESULTS: In internal validation analyses, model-generated survival curves fit IeDEA data well; modeled and observed survival at 16 months of age were 91.2% and 91.1%, respectively. RMSE varied widely with variations in CD4% parameters; the best fitting parameter set (RMSE = 0.00423) resulted when CD4% was 45% at birth and declined by 6%/month (ages 0-3 months) and 0.3%/month (ages >3 months). In calibration analyses, increases in IeDEA-derived mortality risks were necessary to fit UNAIDS survival data. CONCLUSIONS: The CEPAC-Pediatric model performed well in internal validation analyses. Increases in modeled mortality risks required to match UNAIDS data highlight the importance of pre-enrollment mortality in many pediatric cohort studies. Public Library of Science 2013-12-13 /pmc/articles/PMC3862684/ /pubmed/24349503 http://dx.doi.org/10.1371/journal.pone.0083389 Text en © 2013 Ciaranello 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, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Ciaranello, Andrea L.
Morris, Bethany L.
Walensky, Rochelle P.
Weinstein, Milton C.
Ayaya, Samuel
Doherty, Kathleen
Leroy, Valeriane
Hou, Taige
Desmonde, Sophie
Lu, Zhigang
Noubary, Farzad
Patel, Kunjal
Ramirez-Avila, Lynn
Losina, Elena
Seage III, George R.
Freedberg, Kenneth A.
Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection
title Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection
title_full Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection
title_fullStr Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection
title_full_unstemmed Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection
title_short Validation and Calibration of a Computer Simulation Model of Pediatric HIV Infection
title_sort validation and calibration of a computer simulation model of pediatric hiv infection
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3862684/
https://www.ncbi.nlm.nih.gov/pubmed/24349503
http://dx.doi.org/10.1371/journal.pone.0083389
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