Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy

Mathematical modeling of disease transmission has provided quantitative predictions for health policy, facilitating the evaluation of epidemiological outcomes and the cost-effectiveness of interventions. However, typical sensitivity analyses of deterministic dynamic infectious disease models focus...

Full description

Bibliographic Details
Main Authors: Jennifer A. Gilbert, Lauren Ancel Meyers, Alison P. Galvani, Jeffrey P. Townsend
Format: Article
Language:English
Published: Elsevier 2014-03-01
Series:Epidemics
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1755436513000467
id doaj-dc9e47812a8c4f50a278bd3234503939
record_format Article
spelling doaj-dc9e47812a8c4f50a278bd32345039392020-11-24T21:29:50ZengElsevierEpidemics1755-43651878-00672014-03-016C374510.1016/j.epidem.2013.11.002Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policyJennifer A. Gilbert0Lauren Ancel Meyers1Alison P. Galvani2Jeffrey P. Townsend3Department of Epidemiology of Microbial Diseases, Yale School of Public Health, New Haven, CT, USASection of Integrative Biology, University of Texas at Austin, Austin, TX, USADepartment of Epidemiology of Microbial Diseases, Yale School of Public Health, New Haven, CT, USAProgram in Computational Biology and Bioinformatics, Yale University, New Haven, CT, USA Mathematical modeling of disease transmission has provided quantitative predictions for health policy, facilitating the evaluation of epidemiological outcomes and the cost-effectiveness of interventions. However, typical sensitivity analyses of deterministic dynamic infectious disease models focus on model architecture and the relative importance of parameters but neglect parameter uncertainty when reporting model predictions. Consequently, model results that identify point estimates of intervention levels necessary to terminate transmission yield limited insight into the probability of success. We apply probabilistic uncertainty analysis to a dynamic model of influenza transmission and assess global uncertainty in outcome. We illustrate that when parameter uncertainty is not incorporated into outcome estimates, levels of vaccination and treatment predicted to prevent an influenza epidemic will only have an approximately 50% chance of terminating transmission and that sensitivity analysis alone is not sufficient to obtain this information. We demonstrate that accounting for parameter uncertainty yields probabilities of epidemiological outcomes based on the degree to which data support the range of model predictions. Unlike typical sensitivity analyses of dynamic models that only address variation in parameters, the probabilistic uncertainty analysis described here enables modelers to convey the robustness of their predictions to policy makers, extending the power of epidemiological modeling to improve public health. http://www.sciencedirect.com/science/article/pii/S1755436513000467Infectious diseaseEpidemiologyMathematical modelingHealth policyUncertainty
collection DOAJ
language English
format Article
sources DOAJ
author Jennifer A. Gilbert
Lauren Ancel Meyers
Alison P. Galvani
Jeffrey P. Townsend
spellingShingle Jennifer A. Gilbert
Lauren Ancel Meyers
Alison P. Galvani
Jeffrey P. Townsend
Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy
Epidemics
Infectious disease
Epidemiology
Mathematical modeling
Health policy
Uncertainty
author_facet Jennifer A. Gilbert
Lauren Ancel Meyers
Alison P. Galvani
Jeffrey P. Townsend
author_sort Jennifer A. Gilbert
title Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy
title_short Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy
title_full Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy
title_fullStr Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy
title_full_unstemmed Probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy
title_sort probabilistic uncertainty analysis of epidemiological modeling to guide public health intervention policy
publisher Elsevier
series Epidemics
issn 1755-4365
1878-0067
publishDate 2014-03-01
description Mathematical modeling of disease transmission has provided quantitative predictions for health policy, facilitating the evaluation of epidemiological outcomes and the cost-effectiveness of interventions. However, typical sensitivity analyses of deterministic dynamic infectious disease models focus on model architecture and the relative importance of parameters but neglect parameter uncertainty when reporting model predictions. Consequently, model results that identify point estimates of intervention levels necessary to terminate transmission yield limited insight into the probability of success. We apply probabilistic uncertainty analysis to a dynamic model of influenza transmission and assess global uncertainty in outcome. We illustrate that when parameter uncertainty is not incorporated into outcome estimates, levels of vaccination and treatment predicted to prevent an influenza epidemic will only have an approximately 50% chance of terminating transmission and that sensitivity analysis alone is not sufficient to obtain this information. We demonstrate that accounting for parameter uncertainty yields probabilities of epidemiological outcomes based on the degree to which data support the range of model predictions. Unlike typical sensitivity analyses of dynamic models that only address variation in parameters, the probabilistic uncertainty analysis described here enables modelers to convey the robustness of their predictions to policy makers, extending the power of epidemiological modeling to improve public health.
topic Infectious disease
Epidemiology
Mathematical modeling
Health policy
Uncertainty
url http://www.sciencedirect.com/science/article/pii/S1755436513000467
work_keys_str_mv AT jenniferagilbert probabilisticuncertaintyanalysisofepidemiologicalmodelingtoguidepublichealthinterventionpolicy
AT laurenancelmeyers probabilisticuncertaintyanalysisofepidemiologicalmodelingtoguidepublichealthinterventionpolicy
AT alisonpgalvani probabilisticuncertaintyanalysisofepidemiologicalmodelingtoguidepublichealthinterventionpolicy
AT jeffreyptownsend probabilisticuncertaintyanalysisofepidemiologicalmodelingtoguidepublichealthinterventionpolicy
_version_ 1725965392411623424