Defining epidemics in computer simulation models: How do definitions influence conclusions?
Computer models have proven to be useful tools in studying epidemic disease in human populations. Such models are being used by a broader base of researchers, and it has become more important to ensure that descriptions of model construction and data analyses are clear and communicate important feat...
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doaj-4a42f119fff04c378b718d8f3121adcf2020-11-24T22:13:38ZengElsevierEpidemics1755-43651878-00672017-06-0119C243210.1016/j.epidem.2016.12.001Defining epidemics in computer simulation models: How do definitions influence conclusions?Carolyn Orbann0Lisa Sattenspiel1Erin Miller2Jessica Dimka3Department of Health Sciences, University of Missouri, Columbia, MO, 65211, USADepartment of Anthropology, University of Missouri, Columbia, MO, 65211, USADepartment of Anthropology, University of Missouri, Columbia, MO, 65211, USADepartment of Anthropology, University of Missouri, Columbia, MO, 65211, USAComputer models have proven to be useful tools in studying epidemic disease in human populations. Such models are being used by a broader base of researchers, and it has become more important to ensure that descriptions of model construction and data analyses are clear and communicate important features of model structure. Papers describing computer models of infectious disease often lack a clear description of how the data are aggregated and whether or not non-epidemic runs are excluded from analyses. Given that there is no concrete quantitative definition of what constitutes an epidemic within the public health literature, each modeler must decide on a strategy for identifying epidemics during simulation runs. Here, an SEIR model was used to test the effects of how varying the cutoff for considering a run an epidemic changes potential interpretations of simulation outcomes. Varying the cutoff from 0% to 15% of the model population ever infected with the illness generated significant differences in numbers of dead and timing variables. These results are important for those who use models to form public health policy, in which questions of timing or implementation of interventions might be answered using findings from computer simulation models.http://www.sciencedirect.com/science/article/pii/S1755436516300627Infectious disease modelingAgent-based simulationInfectious disease historyEpidemic criteria |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Carolyn Orbann Lisa Sattenspiel Erin Miller Jessica Dimka |
spellingShingle |
Carolyn Orbann Lisa Sattenspiel Erin Miller Jessica Dimka Defining epidemics in computer simulation models: How do definitions influence conclusions? Epidemics Infectious disease modeling Agent-based simulation Infectious disease history Epidemic criteria |
author_facet |
Carolyn Orbann Lisa Sattenspiel Erin Miller Jessica Dimka |
author_sort |
Carolyn Orbann |
title |
Defining epidemics in computer simulation models: How do definitions influence conclusions? |
title_short |
Defining epidemics in computer simulation models: How do definitions influence conclusions? |
title_full |
Defining epidemics in computer simulation models: How do definitions influence conclusions? |
title_fullStr |
Defining epidemics in computer simulation models: How do definitions influence conclusions? |
title_full_unstemmed |
Defining epidemics in computer simulation models: How do definitions influence conclusions? |
title_sort |
defining epidemics in computer simulation models: how do definitions influence conclusions? |
publisher |
Elsevier |
series |
Epidemics |
issn |
1755-4365 1878-0067 |
publishDate |
2017-06-01 |
description |
Computer models have proven to be useful tools in studying epidemic disease in human populations. Such models are being used by a broader base of researchers, and it has become more important to ensure that descriptions of model construction and data analyses are clear and communicate important features of model structure. Papers describing computer models of infectious disease often lack a clear description of how the data are aggregated and whether or not non-epidemic runs are excluded from analyses. Given that there is no concrete quantitative definition of what constitutes an epidemic within the public health literature, each modeler must decide on a strategy for identifying epidemics during simulation runs. Here, an SEIR model was used to test the effects of how varying the cutoff for considering a run an epidemic changes potential interpretations of simulation outcomes. Varying the cutoff from 0% to 15% of the model population ever infected with the illness generated significant differences in numbers of dead and timing variables. These results are important for those who use models to form public health policy, in which questions of timing or implementation of interventions might be answered using findings from computer simulation models. |
topic |
Infectious disease modeling Agent-based simulation Infectious disease history Epidemic criteria |
url |
http://www.sciencedirect.com/science/article/pii/S1755436516300627 |
work_keys_str_mv |
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1725800313160466432 |