Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United States
To increase situational awareness and support evidence-based policymaking, we formulated a mathematical model for coronavirus disease transmission within a regional population. This compartmental model accounts for quarantine, self-isolation, social distancing, a nonexponentially distributed incuba...
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2021-03-01
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doaj-db60e59b49b74c4f9cbd4e6aaab9e1a82021-02-22T23:22:52ZengCenters for Disease Control and PreventionEmerging Infectious Diseases1080-60401080-60592021-03-0127376777810.3201/eid2703.203364Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United StatesYen Ting LinJacob NeumannEly F. MillerRichard G. PosnerAbhishek MallelaCosmin SaftaJaideep RayGautam ThakurSupriya ChinthavaliWilliam S. Hlavacek To increase situational awareness and support evidence-based policymaking, we formulated a mathematical model for coronavirus disease transmission within a regional population. This compartmental model accounts for quarantine, self-isolation, social distancing, a nonexponentially distributed incubation period, asymptomatic persons, and mild and severe forms of symptomatic disease. We used Bayesian inference to calibrate region-specific models for consistency with daily reports of confirmed cases in the 15 most populous metropolitan statistical areas in the United States. We also quantified uncertainty in parameter estimates and forecasts. This online learning approach enables early identification of new trends despite considerable variability in case reporting. https://wwwnc.cdc.gov/eid/article/27/3/20-3364_articlemathematical modelstatisticsuncertaintyepidemicscoronavirus diseaseCOVID-19 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yen Ting Lin Jacob Neumann Ely F. Miller Richard G. Posner Abhishek Mallela Cosmin Safta Jaideep Ray Gautam Thakur Supriya Chinthavali William S. Hlavacek |
spellingShingle |
Yen Ting Lin Jacob Neumann Ely F. Miller Richard G. Posner Abhishek Mallela Cosmin Safta Jaideep Ray Gautam Thakur Supriya Chinthavali William S. Hlavacek Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United States Emerging Infectious Diseases mathematical model statistics uncertainty epidemics coronavirus disease COVID-19 |
author_facet |
Yen Ting Lin Jacob Neumann Ely F. Miller Richard G. Posner Abhishek Mallela Cosmin Safta Jaideep Ray Gautam Thakur Supriya Chinthavali William S. Hlavacek |
author_sort |
Yen Ting Lin |
title |
Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United States |
title_short |
Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United States |
title_full |
Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United States |
title_fullStr |
Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United States |
title_full_unstemmed |
Daily Forecasting of Regional Epidemics of Coronavirus Disease with Bayesian Uncertainty Quantification, United States |
title_sort |
daily forecasting of regional epidemics of coronavirus disease with bayesian uncertainty quantification, united states |
publisher |
Centers for Disease Control and Prevention |
series |
Emerging Infectious Diseases |
issn |
1080-6040 1080-6059 |
publishDate |
2021-03-01 |
description |
To increase situational awareness and support evidence-based policymaking, we formulated a mathematical model for coronavirus disease transmission within a regional population. This compartmental model accounts for quarantine, self-isolation, social distancing, a nonexponentially distributed incubation period, asymptomatic persons, and mild and severe forms of symptomatic disease. We used Bayesian inference to calibrate region-specific models for consistency with daily reports of confirmed cases in the 15 most populous metropolitan statistical areas in the United States. We also quantified uncertainty in parameter estimates and forecasts. This online learning approach enables early identification of new trends despite considerable variability in case reporting.
|
topic |
mathematical model statistics uncertainty epidemics coronavirus disease COVID-19 |
url |
https://wwwnc.cdc.gov/eid/article/27/3/20-3364_article |
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