COVID-19: Short-term forecast of ICU beds in times of crisis.

By early May 2020, the number of new COVID-19 infections started to increase rapidly in Chile, threatening the ability of health services to accommodate all incoming cases. Suddenly, ICU capacity planning became a first-order concern, and the health authorities were in urgent need of tools to estima...

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Main Authors: Marcel Goic, Mirko S Bozanic-Leal, Magdalena Badal, Leonardo J Basso
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0245272
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spelling doaj-9da4a24c13ef41a2b780f85479c9f7d72021-03-04T12:52:30ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01161e024527210.1371/journal.pone.0245272COVID-19: Short-term forecast of ICU beds in times of crisis.Marcel GoicMirko S Bozanic-LealMagdalena BadalLeonardo J BassoBy early May 2020, the number of new COVID-19 infections started to increase rapidly in Chile, threatening the ability of health services to accommodate all incoming cases. Suddenly, ICU capacity planning became a first-order concern, and the health authorities were in urgent need of tools to estimate the demand for urgent care associated with the pandemic. In this article, we describe the approach we followed to provide such demand forecasts, and we show how the use of analytics can provide relevant support for decision making, even with incomplete data and without enough time to fully explore the numerical properties of all available forecasting methods. The solution combines autoregressive, machine learning and epidemiological models to provide a short-term forecast of ICU utilization at the regional level. These forecasts were made publicly available and were actively used to support capacity planning. Our predictions achieved average forecasting errors of 4% and 9% for one- and two-week horizons, respectively, outperforming several other competing forecasting models.https://doi.org/10.1371/journal.pone.0245272
collection DOAJ
language English
format Article
sources DOAJ
author Marcel Goic
Mirko S Bozanic-Leal
Magdalena Badal
Leonardo J Basso
spellingShingle Marcel Goic
Mirko S Bozanic-Leal
Magdalena Badal
Leonardo J Basso
COVID-19: Short-term forecast of ICU beds in times of crisis.
PLoS ONE
author_facet Marcel Goic
Mirko S Bozanic-Leal
Magdalena Badal
Leonardo J Basso
author_sort Marcel Goic
title COVID-19: Short-term forecast of ICU beds in times of crisis.
title_short COVID-19: Short-term forecast of ICU beds in times of crisis.
title_full COVID-19: Short-term forecast of ICU beds in times of crisis.
title_fullStr COVID-19: Short-term forecast of ICU beds in times of crisis.
title_full_unstemmed COVID-19: Short-term forecast of ICU beds in times of crisis.
title_sort covid-19: short-term forecast of icu beds in times of crisis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description By early May 2020, the number of new COVID-19 infections started to increase rapidly in Chile, threatening the ability of health services to accommodate all incoming cases. Suddenly, ICU capacity planning became a first-order concern, and the health authorities were in urgent need of tools to estimate the demand for urgent care associated with the pandemic. In this article, we describe the approach we followed to provide such demand forecasts, and we show how the use of analytics can provide relevant support for decision making, even with incomplete data and without enough time to fully explore the numerical properties of all available forecasting methods. The solution combines autoregressive, machine learning and epidemiological models to provide a short-term forecast of ICU utilization at the regional level. These forecasts were made publicly available and were actively used to support capacity planning. Our predictions achieved average forecasting errors of 4% and 9% for one- and two-week horizons, respectively, outperforming several other competing forecasting models.
url https://doi.org/10.1371/journal.pone.0245272
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AT magdalenabadal covid19shorttermforecastoficubedsintimesofcrisis
AT leonardojbasso covid19shorttermforecastoficubedsintimesofcrisis
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