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Forecasting hospital-level COVID-19 admissions using real-time mobility data
Brennan Klein; Ana C. Zenteno; Daisha Joseph; Mohammadmehdi Zahedi; Michael Hu; Martin Copenhaver; Moritz U.G. Kraemer; Matteo Chinazzi; Michael Klompas; Alessandro Vespignani; Samuel V. Scarpino; Hojjat Salmasian.
Afiliação
  • Brennan Klein; Northeastern University Network Science Institute
  • Ana C. Zenteno; Massachusetts General Hospital
  • Daisha Joseph; Northeastern University
  • Mohammadmehdi Zahedi; Northeastern University Network Science Institute
  • Michael Hu; Massachusetts General Hospital
  • Martin Copenhaver; Massachusetts General Hospital
  • Moritz U.G. Kraemer; University of Oxford
  • Matteo Chinazzi; Northeastern University Network Science Institute
  • Michael Klompas; Harvard Medical School Department of Population Medicine; Brigham and Women's Hospital Boston
  • Alessandro Vespignani; Northeastern University
  • Samuel V. Scarpino; Northeastern University Network Science Institute; Santa Fe Institute
  • Hojjat Salmasian; Brigham and Women's Hospital; Mass General Brigham
Preprint em En | PREPRINT-MEDRXIV | ID: ppmedrxiv-22275840
ABSTRACT
For each of the COVID-19 pandemic waves, hospitals have had to plan for deploying surge capacity and resources to manage large but transient increases in COVID-19 admissions. While a lot of effort has gone into predicting regional trends in COVID-19 cases and hospitalizations, there are far fewer successful tools for creating accurate hospital-level forecasts. At the same time, anonymized phone-collected mobility data proved to correlate well with the number of cases for the first two waves of the pandemic (spring 2020, and fall-winter 2021). In this work, we show how mobility data could bolster hospital-specific COVID-19 admission forecasts for five hospitals in Massachusetts during the initial COVID-19 surge. The high predictive capability of the model was achieved by combining anonymized, aggregated mobile device data about users contact patterns, commuting volume, and mobility range with COVID hospitalizations and test-positivity data. We conclude that mobility-informed forecasting models can increase the lead-time of accurate predictions for individual hospitals, giving managers valuable time to strategize how best to allocate resources to manage forthcoming surges.
Licença
cc_by_nc_nd
Texto completo: 1 Coleções: 09-preprints Base de dados: PREPRINT-MEDRXIV Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Preprint
Texto completo: 1 Coleções: 09-preprints Base de dados: PREPRINT-MEDRXIV Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Preprint