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An Open Repository of Real-Time COVID-19 Indicators
Alex Reinhart; Logan Brooks; Maria Jahja; Aaron Rumack; Jingjing Tang; Sumit Agrawal; Wael Al Saeed; Taylor Arnold; Amartya Basu; Jacob Bien; Ángel A Cabrera; Andrew Chin; Eu Jing Chua; Brian Clark; Sarah Colquhoun; Nat DeFries; David C. Farrow; Jodi Forlizzi; Jed Grabman; Samuel Gratzl; Alden Green; George Haff; Robin Han; Kate Harwood; Addison J Hu; Raphael Hyde; Sangwon Hyun; Ananya Joshi; Jimi Kim; Andrew Kuznetsov; Wichada La Motte-Kerr; Yeon Jin Lee; Kenneth Lee; Zachary C Lipton; Michael X Liu; Lester Mackey; Kathryn Mazaitis; Daniel J McDonald; Phillip McGuinness; Balasubramanian Narasimhan; Michael P. O'Brien; Natalia L Oliveira; Pratik Patil; Adam Perer; Collin A Politsch; Samyak Rajanala; Dawn Rucker; Chris Scott; Nigam Shah; Vishnu Shankar; James Sharpnack; Dmitry Shemetov; Noah Simon; Benjamin Y. Smith; Vishakha Srivastava; Shuyi Tan; Robert Tibshirani; Elena Tuzhilina; Ana Karina Van Nortwick; Valérie Ventura; Larry Wasserman; Benjamin Weaver; Jeremy C Weiss; Kristin Williams; Roni Rosenfeld; Ryan J Tibshirani.
Afiliação
  • Alex Reinhart; Carnegie Mellon University
  • Logan Brooks; Carnegie Mellon University
  • Maria Jahja; Carnegie Mellon University
  • Aaron Rumack; Carnegie Mellon University
  • Jingjing Tang; Carnegie Mellon University
  • Sumit Agrawal; Google.org Fellows, Google LLC
  • Wael Al Saeed; Carnegie Mellon University
  • Taylor Arnold; University of Richmond
  • Amartya Basu; Carnegie Mellon University
  • Jacob Bien; University of Southern California
  • Ángel A Cabrera; Carnegie Mellon University
  • Andrew Chin; Carnegie Mellon University
  • Eu Jing Chua; Carnegie Mellon University
  • Brian Clark; Carnegie Mellon University
  • Sarah Colquhoun; Google.org Fellows, Google LLC
  • Nat DeFries; Carnegie Mellon University
  • David C. Farrow; Google.org Fellows, Google LLC
  • Jodi Forlizzi; Carnegie Mellon University
  • Jed Grabman; Google.org Fellows, Google LLC
  • Samuel Gratzl; Carnegie Mellon University
  • Alden Green; Carnegie Mellon University
  • George Haff; Carnegie Mellon University
  • Robin Han; Carnegie Mellon University
  • Kate Harwood; Google.org Fellows, Google LLC
  • Addison J Hu; Carnegie Mellon University
  • Raphael Hyde; Google.org Fellows, Google LLC
  • Sangwon Hyun; University of Southern California
  • Ananya Joshi; Carnegie Mellon University
  • Jimi Kim; University of Texas at Dallas
  • Andrew Kuznetsov; Carnegie Mellon University
  • Wichada La Motte-Kerr; Carnegie Mellon University
  • Yeon Jin Lee; Carnegie Mellon University
  • Kenneth Lee; University of California Davis
  • Zachary C Lipton; Carnegie Mellon University
  • Michael X Liu; Carnegie Mellon University
  • Lester Mackey; Microsoft Research New England
  • Kathryn Mazaitis; Carnegie Mellon University
  • Daniel J McDonald; University of British Columbia
  • Phillip McGuinness; Google.org Fellows, Google LLC
  • Balasubramanian Narasimhan; Stanford University
  • Michael P. O'Brien; Google.org Fellows, Google LLC
  • Natalia L Oliveira; Carnegie Mellon University
  • Pratik Patil; Carnegie Mellon University
  • Adam Perer; Carnegie Mellon University
  • Collin A Politsch; Carnegie Mellon University
  • Samyak Rajanala; Stanford University
  • Dawn Rucker; Carnegie Mellon University
  • Chris Scott; Google.org Fellows, Google LLC
  • Nigam Shah; Stanford University
  • Vishnu Shankar; Stanford University
  • James Sharpnack; University of California Davis
  • Dmitry Shemetov; Carnegie Mellon University
  • Noah Simon; University of Washington
  • Benjamin Y. Smith; Google.org Fellows, Google LLC
  • Vishakha Srivastava; Carnegie Mellon University
  • Shuyi Tan; University of British Columbia
  • Robert Tibshirani; Stanford University
  • Elena Tuzhilina; Stanford University
  • Ana Karina Van Nortwick; Carnegie Mellon University
  • Valérie Ventura; Carnegie Mellon University
  • Larry Wasserman; Carnegie Mellon University
  • Benjamin Weaver; Google.org Fellows, Google LLC
  • Jeremy C Weiss; Carnegie Mellon University
  • Kristin Williams; Carnegie Mellon University
  • Roni Rosenfeld; Carnegie Mellon University
  • Ryan J Tibshirani; Carnegie Mellon University
Preprint em Inglês | medRxiv | ID: ppmedrxiv-21259660
Artigo de periódico
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ABSTRACT
The COVID-19 pandemic presented enormous data challenges in the United States. Policy makers, epidemiological modelers, and health researchers all require up-to-date data on the pandemic and relevant public behavior, ideally at fine spatial and temporal resolution. The COVIDcast API is our attempt to fill this need operational since April 2020, it provides open access to both traditional public health surveillance signals (cases, deaths, and hospitalizations) and many auxiliary indicators of COVID-19 activity, such as signals extracted from de-identified medical claims data, massive online surveys, cell phone mobility data, and internet search trends. These are available at a fine geographic resolution (mostly at the county level) and are updated daily. The COVIDcast API also tracks all revisions to historical data, allowing modelers to account for the frequent revisions and backfill that are common for many public health data sources. All of the data is available in a common format through the API and accompanying R and Python software packages. This paper describes the data sources and signals, and provides examples demonstrating that the auxiliary signals in the COVIDcast API present information relevant to tracking COVID activity, augmenting traditional public health reporting and empowering research and decision-making.
Licença
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Texto completo: Disponível Coleções: Preprints Base de dados: medRxiv Tipo de estudo: Estudo observacional Idioma: Inglês Ano de publicação: 2021 Tipo de documento: Preprint
Texto completo: Disponível Coleções: Preprints Base de dados: medRxiv Tipo de estudo: Estudo observacional Idioma: Inglês Ano de publicação: 2021 Tipo de documento: Preprint
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