2020
DOI: 10.21203/rs.3.rs-22956/v2
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Reconstructing and Forecasting the COVID-19 Epidemic in the US Using a 5-Parameter Logistic Growth Model

Abstract: Background: Many studies have modeled and predicted the spread of COVID-19 (coronavirus disease 2019) in the U.S. using data that begins with the first reported cases. However, the shortage of testing services to detect infected persons makes this approach subject to error due to its underdetection of early cases in the U.S. Our new approach overcomes this limitation and provides data supporting the public policy decisions intended to combat the spread of COVID-19 epidemic. Methods: We used Centers for Disease… Show more

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“…Step 3. A logistic growth model is often used to fit the time series analysis in studies of infectious diseases [20][21][22] (2).…”
Section: Algorithm For a Simple Prediction Model Of The Seventh Covid...mentioning
confidence: 99%
“…Step 3. A logistic growth model is often used to fit the time series analysis in studies of infectious diseases [20][21][22] (2).…”
Section: Algorithm For a Simple Prediction Model Of The Seventh Covid...mentioning
confidence: 99%