Identification and Estimation of Undetected COVID-19 Cases Using Testing Data from Iceland / Karl M. Aspelund, Michael C. Droste, James H. Stock, Christopher D. Walker.
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Working Paper | Biblioteca Digital | Colección NBER | nber w27528 (Browse shelf(Opens below)) | Not For Loan |
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July 2020.
In the early stages of the COVID-19 pandemic, international testing efforts tended to target individuals whose symptoms and/or jobs placed them at a high presumed risk of infection. Testing regimes of this sort potentially result in a high proportion of cases going undetected. Quantifying this parameter, which we refer to as the undetected rate, is an important contribution to the analysis of the early spread of the SARS-CoV-2 virus. We show that partial identification techniques can credibly deal with the data problems that common COVID-19 testing programs induce (i.e. excluding quarantined individuals from testing and low participation in random screening programs). We use public data from two Icelandic testing regimes during the first month of the outbreak and estimate an identified interval for the undetected rate. Our main approach estimates that the undetected rate was between 89% and 93% before the medical system broadened its eligibility criteria and between 80% and 90% after.
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