4.5 Article

Extending the susceptible-exposed-infected-removed (SEIR) model to handle the false negative rate and symptom-based administration of COVID-19 diagnostic tests: SEIR-fansy

期刊

STATISTICS IN MEDICINE
卷 41, 期 13, 页码 2317-2337

出版社

WILEY
DOI: 10.1002/sim.9357

关键词

compartmental models; infection fatality rate; R package SEIRfansy; reproduction number; selection bias; sensitivity; undetected infections

资金

  1. Division of Cancer Prevention, National Cancer Institute [5P30CA046592-27]
  2. Michigan Institute of Data Science (MIDAS) at the University of Michigan
  3. Rogel Scholar Fund at the University of Michigan
  4. Division of Mathematical Sciences [1712933]
  5. National Human Genome Research Institute [5R01HG008773-05, P30 CA046592]
  6. National Science Foundation [1712933, 2015460]
  7. Precision Health Initiative at the University of Michigan
  8. Division Of Mathematical Sciences
  9. Direct For Mathematical & Physical Scien [1712933, 2015460] Funding Source: National Science Foundation

向作者/读者索取更多资源

The study suggests that considering false negative rates of diagnostic tests for severe acute respiratory coronavirus 2 and selection bias due to prioritized testing, and extending the widely used SEIR model can improve the accuracy of COVID-19 transmission dynamics modeling. Analyzing data from the first two waves of the pandemic in India, the study provides estimates of undetected infections and deaths, and demonstrates the impact of misclassification and selection on future infection prediction and R0 estimation.
False negative rates of severe acute respiratory coronavirus 2 diagnostic tests, together with selection bias due to prioritized testing can result in inaccurate modeling of COVID-19 transmission dynamics based on reported case counts. We propose an extension of the widely used Susceptible-Exposed-Infected-Removed (SEIR) model that accounts for misclassification error and selection bias, and derive an analytic expression for the basic reproduction number R0 as a function of false negative rates of the diagnostic tests and selection probabilities for getting tested. Analyzing data from the first two waves of the pandemic in India, we show that correcting for misclassification and selection leads to more accurate prediction in a test sample. We provide estimates of undetected infections and deaths between April 1, 2020 and August 31, 2021. At the end of the first wave in India, the estimated under-reporting factor for cases was at 11.1 (95% CI: 10.7,11.5) and for deaths at 3.58 (95% CI: 3.5,3.66) as of February 1, 2021, while they change to 19.2 (95% CI: 17.9, 19.9) and 4.55 (95% CI: 4.32, 4.68) as of July 1, 2021. Equivalently, 9.0% (95% CI: 8.7%, 9.3%) and 5.2% (95% CI: 5.0%, 5.6%) of total estimated infections were reported on these two dates, while 27.9% (95% CI: 27.3%, 28.6%) and 22% (95% CI: 21.4%, 23.1%) of estimated total deaths were reported. Extensive simulation studies demonstrate the effect of misclassification and selection on estimation of R0 and prediction of future infections. A R-package SEIRfansy is developed for broader dissemination.

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