Estimating the undetected infections in the Covid-19 outbreak by harnessing capture–recapture methods
Autor
Böhning, Dankmar
Rocchetti, Irene
Maruotti, Antonello
Holling, Heinz
Institución
Resumen
Objectives: A major open question, affecting the decisions of policy makers, is the estimation of the true
number of Covid-19 infections. Most of them are undetected, because of a large number of asymptomatic
cases. We provide an efficient, easy to compute and robust lower bound estimator for the number of
undetected cases.
Methods: A modified version of the Chao estimator is proposed, based on the cumulative time-series
distributions of cases and deaths. Heterogeneity has been addressed by assuming a geometrical
distribution underlying the data generation process. An (approximated) analytical variance of the
estimator has been derived to compute reliable confidence intervals at 95% level.
Results: A motivating application to the Austrian situation is provided and compared with an independent
and representative study on prevalence of Covid-19 infection. Our estimates match well with the results
from the independent prevalence study, but the capture–recapture estimate has less uncertainty
involved as it is based on a larger sample size. Results from other European countries are mentioned in
the discussion. The estimated ratio of the total estimated cases to the observed cases is around the value
of 2.3 for all the analyzed countries.
Conclusions: The proposed method answers to a fundamental open question: “How many undetected
cases are going around?”. CR methods provide a straightforward solution to shed light on undetected
cases, incorporating heterogeneity that may arise in the probability of being detected.