| Literature DB >> 32758313 |
A Pikovski1, K Bentele2.
Abstract
Diagnostic testing for the novel coronavirus is an important tool to fight the coronavirus disease (Covid-19) pandemic. However, testing capacities are limited. A modified testing protocol, whereby a number of probes are 'pooled' (i.e. grouped), is known to increase the capacity for testing. Here, we model pooled testing with a double-average model, which we think to be close to reality for Covid-19 testing. The optimal pool size and the effect of test errors are considered. The results show that the best pool size is three to five, under reasonable assumptions. Pool testing even reduces the number of false positives in the absence of dilution effects.Entities:
Keywords: COVID-19; Coronavirus; epidemiology; laboratory tests; mathematical modelling
Mesh:
Year: 2020 PMID: 32758313 PMCID: PMC7463151 DOI: 10.1017/S0950268820001752
Source DB: PubMed Journal: Epidemiol Infect ISSN: 0950-2688 Impact factor: 2.451
Fig. 1.Optimal pool size (double-averging model), for different prevalence ranges.
Fig. 2.Test ratio (number of tests with pooling divided by number of tests without pooling), for prevalence range between 0 and pmax. The coloured area indicates improvement with respect to individual testing.
Fig. 3.False-positive ratio for pooled tests, for prevalence range between 0 and pmax. The coloured area indicates improvement with respect to individual testing. Here the individual test s = 90% and specificity z = 99%. Pool size is 4.
Fig. 4.Expected test ratio with pooling (black curve) as function of prevalence, for pool size M = 4. The coloured areas indicate the standard error (1σ), for different number of samples N = 20, 40, 100, 500.