| Literature DB >> 34488035 |
Chaoran Chen1, Sarah Ann Nadeau1, Ivan Topolsky1, Marc Manceau1, Jana S Huisman2, Kim Philipp Jablonski1, Lara Fuhrmann1, David Dreifuss1, Katharina Jahn1, Christiane Beckmann3, Maurice Redondo3, Christoph Noppen3, Lorenz Risch4, Martin Risch4, Nadia Wohlwend4, Sinem Kas4, Thomas Bodmer4, Tim Roloff5, Madlen Stange5, Adrian Egli6, Isabella Eckerle7, Laurent Kaiser8, Rebecca Denes9, Mirjam Feldkamp9, Ina Nissen9, Natascha Santacroce9, Elodie Burcklen9, Catharine Aquino10, Andreia Cabral de Gouvea10, Maria Domenica Moccia10, Simon Grüter10, Timothy Sykes10, Lennart Opitz10, Griffin White10, Laura Neff10, Doris Popovic10, Andrea Patrignani10, Jay Tracy10, Ralph Schlapbach10, Emmanouil T Dermitzakis11, Keith Harshman12, Ioannis Xenarios11, Henri Pegeot13, Lorenzo Cerutti13, Deborah Penet13, Anthony Blin13, Melyssa Elies13, Christian L Althaus14, Christian Beisel15, Niko Beerenwinkel1, Martin Ackermann16, Tanja Stadler17.
Abstract
BACKGROUND: In December 2020, the United Kingdom (UK) reported a SARS-CoV-2 Variant of Concern (VoC) which is now named B.1.1.7. Based on initial data from the UK and later data from other countries, this variant was estimated to have a transmission fitness advantage of around 40-80 % (Volz et al., 2021; Leung et al., 2021; Davies et al., 2021). AIM: This study aims to estimate the transmission fitness advantage and the effective reproductive number of B.1.1.7 through time based on data from Switzerland.Entities:
Keywords: B.1.1.7; COVID-19; Pandemic; SARS-CoV-2; Transmission advantage
Mesh:
Year: 2021 PMID: 34488035 PMCID: PMC8452947 DOI: 10.1016/j.epidem.2021.100480
Source DB: PubMed Journal: Epidemics ISSN: 1878-0067 Impact factor: 5.324
Estimates of the growth rate a and the sigmoid’s midpoint t0 (measured in days after Dec. 14)as well as the transmission fitness advantages f and f are reported. In the f calculation, the Swiss-wide estimate of the reproductive number for the time period 01 January 2021-17 January 2021 is assumed for the R. mismatch of the total number of infections and the Viollier AG-based projections.
| Region | Dataset | ||||
|---|---|---|---|---|---|
| Switzerland | Viollier | 0.08 [0.08; 0.09] | 65 [64; 66] | 0.49 [0.47; 0.52] | 0.48 [0.46; 0.50] |
| Switzerland | Risch | 0.08 [0.07; 0.08] | 69 [68; 70] | 0.45 [0.43; 0.48] | 0.45 [0.43; 0.47] |
| Central Switzerland | Viollier | 0.09 [0.07; 0.11] | 73 [67; 79] | 0.51 [0.37; 0.66] | 0.50 [0.38; 0.62] |
| Espace Mittelland | Viollier | 0.07 [0.07; 0.08] | 64 [62; 66] | 0.41 [0.37; 0.45] | 0.41 [0.38; 0.44] |
| Grossregion Nordwestschweiz | Viollier | 0.09 [0.08; 0.10] | 67 [65; 68] | 0.53 [0.48; 0.59] | 0.52 [0.47; 0.56] |
| Grossregion Tessin | Viollier | 0.07 [0.04; 0.11] | 77 [69; 86] | 0.42 [0.20; 0.64] | 0.43 [0.24; 0.61] |
| Grossregion Zurich | Viollier | 0.09 [0.08; 0.10] | 68 [65; 70] | 0.55 [0.47; 0.62] | 0.53 [0.47; 0.58] |
| Lake Geneva region | Viollier | 0.10 [0.09; 0.11] | 54 [52; 56] | 0.61 [0.51; 0.71] | 0.57 [0.50; 0.65] |
| Lake Geneva region | HUG | 0.09 [0.09; 0.10] | 52 [51; 53] | 0.56 [0.50; 0.62] | 0.54 [0.49; 0.59] |
| Ostschweiz | Viollier | 0.10 [0.08; 0.11] | 65 [62; 68] | 0.58 [0.46; 0.69] | 0.55 [0.46; 0.64] |
Fig. 1Logistic growth of frequency of B.1.1.7 in Switzerland. Green points are the empirical proportions of B.1.1.7 for each day (i.e. number of B.1.1.7 samples divided by the total number of samples). Blue vertical lines are the estimated 95 % uncertainty of this proportion for each day, assuming a simple binomial sampling and Wilson uncertainty intervals. A logistic growth function fit to the data from all of Switzerland is shown in black with the 95 % uncertainty interval of the proportions in gray (i.e. p(t) from Eqn. 2 and 5 in the supplementary material section A.3).
Fig. 2Logistic growth of frequency of B.1.1.7 in the seven economic regions of Switzerland. For details see legend of Fig. 1.
Fig. 3Estimates of the effective reproductive number R of the B.1.1.7 variant and non-B.1.1.7 variants. Results in the top row are based on Viollier data, and in the bottom row based on Risch data. Within each panel, the top row shows the results of the continuously varying R estimation, and the bottom of the piecewise constant R estimation. The left column shows the R estimates, whereas the right shows the ratio between R estimated for B.1.1.7 and R estimated for all nonB.1.1.7 variants. The confidence intervals for the R of non-B117 variants show a 7-day periodicity due to lower case reporting on weekends. The R value was allowed to change on 18 January 2021 in the statistical inference as measures were tightened on that day.
Fig. 4Change in the number of B.1.1.7 variants and in the number of all cases through time for Switzerland. Based on the average reproductive number R for Switzerland estimated for the time period 01 January 2021-17 January 2021 (i.e. prior to the tightening of measures on 18 January 2021) and the transmission fitness advantage f for the same time period, we plot the expected number of B.1.1.7 variants (blue) and the expected number of non-B.1.1.7 variants (green) under the continuous model. The model is initialized on Jan. 1 with the total number of cases and the estimated number of B.1.1.7 cases on that day. This model is compared to data: The dark green line is the total number of confirmed cases (7-day average). The dark blue line is the estimated number of confirmed B.1.1.7 cases (7-day average); this number is the product of the total number of confirmed cases for a day by the proportion of the B.1.1.7 variant for that day. If the empirical data develops as the model, the dark blue line follows the upper end of the blue area and the dark green line follows the upper end of the green area.
Fig. 5Change in the number of B.1.1.7 variants and in the number of all cases through time for the seven Swiss economic regions. For details see legend of Fig. 4. We use the reproductive number estimated for the whole of Switzerland for the continuous-time model such that we can compare to what extend regions differ from the national dynamic. The regional transmission fitness advantage is taken from Table 1.