This page presents detailed model outputs associated with the following article:
Estimating the impact of school closures on the COVID-19 dynamics in 74 countries: a modelling analysis.
Romain Ragonnet, Angus E Hughes, David S Shipman, Michael T Meehan, Alec S Henderson, Guillaume Briffoteaux, Nouredine Melab, Daniel Tuyttens, Emma S McBryde, James M Trauer.
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Selected country: Korea, Republic of
Selected analysis: SA2: Without Google mobility data
- The first panel presents a scenario comparison based on the maximum a-posteriori parameter set.
- The second and third panels present the uncertainty around the estimated epidemic trajectories, as median (black lines), interquartile range (dark shade) and 95% credible interval (light shade).
Relative outcomes
- Positive values indicate a positive effect of school closures on the relevant indicator.
- Negative values indicate that school closures exacerbated the relevant COVID-19 indicator..
|
N infections averted |
% infections averted |
% hospital peak reduction |
N deaths averted |
% deaths averted |
percentile |
|
|
|
|
|
2.5% |
-1213886 |
-3.2 |
-64.9 |
6134 |
13.4 |
25.0% |
1994413 |
4.4 |
-30.6 |
11495 |
22.7 |
50.0% |
3700221 |
8.6 |
-15.9 |
16233 |
29.3 |
75.0% |
5690840 |
14.6 |
2.1 |
22180 |
38.4 |
97.5% |
11297175 |
27.9 |
61.9 |
41846 |
54.5 |