Universal Masking is Urgent in the COVID-19 Pandemic: SEIR and Agent
Based Models, Empirical Validation, Policy Recommendations
- URL: http://arxiv.org/abs/2004.13553v1
- Date: Wed, 22 Apr 2020 11:42:11 GMT
- Title: Universal Masking is Urgent in the COVID-19 Pandemic: SEIR and Agent
Based Models, Empirical Validation, Policy Recommendations
- Authors: De Kai, Guy-Philippe Goldstein, Alexey Morgunov, Vishal Nangalia, Anna
Rotkirch
- Abstract summary: We present two models for the COVID-19 pandemic predicting the impact of universal face mask wearing upon the spread of SARS-CoV-2 virus.
We show a near perfect correlation between early universal masking and successful suppression of daily case growth rates.
We recommend immediate mask wearing recommendations, official guidelines for correct use, and awareness campaigns.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present two models for the COVID-19 pandemic predicting the impact of
universal face mask wearing upon the spread of the SARS-CoV-2 virus--one
employing a stochastic dynamic network based compartmental SEIR
(susceptible-exposed-infectious-recovered) approach, and the other employing
individual ABM (agent-based modelling) Monte Carlo simulation--indicating (1)
significant impact under (near) universal masking when at least 80% of a
population is wearing masks, versus minimal impact when only 50% or less of the
population is wearing masks, and (2) significant impact when universal masking
is adopted early, by Day 50 of a regional outbreak, versus minimal impact when
universal masking is adopted late. These effects hold even at the lower
filtering rates of homemade masks. To validate these theoretical models, we
compare their predictions against a new empirical data set we have collected
that includes whether regions have universal masking cultures or policies,
their daily case growth rates, and their percentage reduction from peak daily
case growth rates. Results show a near perfect correlation between early
universal masking and successful suppression of daily case growth rates and/or
reduction from peak daily case growth rates, as predicted by our theoretical
simulations.
Our theoretical and empirical results argue for urgent implementation of
universal masking. As governments plan how to exit societal lockdowns, it is
emerging as a key NPI; a "mouth-and-nose lockdown" is far more sustainable than
a "full body lockdown", on economic, social, and mental health axes. An
interactive visualization of the ABM simulation is at http://dek.ai/masks4all.
We recommend immediate mask wearing recommendations, official guidelines for
correct use, and awareness campaigns to shift masking mindsets away from pure
self-protection, towards aspirational goals of responsibly protecting one's
community.
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