Simulating COVID19 Transmission From Observed Movement: An Agent-Based Model of Classroom Dispersion
Current models of COVID-19 transmission predict infection from reported or assumed interactions. Here we leverage high-resolution observations of interaction to simulate infectious processes. Ultra-Wide Radio Frequency Identification (RFID) systems were employed to track the real-time physical movem...
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Zusammenfassung: | Current models of COVID-19 transmission predict infection from reported or
assumed interactions. Here we leverage high-resolution observations of
interaction to simulate infectious processes. Ultra-Wide Radio Frequency
Identification (RFID) systems were employed to track the real-time physical
movements and directional orientation of children and their teachers in 4
preschool classes over a total of 34 observations. An agent-based transmission
model combined observed interaction patterns (individual distance and
orientation) with CDC-published risk guidelines to estimate the transmission
impact of an infected patient zero attending class on the proportion of overall
infections, the average transmission rate, and the time lag to the appearance
of symptomatic individuals. These metrics highlighted the prophylactic role of
decreased classroom density and teacher vaccinations. Reduction of classroom
density to half capacity was associated with an 18.2% drop in overall infection
proportion while teacher vaccination receipt was associated with a 25.3%drop.
Simulation results of classroom transmission dynamics may inform public policy
in the face of COVID-19 and similar infectious threats. |
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DOI: | 10.48550/arxiv.2108.07808 |