Assessing SARS-CoV-2 Testing Adherence in a University Town: Recurrent Event Modeling Analysis
Yury E García, Alec J Schmidt, Leslie Solis, María L Daza-Torres, J Cricelio Montesinos-López, Brad H Pollock, Miriam Nuño

TL;DR
This study analyzed testing adherence in a California university town during the pandemic, finding demographic differences in who tested and how often.
Contribution
The novel contribution is using recurrent event modeling to assess long-term testing adherence in a community-based pandemic response program.
Findings
Men and younger adults were less likely to retest or stop testing altogether compared to women and older adults.
Asian participants were less likely to stop testing, while Hispanic/Latino and Black/African American participants were more likely to stop.
Omicron period saw the highest daily testing participation and most positive cases.
Abstract
Healthy Davis Together was a program launched in September 2020 in the city of Davis, California, to mitigate the spread of COVID-19 and facilitate the return to normalcy. The program involved multiple interventions, including free saliva-based asymptomatic testing, targeted communication campaigns, education efforts, and distribution of personal protective equipment, community partnerships, and investments in the local economy. This study identified demographic characteristics of individuals that underwent testing and assessed adherence to testing over time in a community pandemic-response program launched in a college town in California, United States. This study outlines overall testing engagement, identifies demographic characteristics of participants, and evaluates testing participation changes over 4 periods of the COVID-19 pandemic, distinguished by the dominant variants Delta…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Data-Driven Disease Surveillance · SARS-CoV-2 detection and testing
