Abstract
Abstract
Objective:
To evaluate the information collected from workers infected with severe acute respiratory coronavirus virus 2 (SARS-CoV-2) or close contacts using a digital data gathering system (DDGS) developed at the onset of the coronavirus disease 2019 (COVID-19) pandemic to better manage the spread of infection at our hospital.
Design:
Observational retrospective study.
Setting:
Tertiary University Hospital “Spedali Civili” Hospital, Brescia, Italy.
Participants:
Workers (most of whom are healthcare workers) employed at the hospital.
Methods:
The information collected by the DDGS was transferred to the IBM SPSS statistical software package and then statistically analyzed.
Results:
Overall, ∼16% of the hospital workforce was infected by SARS-CoV-2 in the first pandemic wave. Nurses were the professional category with the highest infection rate (∼15%). The asymptomatic rate of infection was between 31% and 62%. Positive molecular swabs were significantly more frequent in workers undergoing the test after sending a signaling form to our DDGS. Among workers sending the signaling forms, the information about symptoms was more predictive in terms of risk, compared to the close-contact information. The concordance between molecular swabs and subsequent serological testing was significantly higher in workers signaling their at-risk condition through the DDGS.
Conclusions:
Overall, our data demonstrate the advantages of a digital system to gather information from workers, which is useful for managing emergencies such as the COVID-19 pandemic. This holds particularly true for large organizations such as hospitals.
Publisher
Cambridge University Press (CUP)