An early detection tool for latent COVID-19 infections in oncology staff and patients is essential to prevent outbreaks in a cancer center. (1) Background: In this study, we developed and implemented two early detection tools for the radiotherapy area to identify COVID-19 cases opportunely. (2) Methods: Staff and patients answered a questionnaire (electronic and paper surveys, respectively) with clinical and epidemiological information. The data were collected through two online survey tools: Real-Time Tracking (R-Track) and Summary of Factors (S-Facts). Cut-off values were established according to the algorithm models. SARS-CoV-2 qRT-PCR tests confirmed the positive algorithms individuals. (3) Results: Oncology staff members ( = 142) were tested, and 14% ( = 20) were positives for the R-Track algorithm; 75% ( = 15) were qRT-PCR positive. The S-Facts Algorithm identified 7.75% ( = 11) positive oncology staff members, and 81.82% ( = 9) were qRT-PCR positive. Oncology patients ( = 369) were evaluated, and 1.36% ( = 5) were positive for the Algorithm used. The five patients (100%) were confirmed by qRT-PCR. (4) Conclusions: The proposed early detection tools have proved to be a low-cost and efficient tool in a country where qRT-PCR tests and vaccines are insufficient for the population.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8950794 | PMC |
http://dx.doi.org/10.3390/healthcare10030462 | DOI Listing |
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