Skip navigation

Zastosuj identyfikator do podlinkowania lub zacytowania tej pozycji: http://hdl.handle.net/20.500.12128/22789
Tytuł: Reducing bias in risk indices for COVID-19
Autor: Michalak, Michał
Cordes, Jack
Kulawik, Agnieszka
Sitek, Sławomir
Pytel, Sławomir
Zuzańska-Żyśko, Elżbieta
Wieczorek, Radosław
Słowa kluczowe: relative risk; dynamics; COVID-19; unbiased metrics; weighting; Poland
Data wydania: 2022
Źródło: "Geospatial Health", Vol. 17, iss. s1, 2022, s. 1-13
Abstrakt: Spatiotemporal modelling of infectious diseases such as coronavirus disease 2019 (COVID-19) involves using a variety of epidemiological metrics such as regional proportion of cases and/or regional positivity rates. Although observing changes of these indices over time is critical to estimate the regional disease burden, the dynamical properties of these measures, as well as crossrelationships, are usually not systematically given or explained. Here we provide a spatiotemporal framework composed of six commonly used and newly constructed epidemiological metrics and conduct a case study evaluation. We introduce a refined risk estimate that is biased neither by variation in population size nor by the spatial heterogeneity of testing. In particular, the proposed methodology would be useful for unbiased identification of time periods with elevated COVID-19 risk without sensitivity to spatial heterogeneity of neither population nor testing coverage.We offer a case study in Poland that shows improvement over the bias of currently used methods. Our results also provide insights regarding regional prioritisation of testing and the consequences of potential synchronisation of epidemics between regions. The approach should apply to other infectious diseases and other geographical areas.
URI: http://hdl.handle.net/20.500.12128/22789
DOI: 10.4081/gh.2022.1013
ISSN: 1827-1987
1970-7096
Pojawia się w kolekcji:Artykuły (WNP)

Pliki tej pozycji:
Plik Opis RozmiarFormat 
Sitek_et_all_Reducing_bias_in_risk.pdf1,6 MBAdobe PDFPrzejrzyj / Otwórz
Pokaż pełny rekord


Uznanie autorstwa - użycie niekomercyjne 3.0 Polska Creative Commons Creative Commons