TY - JOUR
T1 - Probabilistic survival modeling in health research
T2 - an assessment using cohort data from hospitalized patients with COVID-19 in a Latin American city
AU - Passarelli-Araujo, Hisrael
AU - Passarelli-Araujo, Hemanoel
AU - Pescim, Rodrigo R.
AU - Olak, André S.
AU - Susuki, Aline M.
AU - Tomimatsu, Maria F.A.I.
AU - Volce, Cilio J.
AU - Neves, Maria A.Z.
AU - Silva, Fernanda F.
AU - Narciso, Simone G.
AU - Paoliello, Monica M.B.
AU - Pott-Junior, Henrique
AU - Urbano, Mariana R.
N1 - Funding Information:
We acknowledge CAPES (Coordenação de Aperfeiçoamento de Pessoal de Nível Superior) for the financial support and the City Health Secretary of Londrina for providing the data.
Publisher Copyright:
© 2023 Taylor & Francis.
PY - 2023
Y1 - 2023
N2 - Probabilistic survival methods have been used in health research to analyze risk factors and adverse health outcomes associated with COVID-19. The aim of this study was to employ a probabilistic model selected among three distributions (exponential, Weibull, and lognormal) to investigate the time from hospitalization to death and determine the mortality risks among hospitalized patients with COVID-19. A retrospective cohort study was conducted for patients hospitalized due to COVID-19 within 30 days in Londrina, Brazil, between January 2021 and February 2022, registered in the database for severe acute respiratory infections (SIVEP-Gripe). Graphical and Akaike Information Criterion (AIC) methods were used to compare the efficiency of the three probabilistic models. The results from the final model were presented as hazard and event time ratios. Our study comprised of 7,684 individuals, with an overall case fatality rate of 32.78%. Data suggested that older age, male sex, severe comorbidity score, intensive care unit admission, and invasive ventilation significantly increased risks for in-hospital mortality. Our study highlights the conditions that confer higher risks for adverse clinical outcomes attributed to COVID-19. The step-by-step process for selecting appropriate probabilistic models may be extended to other investigations in health research to provide more reliable evidence on this topic.
AB - Probabilistic survival methods have been used in health research to analyze risk factors and adverse health outcomes associated with COVID-19. The aim of this study was to employ a probabilistic model selected among three distributions (exponential, Weibull, and lognormal) to investigate the time from hospitalization to death and determine the mortality risks among hospitalized patients with COVID-19. A retrospective cohort study was conducted for patients hospitalized due to COVID-19 within 30 days in Londrina, Brazil, between January 2021 and February 2022, registered in the database for severe acute respiratory infections (SIVEP-Gripe). Graphical and Akaike Information Criterion (AIC) methods were used to compare the efficiency of the three probabilistic models. The results from the final model were presented as hazard and event time ratios. Our study comprised of 7,684 individuals, with an overall case fatality rate of 32.78%. Data suggested that older age, male sex, severe comorbidity score, intensive care unit admission, and invasive ventilation significantly increased risks for in-hospital mortality. Our study highlights the conditions that confer higher risks for adverse clinical outcomes attributed to COVID-19. The step-by-step process for selecting appropriate probabilistic models may be extended to other investigations in health research to provide more reliable evidence on this topic.
KW - Brazil
KW - parametric models
KW - risk factors
KW - SARS-CoV-2
KW - Survival analysis
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U2 - 10.1080/15287394.2023.2181249
DO - 10.1080/15287394.2023.2181249
M3 - Article
C2 - 36809963
AN - SCOPUS:85148630685
SN - 1528-7394
JO - Journal of Toxicology and Environmental Health - Part A: Current Issues
JF - Journal of Toxicology and Environmental Health - Part A: Current Issues
ER -