Complicity of the pre-existing clinical phenotype with the outcome of death in COVID-19 patients
DOI:
https://doi.org/10.35366/107508Keywords:
COVID-19, epidemiology, factors riskAbstract
Introduction: The Coronavirus Disease (COVID-19) has been a public health problem worldwide
for a considerable time. According to the COVID-19 dashboard at Johns Hopkins University (JHU),
Mexico is in the fourteenth place of reported cases. Some studies have described some risk factors
associated with having COVID-19. However, the risk to develop different COVID-19 outcomes is
unclear. Objective: To describe the risk factors for develop different COVID-19 outcomes. Material
and methods: We carried out a multicenter cross-sectional study, from June 2020 to March2021. A
non-probabilistic sampling study design was used. For continuous variables Kruskal-Wallis test was
carried out for comparing nonparametric distribution among studied groups. χ2 test was performed for
the categorical variables. Univariated logistic analysis was performed to determine the associations
of risk factors to COVID-19 outcomes. The analysis was performed using the STATA v.13 software.
Results: We analyzed 713 patients and were classified as mild (N = 193, 27%); severe (N = 232,
32%); critical (N =169, 24%) and deceased (N = 119, 17%). Critical and deceased group had a
highest percentage of males with 121 (72%) and 75 (63%) respectively. The main comorbidities
were overweight (N = 221, 31%), obesity (N = 215, 30%) and type 2 diabetes (N = 208, 29%). Others
comorbidities were smoking (17%), cardiopathies (3%), alcoholism (2%) neumopathies (1.6%) and
nefropahties (1.5%). Conclusion: The main risk factors in deceased group were overweight and
type 2 diabetes.
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Copyright (c) 2022 Instituto Nacional de Rehabilitación Luis Guillermo Ibarra Ibarra
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© Instituto Nacional de Rehabilitación Luis Guillermo Ibarra Ibarra under a Creative Commons Attribution 4.0 International (CC BY 4.0) license which allows to reproduce and modify the content if appropiate recognition to the original source is given.