TY - JOUR
T1 - Predictors of mortality in hospitalised patients with COVID-19
T2 - A 1-year case-control study
AU - Camacho-Domínguez, Laura
AU - Rojas, Manuel
AU - Herrán, María
AU - Rodríguez, Yhojan
AU - Beltrán, Santiago
AU - Galindo, Paola Saboya
AU - Aguirre-Correal, Nicolas
AU - Espitia, María
AU - García, Santiago
AU - Bejarano, Valeria
AU - Morales-González, Victoria
AU - Covaleda-Vargas, Jaime Enrique
AU - Rodríguez-Jiménez, Mónica
AU - Zapata, Elizabeth
AU - Monsalve, Diana M.
AU - Acosta-Ampudia, Yeny
AU - Anaya, Juan Manuel
AU - Ramírez-Santana, Carolina
N1 - Publisher Copyright:
© Author(s) (or their employer(s)) 2024. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.
PY - 2024/2/14
Y1 - 2024/2/14
N2 - Background A paucity of predictive models assessing risk factors for COVID-19 mortality that extend beyond age and gender in Latino population is evident in the current academic literature. Objectives To determine the associated factors with mortality, in addition to age and sex during the first year of the pandemic. Design A case-control study with retrospective revision of clinical and paraclinical variables by systematic revision of clinical records was conducted. Multiple imputations by chained equation were implemented to account for missing variables. Classification and regression trees (CART) were estimated to evaluate the interaction of associated factors on admission and their role in predicting mortality during hospitalisation. No intervention was performed. Setting High-complexity centre above 2640 m above sea level (masl) in Colombia. Participants A population sample of 564 patients admitted to the hospital with confirmed COVID-19 by PCR. Deceased patients (n=282) and a control group (n=282), matched by age, sex and month of admission, were included. Main outcome measure Mortality during hospitalisation. Main results After the imputation of datasets, CART analysis estimated 11 clinical profiles based on respiratory distress, haemoglobin, lactate dehydrogenase, partial pressure of oxygen to inspired partial pressure of oxygen ratio, chronic kidney disease, ferritin, creatinine and leucocytes on admission. The accuracy model for prediction was 80.4% (95% CI 71.8% to 87.3%), with an area under the curve of 78.8% (95% CI 69.63% to 87.93%). Conclusions This study discloses new interactions between clinical and paraclinical features beyond age and sex influencing mortality in COVID-19 patients. Furthermore, the predictive model could offer new clues for the personalised management of this condition in clinical settings.
AB - Background A paucity of predictive models assessing risk factors for COVID-19 mortality that extend beyond age and gender in Latino population is evident in the current academic literature. Objectives To determine the associated factors with mortality, in addition to age and sex during the first year of the pandemic. Design A case-control study with retrospective revision of clinical and paraclinical variables by systematic revision of clinical records was conducted. Multiple imputations by chained equation were implemented to account for missing variables. Classification and regression trees (CART) were estimated to evaluate the interaction of associated factors on admission and their role in predicting mortality during hospitalisation. No intervention was performed. Setting High-complexity centre above 2640 m above sea level (masl) in Colombia. Participants A population sample of 564 patients admitted to the hospital with confirmed COVID-19 by PCR. Deceased patients (n=282) and a control group (n=282), matched by age, sex and month of admission, were included. Main outcome measure Mortality during hospitalisation. Main results After the imputation of datasets, CART analysis estimated 11 clinical profiles based on respiratory distress, haemoglobin, lactate dehydrogenase, partial pressure of oxygen to inspired partial pressure of oxygen ratio, chronic kidney disease, ferritin, creatinine and leucocytes on admission. The accuracy model for prediction was 80.4% (95% CI 71.8% to 87.3%), with an area under the curve of 78.8% (95% CI 69.63% to 87.93%). Conclusions This study discloses new interactions between clinical and paraclinical features beyond age and sex influencing mortality in COVID-19 patients. Furthermore, the predictive model could offer new clues for the personalised management of this condition in clinical settings.
KW - COVID-19
KW - INFECTIOUS DISEASES
KW - Risk Factors
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U2 - 10.1136/bmjopen-2023-072784
DO - 10.1136/bmjopen-2023-072784
M3 - Article
C2 - 38355186
AN - SCOPUS:85185343024
SN - 2044-6055
VL - 14
JO - BMJ Open
JF - BMJ Open
IS - 2
M1 - e072784
ER -