Increased values of the FIB-4 index appear to be associated with poor clinical outcomes in COVID-19 patients. This study aimed to develop and validate predictive mortality models, using data upon admission of hospitalized patients in four COVID-19 waves between March 2020 and January 2022. A single-center cohort study was performed on consecutive adult patients with Covid-19 admitted at the Fondazione Policlinico Gemelli IRCCS (Rome, Italy). Artificial intelligence and big data processing were used to retrieve data. Patients and clinical characteristics of patients with available FIB-4 data derived from the Gemelli Generator Real World Data (G2 RWD) were used to develop predictive mortality models during the four waves of the COVID-19 pandemic. A logistic regression model was applied to the training and test set (75%:25%). The model's performance was assessed by receiver operating characteristic (ROC) curves. A total of 4936 patients were included. Hypertension (38.4%), cancer (12.15%) and diabetes (16.3%) were the most common comorbidities. 23.9% of patients were admitted to ICU, and 12.6% had mechanical ventilation. During the study period, 762 patients (15.4%) died. We developed a multivariable logistic regression model on patient data from all waves, which showed that the FIB-4 score > 2.53 was associated with increased mortality risk (OR = 4.53, 95% CI 2.83-7.25; p & LE; 0.001). These data may be useful in the risk stratification at the admission of hospitalized patients with COVID-19.

Miele, L., Dajko, M., Savino, M., Capocchiano, N. D., Calvez, V., Liguori, A., Masciocchi, C., Vetrone, L., Mignini, I., Schepis, T., Marrone, G., Biolato, M., Cesario, A., Patarnello, S., Damiani, A., Grieco, A., Valentini, V., Gasbarrini, A., Fib-4 score is able to predict intra-hospital mortality in 4 different SARS-COV2 waves, <<INTERNAL AND EMERGENCY MEDICINE>>, 2023; 18 (5): 1415-1427. [doi:10.1007/s11739-023-03310-y] [https://hdl.handle.net/10807/273514]

Fib-4 score is able to predict intra-hospital mortality in 4 different SARS-COV2 waves

Miele, Luca;Savino, Mariachiara;Liguori, Antonio;Masciocchi, Carlotta;Mignini, Irene;Schepis, Tommaso;Marrone, Giuseppe;Biolato, Marco;Cesario, Alfredo;Damiani, Andrea;Grieco, Antonio;Valentini, Vincenzo;Gasbarrini, Antonio
2023

Abstract

Increased values of the FIB-4 index appear to be associated with poor clinical outcomes in COVID-19 patients. This study aimed to develop and validate predictive mortality models, using data upon admission of hospitalized patients in four COVID-19 waves between March 2020 and January 2022. A single-center cohort study was performed on consecutive adult patients with Covid-19 admitted at the Fondazione Policlinico Gemelli IRCCS (Rome, Italy). Artificial intelligence and big data processing were used to retrieve data. Patients and clinical characteristics of patients with available FIB-4 data derived from the Gemelli Generator Real World Data (G2 RWD) were used to develop predictive mortality models during the four waves of the COVID-19 pandemic. A logistic regression model was applied to the training and test set (75%:25%). The model's performance was assessed by receiver operating characteristic (ROC) curves. A total of 4936 patients were included. Hypertension (38.4%), cancer (12.15%) and diabetes (16.3%) were the most common comorbidities. 23.9% of patients were admitted to ICU, and 12.6% had mechanical ventilation. During the study period, 762 patients (15.4%) died. We developed a multivariable logistic regression model on patient data from all waves, which showed that the FIB-4 score > 2.53 was associated with increased mortality risk (OR = 4.53, 95% CI 2.83-7.25; p & LE; 0.001). These data may be useful in the risk stratification at the admission of hospitalized patients with COVID-19.
2023
Inglese
Miele, L., Dajko, M., Savino, M., Capocchiano, N. D., Calvez, V., Liguori, A., Masciocchi, C., Vetrone, L., Mignini, I., Schepis, T., Marrone, G., Biolato, M., Cesario, A., Patarnello, S., Damiani, A., Grieco, A., Valentini, V., Gasbarrini, A., Fib-4 score is able to predict intra-hospital mortality in 4 different SARS-COV2 waves, <<INTERNAL AND EMERGENCY MEDICINE>>, 2023; 18 (5): 1415-1427. [doi:10.1007/s11739-023-03310-y] [https://hdl.handle.net/10807/273514]
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