Fib-4 score is able to predict intra-hospital mortality in 4 different SARS-COV2 waves.
Luca MieleMarianxhela DajkoMaria Chiara SavinoNicola D CapocchianoValentino CalvezAntonio LiguoriCarlotta MasciocchiLorenzo VetroneIrene MigniniTommaso SchepisGiuseppe MarroneMarco BiolatoAlfredo CesarioStefano PatarnelloAndrea DamianiAntonio GriecoVincenzo ValentiniAntonio Gasbarrininull nullPublished in: Internal and emergency medicine (2023)
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 ≤ 0.001). These data may be useful in the risk stratification at the admission of hospitalized patients with COVID-19.
Keyphrases
- big data
- end stage renal disease
- sars cov
- artificial intelligence
- chronic kidney disease
- ejection fraction
- newly diagnosed
- mechanical ventilation
- emergency department
- machine learning
- healthcare
- peritoneal dialysis
- prognostic factors
- type diabetes
- cardiovascular disease
- electronic health record
- coronavirus disease
- blood pressure
- risk factors
- adipose tissue
- extracorporeal membrane oxygenation
- liver fibrosis
- adverse drug
- papillary thyroid
- drug induced
- virtual reality
- arterial hypertension