Author: Venturini, Sergio; Orso, Daniele; Cugini, Francesco; Crapis, Massimo; Fossati, Sara; Callegari, Astrid; Pellis, Tommaso; Tonizzo, Maurizio; Grembiale, Alessandro; Rosso, Alessia; Tamburrini, Mario; D'Andrea, Natascia; Vetrugno, Luigi; Bove, Tiziana
Title: Classification and analysis of outcome predictors in nonâ€critically ill COVIDâ€19 patients Cord-id: g5zam27j Document date: 2021_4_9
ID: g5zam27j
Snippet: BACKGROUND: Early detection of severe acute respiratory syndrome coronavirus 2 (SARSâ€CoVâ€2)â€infected patients who could develop a severe form of COVIDâ€19 must be considered of great importance to carry out adequate care and optimise the use of limited resources. AIMS: To use several machine learning classification models to analyse a series of nonâ€critically ill COVIDâ€19 patients admitted to a general medicine ward to verify if any clinical variables recorded could predict the clinic
Document: BACKGROUND: Early detection of severe acute respiratory syndrome coronavirus 2 (SARSâ€CoVâ€2)â€infected patients who could develop a severe form of COVIDâ€19 must be considered of great importance to carry out adequate care and optimise the use of limited resources. AIMS: To use several machine learning classification models to analyse a series of nonâ€critically ill COVIDâ€19 patients admitted to a general medicine ward to verify if any clinical variables recorded could predict the clinical outcome. METHODS: We retrospectively analysed nonâ€critically ill patients with COVIDâ€19 admitted to the general ward of the hospital in Pordenone from 1 March 2020 to 30 April 2020. Patients' characteristics were compared based on clinical outcomes. Through several machine learning classification models, some predictors for clinical outcome were detected. RESULTS: In the considered period, we analysed 176 consecutive patients admitted: 119 (67.6%) were discharged, 35 (19.9%) dead and 22 (12.5%) were transferred to intensive care unit. The most accurate models were a random forest model (M2) and a conditional inference tree model (M5) (accuracy = 0.79; 95% confidence interval 0.64–0.90, for both). For M2, glomerular filtration rate and creatinine were the most accurate predictors for the outcome, followed by age and fractionâ€inspired oxygen. For M5, serum sodium, body temperature and arterial pressure of oxygen and inspiratory fraction of oxygen ratio were the most reliable predictors. CONCLUSIONS: In nonâ€critically ill COVIDâ€19 patients admitted to a medical ward, glomerular filtration rate, creatinine and serum sodium were promising predictors for the clinical outcome. Some factors not determined by COVIDâ€19, such as age or dementia, influence clinical outcomes.
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