Background and aims: There is poor knowledge on characteristics, comorbidities and laboratory measures associated with risk for adverse outcomes and in-hospital mortality in European Countries. We aimed at identifying baseline characteristics predisposing COVID-19 patients to in-hospital death. Methods and results: Retrospective observational study on 3894 patients with SARS-CoV-2 infection hospitalized from February 19th to May 23rd, 2020 and recruited in 30 clinical centres distributed throughout Italy. Machine learning (random forest)-based and Cox survival analysis. 61.7% of participants were men (median age 67 years), followed up for a median of 13 days. In-hospital mortality exhibited a geographical gradient, Northern Italian regions featuring more than twofold higher death rates as compared to Central/Southern areas (15.6% vs 6.4%, respectively). Machine learning analysis revealed that the most important features in death classification were impaired renal function, elevated C reactive protein and advanced age. These findings were confirmed by multivariable Cox survival analysis (hazard ratio (HR): 8.2; 95% confidence interval (CI) 4.6–14.7 for age ≥85 vs 18–44 y); HR = 4.7; 2.9–7.7 for estimated glomerular filtration rate levels <15 vs ≥ 90 mL/min/1.73 m2; HR = 2.3; 1.5–3.6 for C-reactive protein levels ≥10 vs ≤ 3 mg/L). No relation was found with obesity, tobacco use, cardiovascular disease and related-comorbidities. The associations between these variables and mortality were substantially homogenous across all sub-groups analyses. Conclusions: Impaired renal function, elevated C-reactive protein and advanced age were major predictors of in-hospital death in a large cohort of unselected patients with COVID-19, admitted to 30 different clinical centres all over Italy.

Common cardiovascular risk factors and in-hospital mortality in 3,894 patients with COVID-19: survival analysis and machine learning-based findings from the multicentre Italian CORIST Study / Di Castelnuovo A.; Bonaccio M.; Costanzo S.; Gialluisi A.; Antinori A.; Berselli N.; Blandi L.; Bruno R.; Cauda R.; Guaraldi G.; My I.; Menicanti L.; Parruti G.; Patti G.; Perlini S.; Santilli F.; Signorelli C.; Stefanini G.G.; Vergori A.; Abdeddaim A.; Ageno W.; Agodi A.; Agostoni P.; Aiello L.; Al Moghazi S.; Aucella F.; Barbieri G.; Bartoloni A.; Bologna C.; Bonfanti P.; Brancati S.; Cacciatore F.; Caiano L.; Cannata F.; Carrozzi L.; Cascio A.; Cingolani A.; Cipollone F.; Colomba C.; Crisetti A.; Crosta F.; Danzi G.B.; D'Ardes D.; de Gaetano Donati K.; Di Gennaro F.; Di Palma G.; Di Tano G.; Fantoni M.; Filippini T.; Fioretto P.; Fusco F.M.; Gentile I.; Grisafi L.; Guarnieri G.; Landi F.; Larizza G.; Leone A.; Maccagni G.; Maccarella S.; Mapelli M.; Maragna R.; Marcucci R.; Maresca G.; Marotta C.; Marra L.; Mastroianni F.; Mengozzi A.; Menichetti F.; Milic J.; Murri R.; Montineri A.; Mussinelli R.; Mussini C.; Musso M.; Odone A.; Olivieri M.; Pasi E.; Petri F.; Pinchera B.; Pivato C.A.; Pizzi R.; Poletti V.; Raffaelli F.; Ravaglia C.; Righetti G.; Rognoni A.; Rossato M.; Rossi M.; Sabena A.; Salinaro F.; Sangiovanni V.; Sanrocco C.; Scarafino A.; Scorzolini L.; Sgariglia R.; Simeone P.G.; Spinoni E.; Torti C.; Trecarichi E.M.; Vezzani F.; Veronesi G.; Vettor R.; Vianello A.; Vinceti M.; De Caterina R.; Iacoviello L.. - In: NMCD. NUTRITION METABOLISM AND CARDIOVASCULAR DISEASES. - ISSN 0939-4753. - ELETTRONICO. - 30:(2020), pp. 1899-1913. [10.1016/j.numecd.2020.07.031]

Common cardiovascular risk factors and in-hospital mortality in 3,894 patients with COVID-19: survival analysis and machine learning-based findings from the multicentre Italian CORIST Study

Bartoloni A.;Marcucci R.;
2020

Abstract

Background and aims: There is poor knowledge on characteristics, comorbidities and laboratory measures associated with risk for adverse outcomes and in-hospital mortality in European Countries. We aimed at identifying baseline characteristics predisposing COVID-19 patients to in-hospital death. Methods and results: Retrospective observational study on 3894 patients with SARS-CoV-2 infection hospitalized from February 19th to May 23rd, 2020 and recruited in 30 clinical centres distributed throughout Italy. Machine learning (random forest)-based and Cox survival analysis. 61.7% of participants were men (median age 67 years), followed up for a median of 13 days. In-hospital mortality exhibited a geographical gradient, Northern Italian regions featuring more than twofold higher death rates as compared to Central/Southern areas (15.6% vs 6.4%, respectively). Machine learning analysis revealed that the most important features in death classification were impaired renal function, elevated C reactive protein and advanced age. These findings were confirmed by multivariable Cox survival analysis (hazard ratio (HR): 8.2; 95% confidence interval (CI) 4.6–14.7 for age ≥85 vs 18–44 y); HR = 4.7; 2.9–7.7 for estimated glomerular filtration rate levels <15 vs ≥ 90 mL/min/1.73 m2; HR = 2.3; 1.5–3.6 for C-reactive protein levels ≥10 vs ≤ 3 mg/L). No relation was found with obesity, tobacco use, cardiovascular disease and related-comorbidities. The associations between these variables and mortality were substantially homogenous across all sub-groups analyses. Conclusions: Impaired renal function, elevated C-reactive protein and advanced age were major predictors of in-hospital death in a large cohort of unselected patients with COVID-19, admitted to 30 different clinical centres all over Italy.
2020
30
1899
1913
Goal 3: Good health and well-being for people
Di Castelnuovo A.; Bonaccio M.; Costanzo S.; Gialluisi A.; Antinori A.; Berselli N.; Blandi L.; Bruno R.; Cauda R.; Guaraldi G.; My I.; Menicanti L.; ...espandi
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1213487
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