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Prognostic implications of comorbidity patterns in critically ill COVID-19 patients: A multicenter, observational study.

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Date

2022-05-29

Authors

Benitez, Ivan D
de Batlle, Jordi
Torres, Gerard
Gonzalez, Jessica
de Gonzalo-Calvo, David
Targa, Adriano D S
Gort-Paniello, Clara
Moncusi-Moix, Anna
Ceccato, Adrian
Fernandez-Barat, Laia

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The Lancet Publishing Group
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Abstract

The clinical heterogeneity of COVID-19 suggests the existence of different phenotypes with prognostic implications. We aimed to analyze comorbidity patterns in critically ill COVID-19 patients and assess their impact on in-hospital outcomes, response to treatment and sequelae. Multicenter prospective/retrospective observational study in intensive care units of 55 Spanish hospitals. 5866 PCR-confirmed COVID-19 patients had comorbidities recorded at hospital admission; clinical and biological parameters, in-hospital procedures and complications throughout the stay; and, clinical complications, persistent symptoms and sequelae at 3 and 6 months. Latent class analysis identified 3 phenotypes using training and test subcohorts: low-morbidity (n=3385; 58%), younger and with few comorbidities; high-morbidity (n=2074; 35%), with high comorbid burden; and renal-morbidity (n=407; 7%), with chronic kidney disease (CKD), high comorbidity burden and the worst oxygenation profile. Renal-morbidity and high-morbidity had more in-hospital complications and higher mortality risk than low-morbidity (adjusted HR (95% CI): 1.57 (1.34-1.84) and 1.16 (1.05-1.28), respectively). Corticosteroids, but not tocilizumab, were associated with lower mortality risk (HR (95% CI) 0.76 (0.63-0.93)), especially in renal-morbidity and high-morbidity. Renal-morbidity and high-morbidity showed the worst lung function throughout the follow-up, with renal-morbidity having the highest risk of infectious complications (6%), emergency visits (29%) or hospital readmissions (14%) at 6 months (p Comorbidity-based phenotypes were identified and associated with different expression of in-hospital complications, mortality, treatment response, and sequelae, with CKD playing a major role. This could help clinicians in day-to-day decision making including the management of post-discharge COVID-19 sequelae.

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Patient discharge
Prognosis
Patient readmission
Critical illness
Latent class analysis
Aftercare
Comorbidity

DeCS Terms

Alta del paciente
Análisis de clases latentes
Comorbilidad
Cuidados posteriores
Enfermedad vrítica
Pronóstico
Readmisión del paciente

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Keywords

COVID-19, Critical care, Prognosis, Área de Gestión Sanitaria Campo de Gibraltar Oeste, Área de Gestión Sanitaria de Jerez, Costa Noroeste y Sierra de Cádiz, Área de Gestión Sanitaria Sur de Sevilla

Citation

Benítez ID, de Batlle J, Torres G, González J, de Gonzalo-Calvo D, Targa ADS, et al. Prognostic implications of comorbidity patterns in critically ill COVID-19 patients: A multicenter, observational study. Lancet Reg Health Eur. 2022 May 29;18:100422