Articles producció científicaCiències Mèdiques Bàsiques

Clustering COVID-19 ARDS patients through the first days of ICU admission. An analysis of the CIBERESUCICOVID Cohort

  • Dades identificatives

    Identificador:  imarina:9374041
    Autors:  Ceccato, Adrian; Forne, Carles; Bos, Lieuwe D; Camprubi-Rimblas, Marta; Areny-Balaguero, Aina; Campana-Duel, Elena; Quero, Sara; Diaz, Emili; Roca, Oriol; De Gonzalo-Calvo, David; Fernandez-Barat, Laia; Motos, Anna; Ferrer, Ricard; Lorente, Jose A; Menendez, Rosario; Amaya-Villar, Rosario; Anon, Jose M; Balan-Marino, Ana; Blandino-Ortiz, Aaron; Boado, Maria Victoria; de la Torre, Maria del Carmen; Estella, Angel; Garcia-Garmendia, Jose Luis; Gomez, Jose M; Jorge-Garcia, Ruth Noemi; Martinez de la Gandara, Amalia; Martin-Delgado, Maria Cruz; Martinez-Varela, Ignacio; Muniz-Albaiceta, Guillermo; Nieto, Maria Teresa; Pozo-Laderas, Juan Carlos; Sancho-Chinesta, Susana; Sole-Violan, Jordi; Suarez-Sipmann, Fernando; Tamayo-Lomas, Luis; Trenado, Jose; Valdivia, Luis Jorge; Vidal, Pablo; Bermejo, Jesus; Gonzalez, Jesica; Barbe, Ferran; Calfee, Carolyn S; Artigas, Antonio; Torres, Antoni; Novo, Mariana Andrea; Barbera, Carme; Barberan, Jose; Bustamante-Munguira, Elena; Caballero, Jesus; Carbajales, Cristina; Carbonell, Nieves; Catalan-Gonzalez, Mercedes; Franco, Nieves; Galban, Cristobal; Gallego, Elena; Garnacho-Montero, Jose; Gumucio-Sanguino, Victor D; Huerta, Arturo; Messa, Juan Lopez; Loza-Vazquez, Ana; Marin-Corral, Judith; de la Gandara, Amalia Martinez; Penasco, Yhivian; Penuelas, Oscar; Perez-Garcia, Felipe; Riera, Jordi; Ricart, Pilar; Roche-Campo, Ferran; Rodriguez, Alejandro; Sagredo, Victor; Sanchez-Miralles, Angel; Socias, Lorenzo; Ubeda, Alejandro
    Resum:
    Background Acute respiratory distress syndrome (ARDS) can be classified into sub-phenotypes according to different inflammatory/clinical status. Prognostic enrichment was achieved by grouping patients into hypoinflammatory or hyperinflammatory sub-phenotypes, even though the time of analysis may change the classification according to treatment response or disease evolution. We aimed to evaluate when patients can be clustered in more than 1 group, and how they may change the clustering of patients using data of baseline or day 3, and the prognosis of patients according to their evolution by changing or not the cluster.Methods Multicenter, observational prospective, and retrospective study of patients admitted due to ARDS related to COVID-19 infection in Spain. Patients were grouped according to a clustering mixed-type data algorithm (k-prototypes) using continuous and categorical readily available variables at baseline and day 3.Results Of 6205 patients, 3743 (60%) were included in the study. According to silhouette analysis, patients were grouped in two clusters. At baseline, 1402 (37%) patients were included in cluster 1 and 2341(63%) in cluster 2. On day 3, 1557(42%) patients were included in cluster 1 and 2086 (57%) in cluster 2. The patients included in cluster 2 were older and more frequently hypertensive and had a higher prevalence of shock, organ dysfunction, inflammatory biomarkers, and worst respiratory indexes at both time points. The 90-day mortality was higher in cluster 2 at both clustering processes (43.8% [n = 1025] versus 27.3% [n = 383] at baseline, and 49% [n = 1023] versus 20.6% [n = 321] on day 3). Four hundred and fifty-eight (33%) patients clustered in the first group were clustered in the second group on day 3. In contrast, 638 (27%) patients clus
  • Altres:

    Autor segons l'article: Ceccato, Adrian; Forne, Carles; Bos, Lieuwe D; Camprubi-Rimblas, Marta; Areny-Balaguero, Aina; Campana-Duel, Elena; Quero, Sara; Diaz, Emili; Roca, Oriol; De Gonzalo-Calvo, David; Fernandez-Barat, Laia; Motos, Anna; Ferrer, Ricard; Lorente, Jose A; Menendez, Rosario; Amaya-Villar, Rosario; Anon, Jose M; Balan-Marino, Ana; Blandino-Ortiz, Aaron; Boado, Maria Victoria; de la Torre, Maria del Carmen; Estella, Angel; Garcia-Garmendia, Jose Luis; Gomez, Jose M; Jorge-Garcia, Ruth Noemi; Martinez de la Gandara, Amalia; Martin-Delgado, Maria Cruz; Martinez-Varela, Ignacio; Muniz-Albaiceta, Guillermo; Nieto, Maria Teresa; Pozo-Laderas, Juan Carlos; Sancho-Chinesta, Susana; Sole-Violan, Jordi; Suarez-Sipmann, Fernando; Tamayo-Lomas, Luis; Trenado, Jose; Valdivia, Luis Jorge; Vidal, Pablo; Bermejo, Jesus; Gonzalez, Jesica; Barbe, Ferran; Calfee, Carolyn S; Artigas, Antonio; Torres, Antoni; Novo, Mariana Andrea; Barbera, Carme; Barberan, Jose; Bustamante-Munguira, Elena; Caballero, Jesus; Carbajales, Cristina; Carbonell, Nieves; Catalan-Gonzalez, Mercedes; Franco, Nieves; Galban, Cristobal; Gallego, Elena; Garnacho-Montero, Jose; Gumucio-Sanguino, Victor D; Huerta, Arturo; Messa, Juan Lopez; Loza-Vazquez, Ana; Marin-Corral, Judith; de la Gandara, Amalia Martinez; Penasco, Yhivian; Penuelas, Oscar; Perez-Garcia, Felipe; Riera, Jordi; Ricart, Pilar; Roche-Campo, Ferran; Rodriguez, Alejandro; Sagredo, Victor; Sanchez-Miralles, Angel; Socias, Lorenzo; Ubeda, Alejandro
    Departament: Ciències Mèdiques Bàsiques
    Autor/s de la URV: Rodríguez Oviedo, Alejandro Hugo
    Paraules clau: Ventilation; Validation; Subphenotypes; Sepsi; Respiratory-distress-syndrome; Precision medicine; Precision medicin; Mortality; Clustering; Ards
    Resum: Background Acute respiratory distress syndrome (ARDS) can be classified into sub-phenotypes according to different inflammatory/clinical status. Prognostic enrichment was achieved by grouping patients into hypoinflammatory or hyperinflammatory sub-phenotypes, even though the time of analysis may change the classification according to treatment response or disease evolution. We aimed to evaluate when patients can be clustered in more than 1 group, and how they may change the clustering of patients using data of baseline or day 3, and the prognosis of patients according to their evolution by changing or not the cluster.Methods Multicenter, observational prospective, and retrospective study of patients admitted due to ARDS related to COVID-19 infection in Spain. Patients were grouped according to a clustering mixed-type data algorithm (k-prototypes) using continuous and categorical readily available variables at baseline and day 3.Results Of 6205 patients, 3743 (60%) were included in the study. According to silhouette analysis, patients were grouped in two clusters. At baseline, 1402 (37%) patients were included in cluster 1 and 2341(63%) in cluster 2. On day 3, 1557(42%) patients were included in cluster 1 and 2086 (57%) in cluster 2. The patients included in cluster 2 were older and more frequently hypertensive and had a higher prevalence of shock, organ dysfunction, inflammatory biomarkers, and worst respiratory indexes at both time points. The 90-day mortality was higher in cluster 2 at both clustering processes (43.8% [n = 1025] versus 27.3% [n = 383] at baseline, and 49% [n = 1023] versus 20.6% [n = 321] on day 3). Four hundred and fifty-eight (33%) patients clustered in the first group were clustered in the second group on day 3. In contrast, 638 (27%) patients clustered in the second group were clustered in the first group on day 3.Conclusions During the first days, patients can be clustered into two groups and the process of clustering patients may change as they continue to evolve. This means that despite a vast majority of patients remaining in the same cluster, a minority reaching 33% of patients analyzed may be re-categorized into different clusters based on their progress. Such changes can significantly impact their prognosis.
    Àrees temàtiques: Saúde coletiva; Nutrição; Medicina veterinaria; Medicina iii; Medicina ii; Medicina i; Interdisciplinar; Farmacia; Engenharias iv; Enfermagem; Educação física; Critical care medicine; Critical care and intensive care medicine; Ciências biológicas iii; Ciências biológicas ii; Ciências biológicas i; Ciência de alimentos; Biotecnología
    Accès a la llicència d'ús: https://creativecommons.org/licenses/by/3.0/es/
    Adreça de correu electrònic de l'autor: alejandrohugo.rodriguez@urv.cat
    Data d'alta del registre: 2025-03-22
    Versió de l'article dipositat: info:eu-repo/semantics/publishedVersion
    Enllaç font original: https://ccforum.biomedcentral.com/articles/10.1186/s13054-024-04876-5
    Referència a l'article segons font original: Critical Care. 28 (1): 91-
    Referència de l'ítem segons les normes APA: Ceccato, Adrian; Forne, Carles; Bos, Lieuwe D; Camprubi-Rimblas, Marta; Areny-Balaguero, Aina; Campana-Duel, Elena; Quero, Sara; Diaz, Emili; Roca, Or (2024). Clustering COVID-19 ARDS patients through the first days of ICU admission. An analysis of the CIBERESUCICOVID Cohort. Critical Care, 28(1), 91-. DOI: 10.1186/s13054-024-04876-5
    URL Document de llicència: https://repositori.urv.cat/ca/proteccio-de-dades/
    DOI de l'article: 10.1186/s13054-024-04876-5
    Entitat: Universitat Rovira i Virgili
    Any de publicació de la revista: 2024
    Tipus de publicació: Journal Publications
  • Paraules clau:

    Critical Care and Intensive Care Medicine,Critical Care Medicine
    Ventilation
    Validation
    Subphenotypes
    Sepsi
    Respiratory-distress-syndrome
    Precision medicine
    Precision medicin
    Mortality
    Clustering
    Ards
    Saúde coletiva
    Nutrição
    Medicina veterinaria
    Medicina iii
    Medicina ii
    Medicina i
    Interdisciplinar
    Farmacia
    Engenharias iv
    Enfermagem
    Educação física
    Critical care medicine
    Critical care and intensive care medicine
    Ciências biológicas iii
    Ciências biológicas ii
    Ciências biológicas i
    Ciência de alimentos
    Biotecnología
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