Back to Search Start Over

Systemic Inflammatory Biomarkers Define Specific Clusters in Patients with Bronchiectasis: A Large-Cohort Study

Authors :
Wang, Xuejie
Villa, Carmen
Dobarganes, Yadira
Olveira, Casilda
Girón, Rosa
García Clemente, Marta
Máiz, Luis
Sibila, Oriol
Golpe, Rafael
Menéndez, Rosario
Rodríguez López, Juan Pedro
Prados, Concepción
Martinez García, Miguel Angel
Rodriguez Hermosa, Juan Luis
Rosa, David de la
Duran, Xavier
Garcia Ojalvo, Jordi
Barreiro, Esther
Wang, Xuejie
Villa, Carmen
Dobarganes, Yadira
Olveira, Casilda
Girón, Rosa
García Clemente, Marta
Máiz, Luis
Sibila, Oriol
Golpe, Rafael
Menéndez, Rosario
Rodríguez López, Juan Pedro
Prados, Concepción
Martinez García, Miguel Angel
Rodriguez Hermosa, Juan Luis
Rosa, David de la
Duran, Xavier
Garcia Ojalvo, Jordi
Barreiro, Esther
Publication Year :
2022

Abstract

Differential phenotypic characteristics using data mining approaches were defined in a large cohort of patients from the Spanish Online Bronchiectasis Registry (RIBRON). Three differential phenotypic clusters (hierarchical clustering, scikit-learn library for Python, and agglomerative methods) according to systemic biomarkers: neutrophil, eosinophil, and lymphocyte counts, C reactive protein, and hemoglobin were obtained in a patient large-cohort (n = 1092). Clusters #1–3 were named as mild, moderate, and severe on the basis of disease severity scores. Patients in cluster #3 were significantly more severe (FEV1, age, colonization, extension, dyspnea (FACED), exacerbation (EFACED), and bronchiectasis severity index (BSI) scores) than patients in clusters #1 and #2. Exacerbation and hospitalization numbers, Charlson index, and blood inflammatory markers were significantly greater in cluster #3 than in clusters #1 and #2. Chronic colonization by Pseudomonas aeruginosa and COPD prevalence were higher in cluster # 3 than in cluster #1. Airflow limitation and diffusion capacity were reduced in cluster #3 compared to clusters #1 and #2. Multivariate ordinal logistic regression analysis further confirmed these results. Similar results were obtained after excluding COPD patients. Clustering analysis offers a powerful tool to better characterize patients with bronchiectasis. These results have clinical implications in the management of the complexity and heterogeneity of bronchiectasis patients.<br />Instituto de Salud Carlos III (ISCIII)/FEDER<br />Ministerio de Ciencia e Innovación (MICINN)<br />Unidad de Excelencia María de Maeztu<br />Depto. de Medicina<br />Fac. de Medicina<br />TRUE<br />pub

Details

Database :
OAIster
Notes :
application/pdf, 2227-9059, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1450552307
Document Type :
Electronic Resource