Login / Signup

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

Xuejie WangCarmen VillaYadira DobarganesCasilda OlveiraRosa GirónGarcía-Clemente MartaLuis MáizOriol SibilaRafael GolpeRosario MenéndezJuan Rodríguez-LópezConcepción PradosMiguel Angel Martinez-GarcíaJuan Luis Rodríguez HermosaDavid la Rosa-CarrilloXavier DuranJordi García-OjalvoEsther Barreiro
Published in: Biomedicines (2022)
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 (FEV 1 , 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.
Keyphrases
  • end stage renal disease
  • ejection fraction
  • cystic fibrosis
  • newly diagnosed
  • chronic kidney disease
  • escherichia coli
  • risk factors
  • intensive care unit
  • single cell
  • big data
  • health information
  • rna seq
  • patient reported