Clinical COPD phenotypes: a novel approach using principal component and cluster analyses

Burgel P-R., Paillasseur J-L., Caillaud D., Tillie-Leblond I., Chanez P., Escamilla R., Court-Fortune I., Perez T., Carré P., Roche N.

Source: Eur Respir J 2010; 36: 531-539
Journal Issue: September
Disease area: Airway diseases

Congress or journal article abstractFull text journal articlePDF journal article, handout or slides

Rating: 0
You must login to grade this presentation.

Share or cite this content

Citations should be made in the following way:
Burgel P-R., Paillasseur J-L., Caillaud D., Tillie-Leblond I., Chanez P., Escamilla R., Court-Fortune I., Perez T., Carré P., Roche N.. Clinical COPD phenotypes: a novel approach using principal component and cluster analyses. Eur Respir J 2010; 36: 531-539

You must login to share this Presentation/Article on Twitter, Facebook, LinkedIn or by email.

Member's Comments

No comment yet.
You must Login to comment this presentation.


Related content which might interest you:
Clinical COPD phenotypes identified by cluster analysis: validation with mortality
Source: Eur Respir J 2012; 40: 495-496
Year: 2012


Longitudinal validation of clinical COPD phenotypes identified by cluster analysis
Source: Annual Congress 2011 - COPD diagnosis
Year: 2011

Identification of clinical phenotypes using cluster analyses in COPD patients
Source: International Congress 2019 – Phenotypes and comorbidities of airway diseases
Year: 2019


Adult asthma phenotypes identified by a cluster analysis on clinical and biological characteristics
Source: International Congress 2018 – Asthma in children and adults: long-term aspects
Year: 2018



Cluster analysis to identify phenotypes in COPD
Source: Annual Congress 2009 - Quality of life and symptoms in COPD
Year: 2009

Use of cluster analysis to define COPD phenotypes
Source: Eur Respir J 2010; 36: 472-474
Year: 2010


Identification of asthma phenotypes using cluster analysis
Source: International Congress 2018 – Exploring the importance of daily physical activity in chronic respiratory disease
Year: 2018

A network analysis of clinical characteristics of patients with COPD: partial results.
Source: International Congress 2018 – Chronic respiratory disease: effects of rehabilitation interventions in patients
Year: 2018

Cluster analysis identifies distinct clinical phenotypes with poor treatment responsiveness in asthma.
Source: International Congress 2018 – Asthma: clinical screening tools
Year: 2018


Cluster analysis and clinical asthma phenotypes
Source: Annual Congress 2013 –Severe asthma: moving from phenotyping to endotyping
Year: 2013


Temporal stability of asthma phenotypes identified by a clustering approach: An ECRHS-SAPALDIA-EGEA study
Source: Annual Congress 2012 - Asthma: from childhood environment to adult phenotypes
Year: 2012

Identifying adult asthma phenotypes using a clustering approach
Source: Eur Respir J 2011; 38: 310-317
Year: 2011



Muscle phenotypes in COPD patients: An exploratory cluster analysis
Source: Annual Congress 2012 - The best posters on physical inactivity, muscle dysfunction and exercise intolerance
Year: 2012


LSC Abstract – Identification of distinct biological phenotypes of ARDS by cluster analysis and association with mortality
Source: International Congress 2016 – Novel insights into alveolar and bronchial epithelial cell injury and repair
Year: 2016


Genetic heterogeneity of asthma phenotypes identified by a clustering approach
Source: Eur Respir J 2014; 43: 439-452
Year: 2013



Elastic principal graphs for clinical trajectory analysis in COPD: a COPDGene study
Source: Virtual Congress 2021 – Deep phenotyping of obstructive diseases for precision medicine
Year: 2021



A comparison of unsupervised methods based on dichotomous data to identify clusters of airways symptoms: latent class analysis and partitioning around medoids methods.
Source: International Congress 2018 – Airway disease: recent discoveries
Year: 2018


Cluster analysis of clinical phenotypes of OSA and its implications for comorbidities
Source: Virtual Congress 2021 – What is new for sleep apnoea? The European perspective: findings from the European Sleep Apnoea Database (ESADA)
Year: 2021


Identification and analysis of clinical phenotypes in COPD patients: PALOMB Cohort
Source: Virtual Congress 2021 – COPD burden, epidemiology and management
Year: 2021


Identification of asthma clusters in two independent Korean adult asthma cohorts
Source: Eur Respir J 2013; 41: 1308-1314
Year: 2013