e-learning
resources
Berlin 2001
Sunday 23.09.2001
Asthma
Login
Search all ERS
e-learning
resources
Disease Areas
Airways Diseases
Interstitial Lung Diseases
Respiratory Critical Care
Respiratory Infections
Paediatric Respiratory Diseases
Pulmonary Vascular Diseases
Sleep and Breathing Disorders
Thoracic Oncology
Events
International Congress
Courses
Webinars
Conferences
Research Seminars
Journal Clubs
Publications
Breathe
Monograph
ERJ
ERJ Open Research
ERR
European Lung White Book
Handbook Series
Guidelines
All ERS guidelines
e-learning
CME Online
Case reports
Short Videos
SpirXpert
Procedure Videos
CME tests
Reference Database of Respiratory Sounds
Radiology Image Challenge
Brief tobacco interventions
EU Projects
VALUE-Dx
ERN-LUNG
ECRAID
UNITE4TB
Disease Areas
Events
Publications
Guidelines
e-learning
EU Projects
Login
Search
Which parameters best reflect the severity of asthma? Analysis of 483 cases
V. C. S. Antão, G. A. Pinheiro, E. M. Rodrigues, A. A. Costa, R. S. Lanzillotti, J. M. Jansen (Rio de Janeiro, Brazil)
Source:
Annual Congress 2001 - Asthma
Session:
Asthma
Session type:
Thematic Poster Session
Number:
429
Disease area:
Airway diseases
Rating:
You must
login
to grade this presentation.
Share or cite this content
Citations should be made in the following way:
V. C. S. Antão, G. A. Pinheiro, E. M. Rodrigues, A. A. Costa, R. S. Lanzillotti, J. M. Jansen (Rio de Janeiro, Brazil). Which parameters best reflect the severity of asthma? Analysis of 483 cases. Eur Respir J 2001; 16: Suppl. 31, 429
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:
Late Breaking Abstract - Implications of treatable traits and treatment choices on exacerbation risk in moderate-severe asthma
Management of Severe Asthma in Pediatric Patients by an Interdisciplinary Team in a Public Hospital Setting.
Static lung volumes and spirometry measurements
Related content which might interest you:
Clinical features and functional parameters predict the probability of ACO in patients with asthma and COPD
Source: International Congress 2018 – Airway disease: recent discoveries
Year: 2018
Which clinical variables best predict asthma control?
Source: Annual Congress 2010 - Asthma: breath biomarkers and asthma control
Year: 2010
Is it possible to predict asthma outcomes? A disease model for economic analysis.
Source: International Congress 2017 – Asthma management
Year: 2017
Is it possible to identify phenotypes of problematic severe asthma in children using fluctuation based clustering?
Source: International Congress 2016 – Paediatric asthma: recurrent, persistent, or severe obstruction and lung function techniques
Year: 2016
Different definitions in childhood asthma: how dependable is the dependent variable?
Source: Eur Respir J 2010; 36: 48-56
Year: 2010
The consequences of different definitions in the prediction of asthma in children
Source: Annual Congress 2008 - Paediatric airway diseases - pathophysiology and monitoring
Year: 2008
Defining acute asthma severity – how do worldwide asthma guidelines compare?
Source: International Congress 2018 – The bad and the ugly in paediatric asthma: comorbidities and exacerbations
Year: 2018
Correlation between indices of quality of life and degree of severity of symptoms in patients with asthma in combination with COPD
Source: Eur Respir J 2004; 24: Suppl. 48, 520s
Year: 2004
BREATHE – Distribution and co-expression of T2 biomarkers in asthma and association with severity, clinical characteristics and co-morbidities
Source: Virtual Congress 2021 – Severe asthma: evaluation using patient-reported outcome measures (PROMs) and biomarkers, comorbidities and treatments
Year: 2021
Analysis of the cues used by patients when making assessments of their asthma severity
Source: Eur Respir J 2005; 25: 671-676
Year: 2005
Do COPD severity parameters predict mood disorders?
Source: Annual Congress 2013 –The best posters in chronic care
Year: 2013
Time to move away from peak flows in severe asthma? A symptom based score that predicts exacerbations.
Source: International Congress 2017 – Monitoring asthma control
Year: 2017
Defining the clinical clusters of severe asthma within UBIOPRED
Source: International Congress 2015 – Fingerprinting severe asthma
Year: 2015
Time trends in clinical characteristics of patients with severe asthma: data from the Belgian Severe asthma register (BSAR)
Source: International Congress 2018 – Tests and trends in asthma
Year: 2018
Change in the manifestations of asthma and asthma-related traits in childhood: a latent transition analysis
Source: Eur Respir J 2016; 47: 499-509
Year: 2016
Using characteristics of asthma phenotypes to determine exacerbation severity
Source: Virtual Congress 2020 – Phenotypes of obstructive diseases
Year: 2020
COPD related fatigue (COPD-RF) as a patient centred outcome tool in COPD: Various predictors and its correlation with other outcome parameters
Source: International Congress 2016 – Monitoring airway diseases with clinical tools
Year: 2016
Late Breaking Abstract: Combining lung function and clinical severity score at two increases the predictability of current asthma at ten years
Source: Annual Congress 2010 - Risk factors for allergic diseases in children
Year: 2010
Assessment of variations in control of asthma over time
Source: Eur Respir J 2003; 22: 298-304
Year: 2003
We use cookies on our website to give you the most relevant experience by remembering your preferences and repeat visits. By clicking "Accept", you consent to the use of the cookies.
Accept