e-learning
resources
Virtual 2021
05.09.2021
The different faces of sleep disturbances in respiratory diseases and beyond
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
Predicting sleep disordered breathing acutely after stroke: comparing eight sleep questionnaires and a logistic regression model
M. Dekkers (Bern, Switzerland), C. Horvath (Bern, Switzerland), V. Woerz (Bern, Switzerland), S. Duss (Bern, Switzerland), M. Schmidt (Bern, Switzerland), A. Brill (Bern, Switzerland), C. Bassetti (Bern, Switzerland)
Source:
Virtual Congress 2021 – The different faces of sleep disturbances in respiratory diseases and beyond
Session:
The different faces of sleep disturbances in respiratory diseases and beyond
Session type:
E-poster
Number:
941
Rating:
You must
login
to grade this presentation.
Share or cite this content
Citations should be made in the following way:
M. Dekkers (Bern, Switzerland), C. Horvath (Bern, Switzerland), V. Woerz (Bern, Switzerland), S. Duss (Bern, Switzerland), M. Schmidt (Bern, Switzerland), A. Brill (Bern, Switzerland), C. Bassetti (Bern, Switzerland). Predicting sleep disordered breathing acutely after stroke: comparing eight sleep questionnaires and a logistic regression model. 941
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
Static lung volumes and spirometry measurements
Panel discussion: The role of pharmacotherapy connected to OSA pathophysiological traits
Related content which might interest you:
Automatic computation of apnea – Hipopnea index in patients with sleep apnea based on multivariate adaptive regression splines
Source: Annual Congress 2012 - Technology, screening and questionnaires in OSA
Year: 2012
Prediction of apnea-hypopnea index in patients with obstructive sleep apnea syndrome using a regression model based on nonlinear analysis of respiratory signals
Source: Annual Congress 2009 - Diagnostic aspects in obstructive sleep apnoea
Year: 2009
Simple logistic models in the development of a quality of life questionnaire specific for patients with chronic obstructive pulmonary disease
Source: Eur Respir J 2005; 26: Suppl. 49, 309s
Year: 2005
Predicting long term compliance with CPAP in obstructive sleep apnoea: Validation of a simple prediction equation
Source: Annual Congress 2010 - Screening for sleep-disordered breathing
Year: 2010
Prediction modeling and temporal validation of sleep disordered breathing from large community samples
Source: Annual Congress 2012 - Diagnostics in OSA: from polygraphy to genetics and cancer
Year: 2012
Evaluation of the sleep history in predicting sleep disordered breathing in children
Source: International Congress 2018 – Assessing pathophysiology in children
Year: 2018
Validation of a new auto adjusting bilevel algorithm in complicated sleep disordered breathing patterns
Source: Annual Congress 2011 - Obstructive sleep apnoea: clinical aspects II
Year: 2011
Aftermath of optimal CPAP prediction models using various linear, logistic regression and artificial neural networks (ANN) in OSA
Source: Annual Congress 2010 - Screening for sleep-disordered breathing
Year: 2010
Sleep disordered breathing detected by a new automated ECG analysis in subjects with insomnia
Source: Annual Congress 2011 - Physiology and diagnostic technology in obstructive sleep apnoea
Year: 2011
Estimation of the prognostic value of respiratory and metabolic parameters in treatment of shock patients by means of logistic regression analysis
Source: Eur Respir J 2002; 20: Suppl. 38, 82s
Year: 2002
High-dimensional multivariable analysis of asthma and its co-morbidities
Source: Virtual Congress 2020 – Precision endotyping of asthma: time for action
Year: 2020
Sleep clinical record and polysomnography scores in adolescents with sleep disordered breathing
Source: International Congress 2018 – Improvements in the assessment of paediatric physiology
Year: 2018
Effects of sleep disordered breathing, asthma and socio-economic status on behavioural parameters in children
Source: Annual Congress 2011 - Obstructive sleep apnoea as a comorbidity
Year: 2011
Stroke alert: sleep disordered breathing predicts survival?
Source: Eur Respir J 2004; 24: 195-196
Year: 2004
Residual sleep apnea on CPAP: prevalence, predictors and patterns
Source: Annual Congress 2008 - Outcome of adaptive servo ventilation in sleep apnoea
Year: 2008
Comparison of two biomarkers to assess severity of pediatric sleep disordered breathing
Source: International Congress 2017 – Assessing the impact of respiratory and sleep problems in children
Year: 2017
Predictors of delirium after cardiac surgery in patients with sleep disordered breathing
Source: Eur Respir J, 54 (2) 1900354; 10.1183/13993003.00354-2019
Year: 2019
Comparison of epworth sleepiness scale scores in patients with sleep apnea and their bedpartner's and its relationship with polysomnographic variables
Source: Eur Respir J 2003; 22: Suppl. 45, 272s
Year: 2003
Predictors of 1-year compliance with adaptive servoventilation in patients with heart failure and sleep disordered breathing: preliminary data from the ADVENT-HF trial
Source: Eur Respir J, 53 (2) 1801626; 10.1183/13993003.01626-2018
Year: 2019
Estimation of peak work load based on 6-min walk distance and general demographics in patients with COPD: A new regression equation
Source: Annual Congress 2011 - Exercise tests and emerging outcomes: defining the impact of pulmonary rehabilitation
Year: 2011
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