Deep learning automates complete quality control of spirometric manoeuvre

N. Das (Leuven, Belgium), K. Verstraete (Leuven, Belgium), M. Topalovic (Leuven, Belgium), J. Aerts (Leuven, Belgium), W. Janssens (Leuven, Belgium)

Source: Virtual Congress 2020 – Quality improvements in lung function and sleep diagnostics
Session: Quality improvements in lung function and sleep diagnostics
Session type: Oral Presentation
Number: 3789
Disease area: Airway diseases

Congress or journal article abstractWebcastSlide presentationE-poster

Rating: 0
You must login to grade this presentation.

Share or cite this content

Citations should be made in the following way:
N. Das (Leuven, Belgium), K. Verstraete (Leuven, Belgium), M. Topalovic (Leuven, Belgium), J. Aerts (Leuven, Belgium), W. Janssens (Leuven, Belgium). Deep learning automates complete quality control of spirometric manoeuvre. 3789

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:
Effect of training biometrists on the quality of perfomance of forced spirometry manoeuvre
Source: Annual Congress 2009 - Accuracy in lung function testing
Year: 2009


Spirometry quality control - documentation of random variability
Source: Eur Respir J 2002; 20: Suppl. 38, 380s
Year: 2002

Equipment, measurements and quality control in clinical exercise testing
Source: ISSN=ISSN 1025-448x, ISBN=ISBN 978-1-904097-49-5, page=108
Year: 2007

Deep learning algorithm for the classification of spirometries using flow-volume curves: proof of concept study
Source: Virtual Congress 2021 – Digital health interventions in respiratory medicine
Year: 2021


Novel strategies for quality control of forced spirometry
Source: Annual Congress 2011 - Quality control in lung function and exercise-related issues
Year: 2011


Spirometry training courses are not enough to achieve quality spirometry in the community
Source: Annual Congress 2012 - Going with the flow: assessment and evaluation of airway function and its role in patient management
Year: 2012


Reproducibility of 3He-MRI acquisition assessed by a deep learning approach: ventilation defects in the VaPE-Tox pilot study
Source: Virtual Congress 2020 – Imaging-based phenotyping in pulmonary disease
Year: 2020


Open access spreadsheet application for learning spontaneous breathing mechanics and mechanical ventilation
Source: Breathe, 17 (2) 210012; 10.1183/20734735.0012-2021
Year: 2021



The outcome of establishing a quality control check on practise based spirometry
Source: Eur Respir J 2005; 26: Suppl. 49, 184s
Year: 2005

Do not go with just the flow: machine learning in oximetric versus flow-based sleep apnoea scoring
Source: Virtual Congress 2020 – Screening methods and diagnostic tools for obstructive sleep apnoea
Year: 2020


Deep learning for scoring sleep based on cardiorespiratory signals as compared to auto and multiple manual sleep scorings based on neurological signals
Source: International Congress 2018 – New diagnostic tools for sleep and breathing and healthcare provision options
Year: 2018




Home non-invasive ventilation (NIV) : Patients cognitive performance and skills at setup
Source: International Congress 2016 – New horizons for noninvasive ventilation in acute and chronic settings
Year: 2016

Using a breathing simulator to improve simulation-based education for noninvasive ventilation
Source: Breathe, 17 (2) 200285; 10.1183/20734735.0285-2020
Year: 2021



Validation of two whole body plethysmographs as part of a quality assurance programme within a pulmonary function laboratory
Source: Annual Congress 2008 - Beyond spirometry: the skills behind lung function testing
Year: 2008

Late Breaking Abstract - Technical validation of breath analysis by eNose in disease diagnosis: Tidal breathing vs. vital capacity manoeuvre
Source: International Congress 2019 – Insights into physiological diagnostic services
Year: 2019

How fast do test-leaders learn to perform spirometries? Quality control in routine spirometry testing
Source: Annual Congress 2013 –Early diagnosis and effectiveness of disease management in primary care
Year: 2013


Comparing cardiopulmonary exercise test results between centres assists quality control
Source: Annual Congress 2008 - New challenges and maintained quality: lung function for the future
Year: 2008



Better time management of a lung function laboratory by avoiding redundant ”routinely“ performed reversibility spirometry tests
Source: Eur Respir J 2003; 22: Suppl. 45, 147s
Year: 2003

Validation study of the quality of home spirometry performed by Air Next spirometer in combination with mobile coaching system: preliminary results
Source: Virtual Congress 2020 – Unusual tools for evaluating obstructive diseases
Year: 2020