e-learning
resources
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
GLI-2012 Desktop Software for Large Data Sets - Instructions
Philip H. Quanjer, Sanja Stanojevic, Tim J. Cole, Janet Stocks
Source:
Global Lung Function Initiative
Number:
0
Rating:
You must
login
to grade this presentation.
Share or cite this content
Citations should be made in the following way:
Philip H. Quanjer, Sanja Stanojevic, Tim J. Cole, Janet Stocks. GLI-2012 Desktop Software for Large Data Sets - Instructions. Global Lung Function Initiative
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:
Panel discussion: Diagnostic tools for Obstructive Sleep Apnoea in adults and children
Expert interview: Physiological classification of lung function impairment
Occupational exposures to respiratory diseases: A case-based discussion
Related content which might interest you:
GLI-2012 Desktop Software for Large Data Sets
Source: Global Lung Function Initiative
Year: 2013
GLI-2012 Desktop Software for Individual Calculations
Source: Global Lung Function Initiative
Year: 2014
‘E-Noting Nodulomics’: Automating Electronic Clinical Data Mining and Analysis of Pulmonary Nodules Using a Python Algorithm
Source: International Congress 2018 – Lung cancer: from early diagnosis to modern monitoring strategies
Year: 2018
Workstation 1: Interfaces
Source: ERS Course 2017 - Paediatric noninvasive ventilation
Year: 2017
Workstation 1: PG in built software
Source: ERS Course 2017 - Paediatric noninvasive ventilation
Year: 2017
Deriving information from external Big Databases and Big Data analytics: all that glitters is not gold
Source: Eur Respir J 2016; 47: 1047-1049
Year: 2016
Data Quality Assessment in Wearable Technology
Source: Virtual Congress 2021 – Inhale the future: ambulatory sensing technologies, digital biomarkers and explainable insights
Year: 2021
Automated Python Algorithm Analysis of Benign Pulmonary Nodules Discharged after 2 years Surveillance
Source: International Congress 2018 – Lung cancer: from early diagnosis to modern monitoring strategies
Year: 2018
Monitoring of CPAP: poly(somno)graphy and/or in-built software?
Source: ERS Course 2017 - Paediatric noninvasive ventilation
Year: 2017
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