Deriving information from external Big Databases and Big Data analytics: all that glitters is not gold

Martinez-Garcia Miguel Angel, Dinh-Xuan Anh Tuan

Source: Eur Respir J 2016; 47: 1047-1049
Journal Issue: April

Full 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:
Martinez-Garcia Miguel Angel, Dinh-Xuan Anh Tuan. Deriving information from external Big Databases and Big Data analytics: all that glitters is not gold. Eur Respir J 2016; 47: 1047-1049

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:
GLI-2012 Desktop Software for Large Data Sets - Instructions
Source: Global Lung Function Initiative
Year: 2013

‘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




GLI-2012 Desktop Software for Large Data Sets
Source: Global Lung Function Initiative
Year: 2013

Keynote: Big data, machine learning and AI for COVID-19
Source: ERS Course 2021 - COVID-19: State of the art
Year: 2021

Big data analysis in telemedicine in sleep: the European status, opportunities and pitfalls
Source: Virtual Congress 2021 – Digital health meets sleep breathing disorders
Year: 2021


Useful weblinks
Source: Breathe 2009; 6: 78
Year: 2009

Application of big data technology for COVID-19: Health economics of COVID
Source: ERS Course 2021 - COVID-19: State of the art
Year: 2021

Biomarker technologies: 4-dimensional research 
Source: International Congress 2017 – Innovation in diagnosing and monitoring respiratory disease
Year: 2017


Big data requires 'big' collaboration
Source: International Congress 2014 – Asthma phenotyping: collaborative projects in Europe
Year: 2014

Airline acceptability of CPAP: is relevant information available on the airlines‘ websites?
Source: Annual Congress 2009 - Socio-economic and epidemiological aspects of sleep apnoea
Year: 2009


Fragmented care in asthma: Data from the French national claims database
Source: Annual Congress 2011 - Respiratory epidemiology: quality of life, therapy and socioeconomics
Year: 2011

Big data, machine learning and AI for COVID-19: Discussion, questions and answers
Source: ERS Course 2021 - COVID-19: State of the art
Year: 2021

Evaluation of sleepiness: new available tools or still searching for the Holy Grail?
Source: Virtual Congress 2021 – Digital health meets sleep breathing disorders
Year: 2021


Workshop 1: Lung Clearance Index – demonstration of devices utilised by the core facility; best practices and different approaches to communication with pharmaceutical companies
Source: International Congress 2016 – PD5 Establishing core facilities for measuring clinical trial outcomes 
Year: 2016

Late Breaking Abstract - COVID-19 epidemic in Respiratory Diseases Unit: partioning analysis and data mining. Results from a single Institution experience.
Source: Virtual Congress 2020 – Air pollution and comorbidities
Year: 2020


Workstation 1: Approach to full polysomnography: the basic techniques in terms of setting up and wiring up
Source: International Congress 2015 – EW27 Hands-on polysomnography
Year: 2015