Unravelling machine learning: insights in respiratory medicine

Elsa Angelini, Simon Dahan, Anand Shah

Source: Eur Respir J, 54 (6) 1901216; 10.1183/13993003.01216-2019
Journal Issue: December
Disease area: -

Congress or journal article abstractFull 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:
Elsa Angelini, Simon Dahan, Anand Shah. Unravelling machine learning: insights in respiratory medicine. Eur Respir J, 54 (6) 1901216; 10.1183/13993003.01216-2019

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:
Current insights and potential benefits for effective teaching and learning in respiratory medicine
Source: Breathe 2012; 9: 15-24
Year: 2012

From systems biology to P4 medicine: applications in respiratory medicine
Source: Eur Respir Rev, 27 (147) 170110; 10.1183/16000617.0110-2017
Year: 2018



Basic science: Epigenetic programming and the respiratory system
Source: Breathe 2013; 9: 278-288
Year: 2013

Respiratory monitoring: revisiting classical physiological principles with new tools
Source: Eur Respir J 2004; 24 : 718-719
Year: 2004


Expansion of the successful adult HERMES experience to other areas of respiratory medicine: insights from the paediatrics HERMES project
Source: Annual Congress 2008 - Lunchtime programme: Educational seminar - Harmonising standards for education and training in respiratory medicine: prospects and challenges
Year: 2008


Integrating systems biology in respiratory diseases
Source: ERS Research Seminar 2017 – Integrating systems biology approach in idiopathic pulmonary fibrosis research
Year: 2016

New genetics and epigenetics insights in paediatric asthma
Source: International Congress 2017 – Omics in paediatric asthma and beyond
Year: 2017


Clinical reasoning: reflecting on the decision-making process in respiratory medicine
Source: Breathe 2013; 10: 413-417
Year: 2013

Pulmonary xenon-129 MRI: new opportunities to unravel enigmas in respiratory medicine
Source: Eur Respir J, 55 (2) 1901987; 10.1183/13993003.01987-2019
Year: 2020



Systems biology in respiratory medicine: bringing the pieces together
Source: International Congress 2017 – Towards personalised medicine for airways diseases: Deep phenotyping using omics approaches will revolutionise future treatment strategies
Year: 2017


Diagnosing asthma in the era of personalised medicine: biology, physiology and imaging
Source: Virtual Congress 2021 – Precision medicine in asthma and COPD
Year: 2021


Education in respiratory medicine: New learning and teaching methodologies
Source: ERS Summit on priorities in respiratory medicine 2011
Year: 2011


COPD – will new insights into molecular pathology define new therapies?
Source: Research Seminar 2014 - Human translational medicine: a key bridge for the development of new drugs for severe asthma, COPD and ILD
Year: 2014


Chronic cough: new insights and future prospects
Source: Eur Respir Rev, 30 (162) 210127; 10.1183/16000617.0127-2021
Year: 2021



Spatial transcriptomics for respiratory research and medicine
Source: Eur Respir J, 58 (1) 2004314; 10.1183/13993003.04314-2020
Year: 2021



COVID-19 advanced respiratory physiology (CARP) wearable respiratory monitoring: early insights
Source: Virtual Congress 2021 – E-health for COVID-19
Year: 2021


Integrating it all: systems biology
Source: ERS Research Seminar 2015
Year: 2015


The new Back to Basics section: emerging concepts in basic and translational medicine
Source: Eur Respir J 2014; 44: 297-298
Year: 2014


Clinical respiratory medicine: The evolution of workforces
Source: ERS Summit on priorities in respiratory medicine 2011
Year: 2011