Wheeze identification in case of asthma and COPD using inverse short-time Fourier transform

S. A. Taplidou, L. J. Hadjileontiadis (Thessaloniki, Greece)

Source: Annual Congress 2005 - Asthma management II
Session: Asthma management II
Session type: Thematic Poster Session
Number: 1838
Disease area: Airway diseases

Congress or journal article abstract

Rating: 0
You must login to grade this presentation.

Share or cite this content

Citations should be made in the following way:
S. A. Taplidou, L. J. Hadjileontiadis (Thessaloniki, Greece). Wheeze identification in case of asthma and COPD using inverse short-time Fourier transform. Eur Respir J 2005; 26: Suppl. 49, 1838

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:
Will artificial intelligence really transform clinical practice? Applications in asthma and COPD
Source: Virtual Congress 2021 – Airway diseases
Year: 2021


Deconvolution of the sputum transcriptome and methylome by quadratic programming in asthma and COPD
Source: Virtual Congress 2021 – New insights into the airway immunology of lung disease
Year: 2021


Automated detection of childhood sleep apnea using discrete wavelet transform of nocturnal oximetry and anthropometric variables
Source: International Congress 2017 – What is new in respiratory and sleep physiology?
Year: 2017

NMR spectroscopy of exhaled breath condensate in the diagnosis of asthma: Validation and reproducibility
Source: Annual Congress 2010 - Exhaled biomarkers: smells like disease
Year: 2010

On efficiently categorising fine and coarse crackles using continuous wavelet transform
Source: Eur Respir J 2004; 24: Suppl. 48, 123s
Year: 2004

Cluster analysis of cough asthma variant using forced oscillation technique and FeNO
Source: International Congress 2017 – Many faces of asthma assessment
Year: 2017



The further paradoxes of asthma management: time for a new approach across the spectrum of asthma severity
Source: Eur Respir J, 52 (5) 1800694; 10.1183/13993003.00694-2018
Year: 2018



The analysis of breath air by laser spectroscopy method for diagnosis of COPD
Source: International Congress 2014 – Airway biomarkers
Year: 2014

Bronchial remodeling-based latent class analysis predicts exacerbations in severe preschool wheezers
Source: Virtual Congress 2021 – Advances in childhood asthma: biologics, biomarkers and infections
Year: 2021



Fourier-transform infrared (FTIR) spectroscopic methods for low volume analysis of oral mucus
Source: Eur Respir J 2003; 22: Suppl. 45, 446s
Year: 2003

Cluster analysis of cough variant asthma using exhaled value of forced oscillation technique.
Source: International Congress 2018 – Asthma analysis
Year: 2018



LSC Abstract – Multi-level differential network analysis of COPD exacerbations
Source: International Congress 2016 – New signalling pathways in COPD
Year: 2016


Ensemble machine learning for the early detection of COPD exacerbations
Source: International Congress 2017 – Best abstracts in physical activity and management of COPD
Year: 2017


The fourier transform (FT) of the forced expiratory flow (FEF) curve provides a sensitive screening index for chronic lung disease
Source: Eur Respir J 2004; 24: Suppl. 48, 224s
Year: 2004

Impact of PAHs exposure on exacerbation frequency in asthma using a new grid-scale simulation of PM2.5-PAHs distribution
Source: Virtual Congress 2020 – Air pollution and comorbidities
Year: 2020

Multi-level differential network analysis of COPD exacerbations
Source: Eur Respir J, 50 (3) 1700075; 10.1183/13993003.00075-2017
Year: 2017



Asthma paradoxes: time for a new approach across the spectrum of asthma severity
Source: Eur Respir J, 53 (4) 1900218; 10.1183/13993003.00218-2019
Year: 2019



Asthma paradoxes: time for a new approach across the spectrum of asthma severity
Source: Eur Respir J, 53 (4) 1802329; 10.1183/13993003.02329-2018
Year: 2019



Prediction model of COPD acute exacerbation with big data by machine learning methods
Source: Virtual Congress 2020 – Prediction and management of outcomes in obstructive diseases
Year: 2020




Early prediction of childhood asthma exacerbations through a combination of statistical and machine learning approaches.
Source: Virtual Congress 2020 – Risk factors, comorbidities and remote monitoring in childhood asthma
Year: 2020