e-learning
resources
Conferences
6th Sleep and Breathing Conference, Online 2021
2021
16.04.2021
Advanced diagnostic procedures
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
Instantaneous Heart Rate based sleep staging using deep learning models as a convenient alternative to Polysomnography
Y. Jie Chen (Singapore, Singapore), Z. Siting (Singapore, Singapore), K. Kishan (Singapore, Singapore), A. Patanaik (Singapore, Singapore)
Source:
Sleep and Breathing Conference 2021
Session:
Advanced diagnostic procedures
Session type:
Oral Presentation
Number:
0
Rating:
You must
login
to grade this presentation.
Share or cite this content
Citations should be made in the following way:
Y. Jie Chen (Singapore, Singapore), Z. Siting (Singapore, Singapore), K. Kishan (Singapore, Singapore), A. Patanaik (Singapore, Singapore). Instantaneous Heart Rate based sleep staging using deep learning models as a convenient alternative to Polysomnography. Sleep and Breathing Conference 2021
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:
Static lung volumes and spirometry measurements
Panel discussion on Basic translational and clinical research – building a career in paediatric pulmonology- experiences from clinicians in lower middle income countries
Panel discussion: The role of pharmacotherapy connected to OSA pathophysiological traits
Related content which might interest you:
Automated sleep apnea detection from instantaneous heart rate using deep learning models
Source: Sleep and Breathing Conference 2021
Year: 2021
Evaluation of automatic scoring algorithm for home sleep diagnosis
Source: Annual Congress 2013 –Sleep disordered breathing in special situations III
Year: 2013
Late Breaking Abstract - Clinical value of a mandibular movements recording sensor in obstructive sleep apnea diagnosis: a machine learning approach
Source: International Congress 2019 – Pathophysiological aspects of obstructive sleep apnoea from sea level to high altitude
Year: 2019
LATE-BREAKING ABSTRACT: Adaptive servo-ventilation in Central Sleep Apnea. Ambulatory nocturnal pulse oximetry, a simplified method for monitoring outpatient?
Source: International Congress 2014 – Sleep disordered breathing 4
Year: 2014
Less obtrusive sensors for reliable detection of breathing pattern and heart function during sleep
Source: International Congress 2014 – The technical and diagnostic agenda in OSA
Year: 2014
Heart rate variability in obstructive sleep apnea: A non linear analysis
Source: Annual Congress 2013 –The heart of the matter: sleep disordered breathing
Year: 2013
A pacemaker transthoracic impedance sensor with an advanced algorithm to identify severe sleep apnea: The DREAM European validation study
Source: International Congress 2014 – Sleep disordered breathing 1
Year: 2014
Cardiovascular risk evaluation using two different methods of pulse Wave analysis
Source: Annual Congress 2013 –The heart of the matter: sleep disordered breathing
Year: 2013
Evaluation of a simplified sleep recording and analyzing device at the bedside
Source: Annual Congress 2008 - Diagnostic aspects of sleep apnoea
Year: 2008
Pharyngeal sensitivity assessment: a new tool for detecting sleep apnea?
Source: Eur Respir J 2002; 20: Suppl. 38, 575s
Year: 2002
Utility of adaptive servoventilation device software in assessing residual respiratory events in the treatment of central apneas
Source: International Congress 2016 – Technical aspects, compliance, and adherence to positive airway pressure in sleep apnoea
Year: 2016
Validation of automated versus manual scoring of cardio-respiratory sleep studies: A clinical audit
Source: International Congress 2016 – Man versus machine: waves, frequency, and more in lung function
Year: 2016
Comparison of visual and automatic methods for scoring leg movements in polygraphic sleep recordings. Validity of a modified automatic method
Source: Annual Congress 2008 - Diagnostic aspects of sleep apnoea
Year: 2008
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
Technical and digital polysomnography specifications for the new AASM sleep scoring rules
Source: Annual Congress 2008 - Diagnostic aspects of sleep apnoea
Year: 2008
Validating a new and comfortable method of visualizing lung ventilation in animals
Source: International Congress 2015 – Functional and imaging techniques for assessing lung, airway and respiratory muscles
Year: 2015
Current automatic CPAP devices exhibit different response when tested with an improved simulator of OSA patient
Source: International Congress 2015 – Paediatric and adult sleep-disordered breathing: from inflammation to treatment and telemedicine
Year: 2015
Predicting long term compliance with CPAP in obstructive sleep apnoea: Validation of a simple prediction equation
Source: Annual Congress 2010 - Screening for sleep-disordered breathing
Year: 2010
Applicability, efficacy and cost effectiveness of sleep apnoea management by an information and communication based technology (ICT). Rationale, design and methods
Source: International Congress 2016 – Non-CPAP in obstructive and central sleep apnoea and obesity hypoventilation syndrome
Year: 2016
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