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Machine diagnosis of chronic obstructive pulmonary disease using a novel fast-response capnometer
by
Lim, Rui Hen
, Chauhan, Anoop
, Patel, Ameera X.
, Broomfield, Henry
, Neville, Daniel
, Hayward, Gail
, Talker, Leeran
, Wiffen, Laura
, Carter, Julian C.
, Lambert, Gabriel
, Haines, Matthew
, Weiss, Scott T.
, Brown, Thomas
, Selim, Ahmed B.
in
Airway management
/ Asthma
/ Asymptomatic
/ Automation
/ Biosensors
/ Capnography
/ Capnography - methods
/ Carbon Dioxide
/ Care and treatment
/ Chronic obstructive pulmonary disease
/ Chronic Obstructive Pulmonary Disease
/ Classifiers
/ Data collection
/ Datasets
/ Diagnosis
/ Engineering
/ Forced Expiratory Volume
/ Health aspects
/ Humans
/ Learning algorithms
/ Lung diseases
/ Lung diseases, Obstructive
/ Machine learning
/ Mechanical ventilation
/ Medical equipment
/ Medicine
/ Medicine & Public Health
/ Methods
/ Observational studies
/ Obstructive lung disease
/ Patients
/ Physiology
/ Pneumology/Respiratory System
/ Pulmonary Disease, Chronic Obstructive - diagnosis
/ Real time
/ Respiratory diseases
/ Signal to noise ratio
/ Spirometry
/ Vital Capacity
/ Waveforms
2023
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Machine diagnosis of chronic obstructive pulmonary disease using a novel fast-response capnometer
by
Lim, Rui Hen
, Chauhan, Anoop
, Patel, Ameera X.
, Broomfield, Henry
, Neville, Daniel
, Hayward, Gail
, Talker, Leeran
, Wiffen, Laura
, Carter, Julian C.
, Lambert, Gabriel
, Haines, Matthew
, Weiss, Scott T.
, Brown, Thomas
, Selim, Ahmed B.
in
Airway management
/ Asthma
/ Asymptomatic
/ Automation
/ Biosensors
/ Capnography
/ Capnography - methods
/ Carbon Dioxide
/ Care and treatment
/ Chronic obstructive pulmonary disease
/ Chronic Obstructive Pulmonary Disease
/ Classifiers
/ Data collection
/ Datasets
/ Diagnosis
/ Engineering
/ Forced Expiratory Volume
/ Health aspects
/ Humans
/ Learning algorithms
/ Lung diseases
/ Lung diseases, Obstructive
/ Machine learning
/ Mechanical ventilation
/ Medical equipment
/ Medicine
/ Medicine & Public Health
/ Methods
/ Observational studies
/ Obstructive lung disease
/ Patients
/ Physiology
/ Pneumology/Respiratory System
/ Pulmonary Disease, Chronic Obstructive - diagnosis
/ Real time
/ Respiratory diseases
/ Signal to noise ratio
/ Spirometry
/ Vital Capacity
/ Waveforms
2023
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Machine diagnosis of chronic obstructive pulmonary disease using a novel fast-response capnometer
by
Lim, Rui Hen
, Chauhan, Anoop
, Patel, Ameera X.
, Broomfield, Henry
, Neville, Daniel
, Hayward, Gail
, Talker, Leeran
, Wiffen, Laura
, Carter, Julian C.
, Lambert, Gabriel
, Haines, Matthew
, Weiss, Scott T.
, Brown, Thomas
, Selim, Ahmed B.
in
Airway management
/ Asthma
/ Asymptomatic
/ Automation
/ Biosensors
/ Capnography
/ Capnography - methods
/ Carbon Dioxide
/ Care and treatment
/ Chronic obstructive pulmonary disease
/ Chronic Obstructive Pulmonary Disease
/ Classifiers
/ Data collection
/ Datasets
/ Diagnosis
/ Engineering
/ Forced Expiratory Volume
/ Health aspects
/ Humans
/ Learning algorithms
/ Lung diseases
/ Lung diseases, Obstructive
/ Machine learning
/ Mechanical ventilation
/ Medical equipment
/ Medicine
/ Medicine & Public Health
/ Methods
/ Observational studies
/ Obstructive lung disease
/ Patients
/ Physiology
/ Pneumology/Respiratory System
/ Pulmonary Disease, Chronic Obstructive - diagnosis
/ Real time
/ Respiratory diseases
/ Signal to noise ratio
/ Spirometry
/ Vital Capacity
/ Waveforms
2023
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Machine diagnosis of chronic obstructive pulmonary disease using a novel fast-response capnometer
Journal Article
Machine diagnosis of chronic obstructive pulmonary disease using a novel fast-response capnometer
2023
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Overview
Background
Although currently most widely used in mechanical ventilation and cardiopulmonary resuscitation, features of the carbon dioxide (CO
2
) waveform produced through capnometry have been shown to correlate with V/Q mismatch, dead space volume, type of breathing pattern, and small airway obstruction. This study applied feature engineering and machine learning techniques to capnography data collected by the N-Tidal™ device across four clinical studies to build a classifier that could distinguish CO
2
recordings (capnograms) of patients with COPD from those without COPD.
Methods
Capnography data from four longitudinal observational studies (CBRS, GBRS, CBRS2 and ABRS) was analysed from 295 patients, generating a total of 88,186 capnograms. CO
2
sensor data was processed using TidalSense’s regulated cloud platform, performing real-time geometric analysis on CO
2
waveforms to generate 82 physiologic features per capnogram. These features were used to train machine learning classifiers to discriminate COPD from ‘non-COPD’ (a group that included healthy participants and those with other cardiorespiratory conditions); model performance was validated on independent test sets.
Results
The best machine learning model (XGBoost) performance provided a class-balanced AUROC of 0.985 ± 0.013, positive predictive value (PPV) of 0.914 ± 0.039 and sensitivity of 0.915 ± 0.066 for a diagnosis of COPD. The waveform features that are most important for driving classification are related to the alpha angle and expiratory plateau regions. These features correlated with spirometry readings, supporting their proposed properties as markers of COPD.
Conclusion
The N-Tidal™ device can be used to accurately diagnose COPD in near-real-time, lending support to future use in a clinical setting.
Trial registration:
Please see NCT03615365, NCT02814253, NCT04504838 and NCT03356288.
Publisher
BioMed Central,BioMed Central Ltd,Nature Publishing Group,BMC
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