Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.

<h4>Background</h4>Sleep disordered breathing manifested as sleep apnea (SA) is prevalent in the general population, and while it is associated with increased morbidity and mortality risk in some patient populations, it remains under-diagnosed. The objective of this study was to assess t...

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Main Authors: Kwanghyun Sohn, Faisal M Merchant, Shady Abohashem, Kanchan Kulkarni, Jagmeet P Singh, E Kevin Heist, Chris Owen, Jesse D Roberts, Eric M Isselbacher, Furrukh Sana, Antonis A Armoundas
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0217217
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spelling doaj-7b01569ab79049678f67f202966ed4402021-03-04T11:22:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01146e021721710.1371/journal.pone.0217217Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.Kwanghyun SohnFaisal M MerchantShady AbohashemKanchan KulkarniJagmeet P SinghE Kevin HeistChris OwenJesse D RobertsEric M IsselbacherFurrukh SanaAntonis A Armoundas<h4>Background</h4>Sleep disordered breathing manifested as sleep apnea (SA) is prevalent in the general population, and while it is associated with increased morbidity and mortality risk in some patient populations, it remains under-diagnosed. The objective of this study was to assess the accuracy of respiration-rate (RR) and tidal-volume (TV) estimation algorithms, from body-surface ECG signals, using a smartphone based ambulatory respiration monitoring system (cvrPhone).<h4>Methods</h4>Twelve lead ECG signals were collected using the cvrPhone from anesthetized and mechanically ventilated swine (n = 9). During ECG data acquisition, the mechanical ventilator tidal-volume (TV) was varied from 250 to 0 to 750 to 0 to 500 to 0 to 750 ml at respiratory rates (RR) of 6 and 14 breaths/min, respectively, and the RR and TV values were estimated from the ECG signals using custom algorithms.<h4>Results</h4>TV estimations from any two different TV settings showed statistically significant difference (p < 0.01) regardless of the RR. RRs were estimated to be 6.1±1.1 and 14.0±0.2 breaths/min at 6 and 14 breaths/min, respectively (when 250, 500 and 750 ml TV settings were combined). During apnea, the estimated TV and RR values were 11.7±54.9 ml and 0.0±3.5 breaths/min, which were significantly different (p<0.05) than TV and RR values during non-apnea breathing. In addition, the time delay from the apnea onset to the first apnea detection was 8.6±6.7 and 7.0±3.2 seconds for TV and RR respectively.<h4>Conclusions</h4>We have demonstrated that apnea can reliably be detected using ECG-derived RR and TV algorithms. These results support the concept that our algorithms can be utilized to detect SA in conjunction with ECG monitoring.https://doi.org/10.1371/journal.pone.0217217
collection DOAJ
language English
format Article
sources DOAJ
author Kwanghyun Sohn
Faisal M Merchant
Shady Abohashem
Kanchan Kulkarni
Jagmeet P Singh
E Kevin Heist
Chris Owen
Jesse D Roberts
Eric M Isselbacher
Furrukh Sana
Antonis A Armoundas
spellingShingle Kwanghyun Sohn
Faisal M Merchant
Shady Abohashem
Kanchan Kulkarni
Jagmeet P Singh
E Kevin Heist
Chris Owen
Jesse D Roberts
Eric M Isselbacher
Furrukh Sana
Antonis A Armoundas
Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.
PLoS ONE
author_facet Kwanghyun Sohn
Faisal M Merchant
Shady Abohashem
Kanchan Kulkarni
Jagmeet P Singh
E Kevin Heist
Chris Owen
Jesse D Roberts
Eric M Isselbacher
Furrukh Sana
Antonis A Armoundas
author_sort Kwanghyun Sohn
title Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.
title_short Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.
title_full Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.
title_fullStr Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.
title_full_unstemmed Utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.
title_sort utility of a smartphone based system (cvrphone) to accurately determine apneic events from electrocardiographic signals.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description <h4>Background</h4>Sleep disordered breathing manifested as sleep apnea (SA) is prevalent in the general population, and while it is associated with increased morbidity and mortality risk in some patient populations, it remains under-diagnosed. The objective of this study was to assess the accuracy of respiration-rate (RR) and tidal-volume (TV) estimation algorithms, from body-surface ECG signals, using a smartphone based ambulatory respiration monitoring system (cvrPhone).<h4>Methods</h4>Twelve lead ECG signals were collected using the cvrPhone from anesthetized and mechanically ventilated swine (n = 9). During ECG data acquisition, the mechanical ventilator tidal-volume (TV) was varied from 250 to 0 to 750 to 0 to 500 to 0 to 750 ml at respiratory rates (RR) of 6 and 14 breaths/min, respectively, and the RR and TV values were estimated from the ECG signals using custom algorithms.<h4>Results</h4>TV estimations from any two different TV settings showed statistically significant difference (p < 0.01) regardless of the RR. RRs were estimated to be 6.1±1.1 and 14.0±0.2 breaths/min at 6 and 14 breaths/min, respectively (when 250, 500 and 750 ml TV settings were combined). During apnea, the estimated TV and RR values were 11.7±54.9 ml and 0.0±3.5 breaths/min, which were significantly different (p<0.05) than TV and RR values during non-apnea breathing. In addition, the time delay from the apnea onset to the first apnea detection was 8.6±6.7 and 7.0±3.2 seconds for TV and RR respectively.<h4>Conclusions</h4>We have demonstrated that apnea can reliably be detected using ECG-derived RR and TV algorithms. These results support the concept that our algorithms can be utilized to detect SA in conjunction with ECG monitoring.
url https://doi.org/10.1371/journal.pone.0217217
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