DeepCNAP: A Deep Learning Approach for Continuous Noninvasive Arterial Blood Pressure Monitoring Using Photoplethysmography

Arterial blood pressure (ABP) monitoring may permit the early diagnosis and management of cardiovascular disease (CVD); however, existing methods for measuring ABP outside the clinic use inconvenient cuff sphygmomanometry, or do not estimate continuous ABP waveforms. This study proposes a novel deep...

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Veröffentlicht in:IEEE journal of biomedical and health informatics 2022-08, Vol.26 (8), p.3697-3707
Hauptverfasser: Kim, Dong-Kyu, Kim, Young-Tak, Kim, Hakseung, Kim, Dong-Joo
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container_title IEEE journal of biomedical and health informatics
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creator Kim, Dong-Kyu
Kim, Young-Tak
Kim, Hakseung
Kim, Dong-Joo
description Arterial blood pressure (ABP) monitoring may permit the early diagnosis and management of cardiovascular disease (CVD); however, existing methods for measuring ABP outside the clinic use inconvenient cuff sphygmomanometry, or do not estimate continuous ABP waveforms. This study proposes a novel deep learning model DeepCNAP for estimating continuous BP waveform from a noninvasively measured photoplethysmography (PPG) signal in real-time. DeepCNAP was designed through the combination of deep convolutional networks and self-attention. The proposed method was constructed via 10-fold cross-validation based on the MIMIC database (the number of subjects = 942, recording time = 374.43 hours). The performance of DeepCNAP was evaluated from two perspectives: estimating ABP from PPG and classifying hemodynamically unstable events (i.e., hypertension, prehypertension, hypotension, and the normal state). The mean absolute errors of the BP estimates were 3.40 ± 4.36 mmHg for systolic BP, 1.75 ± 2.25 mmHg for diastolic BP, and 3.23 ± 2.21 mmHg for the BP waveform, indicating that DeepCNAP satisfies the standards of both the British Hypertension Society (BHS) and the Association for the Advancement of Medical Instrumentation (AAMI). From the estimated BP, hypertension, prehypertension, hypotension, and the normal state were classified with 99.44, 97.58, 92.23, and 94.64% accuracy, respectively. DeepCNAP enables feasible real-time estimation of invasively measured ABP from noninvasive PPG. With its noninvasive nature, high accuracy, and clinical relevance, the proposed model could be valuable in general wards at hospitals and for wearable devices in daily life.
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From the estimated BP, hypertension, prehypertension, hypotension, and the normal state were classified with 99.44, 97.58, 92.23, and 94.64% accuracy, respectively. DeepCNAP enables feasible real-time estimation of invasively measured ABP from noninvasive PPG. With its noninvasive nature, high accuracy, and clinical relevance, the proposed model could be valuable in general wards at hospitals and for wearable devices in daily life.</abstract><cop>United States</cop><pub>IEEE</pub><pmid>35511844</pmid><doi>10.1109/JBHI.2022.3172514</doi><tpages>11</tpages><orcidid>https://orcid.org/0000-0001-5407-293X</orcidid><orcidid>https://orcid.org/0000-0003-2442-760X</orcidid><orcidid>https://orcid.org/0000-0002-0988-2236</orcidid></addata></record>
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subjects arterial blood pressure
Blood pressure
Cardiovascular diseases
Convolution
Data models
Deep learning
Estimation
Feature extraction
Heart diseases
hemodynamic instability
Hypertension
Hypotension
Instrumentation
Machine learning
Measurement methods
Monitoring
photoplethysmography
Real time
self-attention
Telemedicine
Waveforms
Wearable technology
title DeepCNAP: A Deep Learning Approach for Continuous Noninvasive Arterial Blood Pressure Monitoring Using Photoplethysmography
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