Application of Deep Neural Network Models for Blood Pressure Classification based on Photoplethysmograpic Recordings

The measurement of blood pressure (BP) in an uninterrupted and comfortable way for the subject is essential for early diagnosis and monitoring of cardiovascular diseases (CVD). In fact, hypertension is the main risk factor for CVD because, being a hidden health problem with no symptoms until late st...

Full description

Saved in:
Bibliographic Details
Published inE-Health and Bioengineering Conference (Online) pp. 1 - 4
Main Authors Cano, Jesus, Facila, Lorenzo, Langley, Philip, Zangroniz, Roberto, Alcaraz, Raul, Rieta, Jose J.
Format Conference Proceeding
LanguageEnglish
Published IEEE 18.11.2021
Subjects
Online AccessGet full text
ISSN2575-5145
DOI10.1109/EHB52898.2021.9657658

Cover

Loading…
Abstract The measurement of blood pressure (BP) in an uninterrupted and comfortable way for the subject is essential for early diagnosis and monitoring of cardiovascular diseases (CVD). In fact, hypertension is the main risk factor for CVD because, being a hidden health problem with no symptoms until late stages of the disease are reached. This work investigates whether deep neural network models are able to discriminate between healthy and hypertensive subjects based on photoplethysmographic (PPG) recordings, without the need of electrocardiographic (ECG) recordings as well as avoiding manual morphological feature extraction, as has been popularly used in many previous studies. Recordings analyzed consisted of 635 simultaneous PPG and arterial blood pressure (ABP) signals from 50 different patients. The classification was performed with GoogLeNet, ResNet-18 and ResNet-50 pretrained convolutional neural networks (CNN) using as input images the scalogram of PPG segments obtained by continuous wavelet transformation (CWT). Additionally, Adam and SGDM training solvers were used to compare classification performance. After applying early stopping to avoid overfitting, training was performed with more than half of the epochs using Adam optimizer. ResNet-18 CNN provided the highest classification performance with sensitivity of 95.68%, specificity of 93.65%, F1-score of 95.61% an Area under the Roc area of 98.77%. Hence, the application of deep neural network classification models using time frequency transformation of PPG recordings has been able to provide outstanding results in blood pressure classification without requiring neither morphological feature extraction nor ECG features.
AbstractList The measurement of blood pressure (BP) in an uninterrupted and comfortable way for the subject is essential for early diagnosis and monitoring of cardiovascular diseases (CVD). In fact, hypertension is the main risk factor for CVD because, being a hidden health problem with no symptoms until late stages of the disease are reached. This work investigates whether deep neural network models are able to discriminate between healthy and hypertensive subjects based on photoplethysmographic (PPG) recordings, without the need of electrocardiographic (ECG) recordings as well as avoiding manual morphological feature extraction, as has been popularly used in many previous studies. Recordings analyzed consisted of 635 simultaneous PPG and arterial blood pressure (ABP) signals from 50 different patients. The classification was performed with GoogLeNet, ResNet-18 and ResNet-50 pretrained convolutional neural networks (CNN) using as input images the scalogram of PPG segments obtained by continuous wavelet transformation (CWT). Additionally, Adam and SGDM training solvers were used to compare classification performance. After applying early stopping to avoid overfitting, training was performed with more than half of the epochs using Adam optimizer. ResNet-18 CNN provided the highest classification performance with sensitivity of 95.68%, specificity of 93.65%, F1-score of 95.61% an Area under the Roc area of 98.77%. Hence, the application of deep neural network classification models using time frequency transformation of PPG recordings has been able to provide outstanding results in blood pressure classification without requiring neither morphological feature extraction nor ECG features.
Author Zangroniz, Roberto
Rieta, Jose J.
Facila, Lorenzo
Langley, Philip
Alcaraz, Raul
Cano, Jesus
Author_xml – sequence: 1
  givenname: Jesus
  surname: Cano
  fullname: Cano, Jesus
  email: jecaser@upv.es
  organization: Universitat Politecnica de Valencia,BioMIT.org,Electronic Engineering Department,Spain
– sequence: 2
  givenname: Lorenzo
  surname: Facila
  fullname: Facila, Lorenzo
  email: lfacila@gmail.com
  organization: Hospital General Universitario de Valencia,Cardiology Department,Spain
– sequence: 3
  givenname: Philip
  surname: Langley
  fullname: Langley, Philip
  email: p.langley@hull.ac.uk
  organization: University of Hull,Department of Engineering,United Kingdom
– sequence: 4
  givenname: Roberto
  surname: Zangroniz
  fullname: Zangroniz, Roberto
  organization: Univ. of Castilla-La Mancha,Research Group in Electronic, Biomedical and Telecomm. Eng.,Spain
– sequence: 5
  givenname: Raul
  surname: Alcaraz
  fullname: Alcaraz, Raul
  email: raul.alcaraz@uclm.es
  organization: Univ. of Castilla-La Mancha,Research Group in Electronic, Biomedical and Telecomm. Eng.,Spain
– sequence: 6
  givenname: Jose J.
  surname: Rieta
  fullname: Rieta, Jose J.
  email: jjrieta@upv.es
  organization: Universitat Politecnica de Valencia,BioMIT.org,Electronic Engineering Department,Spain
BookMark eNo1kN1KwzAcxaMouM09gQh5gc4kzUdzuc3phKlD9Hqk6T9btGtK0jH29hacV7_DgXM4nCG6akIDCN1TMqGU6IfFciZYoYsJI4xOtBRKiuICDamUgnNCiLpEAyaUyATl4gaNU_ruXZZTIZkeoG7atrW3pvOhwcHhR4AWv8EhmrpHdwzxB7-GCuqEXYh4VodQ4XWElA4R8Lw2KXn3ny9Nggr3Yr0LXWhr6HantA_baFpv8QfYECvfbNMtunamTjA-c4S-nhaf82W2en9-mU9XmWeCdBlYrZWztrC6KkS_WXPuNDeO5jS3NlekFMYyJ4ngpaqkFYUyYA1xpaHOqXyE7v56PQBs2uj3Jp4255PyX_3AYJE
ContentType Conference Proceeding
DBID 6IE
6IL
CBEJK
RIE
RIL
DOI 10.1109/EHB52898.2021.9657658
DatabaseName IEEE Electronic Library (IEL) Conference Proceedings
IEEE Xplore POP ALL
IEEE Xplore All Conference Proceedings
IEEE/IET Electronic Library
IEEE Proceedings Order Plans (POP All) 1998-Present
DatabaseTitleList
Database_xml – sequence: 1
  dbid: RIE
  name: IEEE/IET Electronic Library
  url: https://proxy.k.utb.cz/login?url=https://ieeexplore.ieee.org/
  sourceTypes: Publisher
DeliveryMethod fulltext_linktorsrc
EISBN 1665440007
9781665440004
EISSN 2575-5145
EndPage 4
ExternalDocumentID 9657658
Genre orig-research
GroupedDBID 6IE
6IF
6IL
6IN
AAWTH
ABLEC
ADZIZ
ALMA_UNASSIGNED_HOLDINGS
BEFXN
BFFAM
BGNUA
BKEBE
BPEOZ
CBEJK
CHZPO
IEGSK
OCL
RIE
RIL
ID FETCH-LOGICAL-i250t-ec997fcc8c9d85023944f94af1313cc370b5ac2f6054b7d6c587aeca0fba1ff73
IEDL.DBID RIE
IngestDate Wed Aug 27 04:59:12 EDT 2025
IsDoiOpenAccess false
IsOpenAccess true
IsPeerReviewed false
IsScholarly false
Language English
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-i250t-ec997fcc8c9d85023944f94af1313cc370b5ac2f6054b7d6c587aeca0fba1ff73
OpenAccessLink http://hdl.handle.net/10251/190750
PageCount 4
ParticipantIDs ieee_primary_9657658
PublicationCentury 2000
PublicationDate 2021-Nov.-18
PublicationDateYYYYMMDD 2021-11-18
PublicationDate_xml – month: 11
  year: 2021
  text: 2021-Nov.-18
  day: 18
PublicationDecade 2020
PublicationTitle E-Health and Bioengineering Conference (Online)
PublicationTitleAbbrev EHB
PublicationYear 2021
Publisher IEEE
Publisher_xml – name: IEEE
SSID ssj0002315629
Score 1.800299
Snippet The measurement of blood pressure (BP) in an uninterrupted and comfortable way for the subject is essential for early diagnosis and monitoring of...
SourceID ieee
SourceType Publisher
StartPage 1
SubjectTerms Blood pressure
Blood Pressure (BP)
Classification Models
Continuous wavelet transforms
Deep learning
Deep Learning (DL)
Electrocardiography
Feature extraction
Neural networks
Photoplethysmogram (PPG)
Training
Title Application of Deep Neural Network Models for Blood Pressure Classification based on Photoplethysmograpic Recordings
URI https://ieeexplore.ieee.org/document/9657658
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV27TsMwFLXaTkyAWsRbHhhJGiexHY8UWlVIRR2o1K3yU1SUpirpwtfj64QiEANTrMiWLd_hPnzOuQjdSJFTbWUWMZC5zHmRRMpwFzHFU0MYSGYBwXnyxMaz_HFO5y10u-fCWGsD-MzGMAxv-abUOyiV9QXz0TEt2qjtE7eaq7Wvp_g4xbty0ZB0SCL6w_GA-nQC8FspiZu1P5qoBB8yOkSTr91r6MhrvKtUrD9-CTP-93hHqPfN1sPTvR86Ri277qLq7vtlGpcOP1i7waDEIVf-E6DfGPqgrd6xD1vxAPDruOYKbi0OrTIBRFSvB1dnsB9MX8oKEOdg3bcgdr3UuM5goeLeQ7PR8Pl-HDUdFqKlD32qyGohuNO60MIUNLRJz53IpSMZybTOeKKo1KnzOU-uuGGaFlxaLROnJHGOZyeosy7X9hRhPzMn2qZKWpfzxEinGXMuyRwzLFX0DHXhxhabWkRj0VzW-d-_L9ABWA1If6S4RJ1qu7NX3vtX6jqY_RPpKLLc
linkProvider IEEE
linkToHtml http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV3LT8IwGG8QD3pSA8a3PXh0Y4-uXY-ikKlAOEDCjfQZiQgEx8W_3n7bxGg8eFqzrNnSLvke_T0QuhGcJMqI2KMgc0lYGnhSM-tRySIdUpDMAoJzf0CzMXmaJJMaut1yYYwxBfjM-DAszvL1Um2gVdbi1GXHSbqDdl3cJ7xka207Ki5TccGcVzSdMOCtTtZOXEEBCK4o9KvZP2xUiijSPUD9r_eX4JFXf5NLX338kmb87wceouY3Xw8Pt5HoCNXMooHyu--zaby0-MGYFQYtDjF3lwL8jcEJbf6OXeKK24BgxyVbcG1wYZYJMKJyPgQ7jd1g-LLMAXMO-_tWyF3PFC5rWOi5N9G42xndZ17lseDNXPKTe0ZxzqxSqeI6TQqjdGI5ETaMw1ipmAUyESqyruohkmmqkpQJo0RgpQitZfExqi-WC3OCsHuShMpEUhhLWKCFVZRaG8SWahrJ5BQ1YMWmq1JGY1ot1tnft6_RXjbq96a9x8HzOdqHHQQKYJheoHq-3phLlwvk8qr4BT4BdZC2LA
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=proceeding&rft.title=E-Health+and+Bioengineering+Conference+%28Online%29&rft.atitle=Application+of+Deep+Neural+Network+Models+for+Blood+Pressure+Classification+based+on+Photoplethysmograpic+Recordings&rft.au=Cano%2C+Jesus&rft.au=Facila%2C+Lorenzo&rft.au=Langley%2C+Philip&rft.au=Zangroniz%2C+Roberto&rft.date=2021-11-18&rft.pub=IEEE&rft.eissn=2575-5145&rft.spage=1&rft.epage=4&rft_id=info:doi/10.1109%2FEHB52898.2021.9657658&rft.externalDocID=9657658