• LOGIN
    Login with username and password
Repository logo

BORIS Portal

Bern Open Repository and Information System

  • Publications
  • Projects
  • Funding
  • Research Data
  • Organizations
  • Researchers
  • LOGIN
    Login with username and password
Repository logo
Unibern.ch
  1. Home
  2. Publications
  3. Detection of myocardial ischemia by intracoronary ECG using convolutional neural networks.
 

Detection of myocardial ischemia by intracoronary ECG using convolutional neural networks.

Options
  • Details
BORIS DOI
10.48350/157514
Date of Publication
June 14, 2021
Publication Type
Article
Division/Institute

Universitätsklinik fü...

Contributor
Bigler, Marius Retoorcid-logo
Universitätsklinik für Kardiologie
Dekanat der Medizinischen Fakultät
Institut für Physiologie
Seiler, Christian
Universitätsklinik für Kardiologie
Subject(s)

600 - Technology::610...

Series
PLoS ONE
ISSN or ISBN (if monograph)
1932-6203
Publisher
Public Library of Science
Language
English
Publisher DOI
10.1371/journal.pone.0253200
PubMed ID
34125855
Description
INTRODUCTION

The electrocardiogram (ECG) is a valuable tool for the diagnosis of myocardial ischemia as it presents distinctive ischemic patterns. Deep learning methods such as convolutional neural networks (CNN) are employed to extract data-derived features and to recognize natural patterns. Hence, CNN enable an unbiased view on well-known clinical phenomenon, e.g., myocardial ischemia. This study tested a novel, hypothesis-generating approach using pre-trained CNN to determine the optimal ischemic parameter as obtained from the highly susceptible intracoronary ECG (icECG).

METHOD

This was a retrospective observational study in 228 patients with chronic coronary syndrome. Each patient had participated in clinical trials with icECG recording and ST-segment shift measurement at the beginning (i.e., non-ischemic) and the end (i.e., ischemic) of a one-minute proximal coronary artery balloon occlusion establishing the reference. Using these data (893 icECGs in total), two pre-trained, open-access CNN (GoogLeNet/ResNet101) were trained to recognize ischemia. The best performing CNN during training were compared with the icECG ST-segment shift for diagnostic accuracy in the detection of artificially induced myocardial ischemia.

RESULTS

Using coronary patency or occlusion as reference for absent or present myocardial ischemia, receiver-operating-characteristics (ROC)-analysis of manually obtained icECG ST-segment shift (mV) showed an area under the ROC-curve (AUC) of 0.903±0.043 (p<0.0001, sensitivity 80%, specificity 92% at a cut-off of 0.279mV). The best performing CNN showed an AUC of 0.924 (sensitivity 93%, specificity 92%). DeLong-Test of the ROC-curves showed no significant difference between the AUCs. The underlying morphology responsible for the network prediction differed between the trained networks but was focused on the ST-segment and the T-wave for myocardial ischemia detection.

CONCLUSIONS

When tested in an experimental setting with artificially induced coronary artery occlusion, quantitative icECG ST-segment shift and CNN using pathophysiologic prediction criteria detect myocardial ischemia with similarly high accuracy.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/45693
Show full item
File(s)
FileFile TypeFormatSizeLicensePublisher/Copright statementContent
Bigler_et_al._-_Detection_of_myocardial_ischemia_by_intracoronary_ECG_using_convolutional_neural_networks.pdfAdobe PDF1.28 MBAttribution (CC BY 4.0)publishedOpen
BORIS Portal
Bern Open Repository and Information System
Build: 960e9e [21.08. 13:49]
Explore
  • Projects
  • Funding
  • Publications
  • Research Data
  • Organizations
  • Researchers
More
  • About BORIS Portal
  • Send Feedback
  • Cookie settings
  • Service Policy
Follow us on
  • Mastodon
  • YouTube
  • LinkedIn
UniBe logo