The Use of Machine Learning Algorithms in the Evaluation of the Effectiveness of Resynchronization Therapy.

artificial intelligence cardiac resynchronization therapy heart failure

Journal

Journal of cardiovascular development and disease
ISSN: 2308-3425
Titre abrégé: J Cardiovasc Dev Dis
Pays: Switzerland
ID NLM: 101651414

Informations de publication

Date de publication:
10 Jan 2022
Historique:
received: 22 12 2021
revised: 03 01 2022
accepted: 04 01 2022
entrez: 20 1 2022
pubmed: 21 1 2022
medline: 21 1 2022
Statut: epublish

Résumé

Cardiovascular disease remains the leading cause of death in the European Union and worldwide. Constant improvement in cardiac care is leading to an increased number of patients with heart failure, which is a challenging condition in terms of clinical management. Cardiac resynchronization therapy is becoming more popular because of its grounded position in guidelines and clinical practice. However, some patients do not respond to treatment as expected. One way of assessing cardiac resynchronization therapy is with ECG analysis. Artificial intelligence is increasing in terms of everyday usability due to the possibility of everyday workflow improvement and, as a result, shortens the time required for diagnosis. A special area of artificial intelligence is machine learning. AI algorithms learn on their own based on implemented data. The aim of this study was to evaluate using artificial intelligence algorithms for detecting inadequate resynchronization therapy. A total of 1241 ECG tracings were collected from 547 cardiac department patients. All ECG signals were analyzed by three independent cardiologists. Every signal event (QRS-complex) and rhythm was manually classified by the medical team and fully reviewed by additional cardiologists. The results were divided into two parts: 80% of the results were used to train the algorithm, and 20% were used for the test (Cardiomatics, Cracow, Poland). The required level of detection sensitivity of effective cardiac resynchronization therapy stimulation was achieved: 99.2% with a precision of 92.4%. Artificial intelligence algorithms can be a useful tool in assessing the effectiveness of resynchronization therapy.

Sections du résumé

BACKGROUND BACKGROUND
Cardiovascular disease remains the leading cause of death in the European Union and worldwide. Constant improvement in cardiac care is leading to an increased number of patients with heart failure, which is a challenging condition in terms of clinical management. Cardiac resynchronization therapy is becoming more popular because of its grounded position in guidelines and clinical practice. However, some patients do not respond to treatment as expected. One way of assessing cardiac resynchronization therapy is with ECG analysis. Artificial intelligence is increasing in terms of everyday usability due to the possibility of everyday workflow improvement and, as a result, shortens the time required for diagnosis. A special area of artificial intelligence is machine learning. AI algorithms learn on their own based on implemented data. The aim of this study was to evaluate using artificial intelligence algorithms for detecting inadequate resynchronization therapy.
METHODS METHODS
A total of 1241 ECG tracings were collected from 547 cardiac department patients. All ECG signals were analyzed by three independent cardiologists. Every signal event (QRS-complex) and rhythm was manually classified by the medical team and fully reviewed by additional cardiologists. The results were divided into two parts: 80% of the results were used to train the algorithm, and 20% were used for the test (Cardiomatics, Cracow, Poland).
RESULTS RESULTS
The required level of detection sensitivity of effective cardiac resynchronization therapy stimulation was achieved: 99.2% with a precision of 92.4%.
CONCLUSIONS CONCLUSIONS
Artificial intelligence algorithms can be a useful tool in assessing the effectiveness of resynchronization therapy.

Identifiants

pubmed: 35050227
pii: jcdd9010017
doi: 10.3390/jcdd9010017
pmc: PMC8778735
pii:
doi:

Types de publication

Journal Article

Langues

eng

Subventions

Organisme : European Union through the European Regional Development Fund un-der the Smart Growth Operational Programme. The project was carried out as part of the Na-tional Centre for Research and Development
ID : Fast Track: "6 / 1.1.1 / 2020 SS Big/MSP/JN 4"

Références

Pacing Clin Electrophysiol. 2009 Oct;32(10):1247-56
pubmed: 19702599
Eur J Heart Fail. 2012 Jun;14(6):628-34
pubmed: 22552183
Circulation. 2012 Aug 14;126(7):822-9
pubmed: 22781424
Eur J Heart Fail. 2020 Dec;22(12):2349-2369
pubmed: 33136300
Circulation. 2007 Jan 16;115(2):204-12
pubmed: 17190867
Int J Cardiol. 2021 Dec 1;344:120-126
pubmed: 34592246
Heart Rhythm. 2017 Jul;14(7):e55-e96
pubmed: 28495301
IEEE Trans Biomed Eng. 1985 Mar;32(3):230-6
pubmed: 3997178
Cureus. 2020 Jul 23;12(7):e9349
pubmed: 32742886
Eur Heart J. 2021 Dec 21;42(48):4901
pubmed: 34649282
Am J Cardiol. 2016 Nov 1;118(9):1368-1373
pubmed: 27634027
J Am Coll Cardiol. 2015 Sep 29;66(13):1489-96
pubmed: 26403346
Heart Fail Rev. 2019 Jan;24(1):41-54
pubmed: 30143910
Circulation. 2010 Nov 16;122(20):2022-30
pubmed: 21041691
JACC Clin Electrophysiol. 2021 Dec;7(12):1505-1515
pubmed: 34454883
J Electrocardiol. 2019 Jan - Feb;52:88-95
pubmed: 30476648
Eur J Heart Fail. 2002 Aug;4(4):507-13
pubmed: 12167392
Kardiol Pol. 2021 Feb 24;79(2):227-241
pubmed: 33635031
Eur Heart J. 2017 May 14;38(19):1463-1472
pubmed: 27371720
Eur Heart J. 2021 Oct 7;42(38):3904-3916
pubmed: 34392353
J Atr Fibrillation. 2015 Apr 30;7(6):1214
pubmed: 27957163
Int J Cardiol. 2021 May 15;331:333-339
pubmed: 33524462

Auteurs

Bartosz Krzowski (B)

1st Department of Cardiology, Medical University of Warsaw, 02-097 Warsaw, Poland.
Department of Medical Informatics and Telemedicine, Medical University of Warsaw, 00-582 Warsaw, Poland.

Jakub Rokicki (J)

1st Department of Cardiology, Medical University of Warsaw, 02-097 Warsaw, Poland.
Department of Medical Informatics and Telemedicine, Medical University of Warsaw, 00-582 Warsaw, Poland.

Renata Główczyńska (R)

1st Department of Cardiology, Medical University of Warsaw, 02-097 Warsaw, Poland.

Katarzyna Barczewska (K)

Cardiomatics, 31-339 Cracow, Poland.

Mariusz Mąsior (M)

Cardiomatics, 31-339 Cracow, Poland.

Marcin Grabowski (M)

1st Department of Cardiology, Medical University of Warsaw, 02-097 Warsaw, Poland.

Paweł Balsam (P)

1st Department of Cardiology, Medical University of Warsaw, 02-097 Warsaw, Poland.

Classifications MeSH