Artificial intelligence models in prediction of response to cardiac resynchronization therapy: a systematic review

被引:0
作者
Wojciech Nazar
Stanisław Szymanowicz
Krzysztof Nazar
Damian Kaufmann
Elżbieta Wabich
Rüdiger Braun-Dullaeus
Ludmiła Daniłowicz-Szymanowicz
机构
[1] Medical University of Gdańsk,Faculty of Medicine
[2] University of Oxford,Visual Geometry Group
[3] Gdańsk University of Technology,Faculty of Electronics, Telecommunications and Informatics
[4] Medical University of Gdańsk,Department of Cardiology and Electrotherapy, Faculty of Medicine
[5] Otto von Guericke University Magdeburg,Department of Cardiology and Angiology
来源
Heart Failure Reviews | 2024年 / 29卷
关键词
Heart failure; Cardiac resynchronization therapy; Artificial intelligence; Machine learning;
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学科分类号
摘要
The aim of the presented review is to summarize the literature data on the accuracy and clinical applicability of artificial intelligence (AI) models as a valuable alternative to the current guidelines in predicting cardiac resynchronization therapy (CRT) response and phenotyping of patients eligible for CRT implantation. This systematic review was performed according to the PRISMA guidelines. After a search of Scopus, PubMed, Cochrane Library, and Embase databases, 675 records were identified. Twenty supervised (prediction of CRT response) and 9 unsupervised (clustering and phenotyping) AI models were analyzed qualitatively (22 studies, 14,258 patients). Fifty-five percent of AI models were based on retrospective studies. Unsupervised AI models were able to identify clusters of patients with significantly different rates of primary outcome events (death, heart failure event). In comparison to the guideline-based CRT response prediction accuracy of 70%, supervised AI models trained on cohorts with > 100 patients achieved up to 85% accuracy and an AUC of 0.86 in their prediction of response to CRT for echocardiographic and clinical outcomes, respectively. AI models seem to be an accurate and clinically applicable tool in phenotyping of patients eligible for CRT implantation and predicting potential responders. In the future, AI may help to increase CRT response rates to over 80% and improve clinical decision-making and prognosis of the patients, including reduction of mortality rates. However, these findings must be validated in randomized controlled trials.
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页码:133 / 150
页数:17
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[1]  
Glikson M(2021)2021 ESC guidelines on cardiac pacing and cardiac resynchronization therapy Eur Heart J 42 3427-3520
[2]  
Nielsen JC(2021)2021 ESC guidelines for the diagnosis and treatment of acute and chronic heart failure Eur Heart J 42 3599-3726
[3]  
Kronborg MB(2021)Response to cardiac resynchronisation therapy in men and women: a secondary analysis of the SMART-AV randomised controlled trial BMJ Open 11 3245-3279
[4]  
McDonagh TA(2021)Using ensemble of ensemble machine learning methods to predict outcomes of cardiac resynchronization J Cardiovasc Electrophysiol 32 2504-2514
[5]  
Metra M(2020)Prevention of non-response to cardiac resynchronization therapy: points to remember Heart Fail Rev 25 269-2007
[6]  
Adamo M(2017)Cardiac resynchronisation therapy: current indications, management and basic troubleshooting Heart 103 2000-1472
[7]  
Howell S(2017)Avoiding non-responders to cardiac resynchronization therapy: a practical guide Eur Heart J 38 1463-1296
[8]  
Stivland TM(2019)Electrocardiographic optimization techniques in resynchronization therapy EP Europace 21 1286-1595
[9]  
Stein K(2021)The cost of non-response to cardiac resynchronization therapy: characterizing heart failure events following cardiac resynchronization therapy Europace 23 1586-2369
[10]  
Cai C(2020)Optimized implementation of cardiac resynchronization therapy: a call for action for referral and optimization of care: a joint position statement from the Heart Failure Association (HFA), European Heart Rhythm Association (EHRA), and European Association of Cardiovascular Imaging (EACVI) of the European Society of Cardiology Eur J Heart Fail 22 2349-W59