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Predictive value of electrocardiographic, echocardiographic and hematological parameters for predicting new‑onset atrial fibrillation in patients with ST‑segment elevation myocardial infarction after percutaneous coronary intervention

https://doi.org/10.15829/1560-4071-2025-6353

EDN: JXFOOY

Abstract

Aim. To assessment predictive potential of electrocardiographic, echocardiographic and hematological parameters for predicting new‑onset atrial fibrillation (AF) in patients with ST‑segment elevation myocardial infarction after percutaneous coronary intervention (PCI), as well as to develop novel prognostic models based on machine learning.

Material and methods. This single‑center prospective study included 733 patients with ST‑segment elevation myocardial infarction. Two following groups were identified: the first — 57 (7,8%) patients with new‑onset postoperative AF after PCI, and the second — 676 (92,2%) patients without cardiac arrhythmia. To predict AF, univariate and multivariate logistic regression, decision trees, CatBoost gradient boosting were used.

Results. Comparative analysis of electrocardiography, echocardiography, hematological and clinical data demonstrated that following parameters has the highest predictive potential: neutrophil‑to‑eosinophil ratio (NER) >48,7 (odds ratio (OR) 7,1), Killip class >2 acute heart failure (OR 4,44), erythrocyte sedimentation rate (ESR) >36 mm/h (OR 4) and systemic inflammatory response index (SIRI) >5 (OR 3,8). The best prognostic model of new‑onset AF after PCI (AUC=0,806) included 9 following categorical predictors: NER >48,7 conventional units, SIRI >5 conventional units, erythrocyte sedimentation rate >36 mm/h, PQ >200 ms, 600 ms< RR >1200 ms, pulmonary artery systolic pressure >33,5 mm Hg, age >66 years, TIMI <3 and Killip class >2 acute heart failure.

Conclusion. Improving the accuracy of predicting new‑onset AF after PCI can be achieved by expanding the range of potential predictors and using modern explainable artificial intelligence technologies.

About the Authors

B. I. Geltser
Far Eastern Federal University Vladivostok State University
Russian Federation

Boris Izrailevich Geltser, School of Medicine and Life Sciences, Deputy Director for Research, Far Eastern Federal University; Scientific Educational Center "Artificial Intelligence", Chief Researcher,Vladivostok State University

Vladivostok



K. I. Shahgeldyan
Far Eastern Federal University Vladivostok State University
Russian Federation

Karina Iosifovna Shahgeldyan, Head of the Laboratory for Big Data Analysis in Healthcare and Medicine, Far Eastern Federal University. School of Medicine; Director of the Scientific Educational Center "Artificial Intelligence", Vladivostok State University

Vladivostok


Competing Interests:

.



R. L. Pak
Far Eastern Federal University Primorsky Regional Clinical Hospital No. 1
Russian Federation

Regina Leonidovna Pak, School of Medicine and Life Sciences, Department of Clinical Medicine, assistant, Far Eastern Federal University; doctor of the intensive care unit of the regional vascular center, Primorsky Regional Clinical Hospital No. 1 

Vladivostok


Competing Interests:

.



N. S. Kuksin
Far Eastern Federal University Vladivostok State University
Russian Federation

Nikita Sergeevich Kuksin, undergraduate, Far Eastern Federal University. Institute of Mathematics and Computer Technologies; Scientific Educational Center "Artificial Intelligence", Junior Researcher, Vladivostok State University

Vladivostok


Competing Interests:

.



I. G. Domzhalov
Far Eastern Federal University Primorsky Regional Clinical Hospital No. 1
Russian Federation

Igor Genadevich Domzhalov,  undergraduate, Far Eastern Federal University. School of Medicine, Department of Clinical Medicine;  doctor of the intensive care unit of the regional vascular center, Primorsky Regional Clinical Hospital No. 1

Vladivostok


Competing Interests:

.



E. A. Kokarev
Primorsky Regional Clinical Hospital No. 1
Russian Federation

Evgeniy Anatolievich Kokarev, Head of the intensive care unit of the regional vascular center

Vladivostok


Competing Interests:

 

 



V. N. Kotelnikov
Far Eastern Federal University.
Russian Federation

Vladimir Nikolaevich Kotelnikov, School of Medicine and Life Sciences, Department of Clinical Medicine, Professor

Vladivostok


Competing Interests:

Нет конфликта



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Supplementary files

  • The highest predictive potential for new-onset atrial fibrillation (AF) in patients with ST-segment elevation myocardial infarction (STEMI) after percutaneous coronary intervention (PCI) has neutrophil-to-­eosinophil ratio, acute heart failure Killip class, erythrocyte sedimentation rate, systemic inflammatory response index.
  • Electrocardiographic and echocardiographic para­meters in isolated form had lower prognostic value.
  • The structure of the best prognostic model of new-onset AF in patients with STEMI after PCI, developed on the basis of multivariate logistic regression, included 9 categorical predictors.

Review

For citations:


Geltser B.I., Shahgeldyan K.I., Pak R.L., Kuksin N.S., Domzhalov I.G., Kokarev E.A., Kotelnikov V.N. Predictive value of electrocardiographic, echocardiographic and hematological parameters for predicting new‑onset atrial fibrillation in patients with ST‑segment elevation myocardial infarction after percutaneous coronary intervention. Russian Journal of Cardiology. 2025;30(8):6353. (In Russ.) https://doi.org/10.15829/1560-4071-2025-6353. EDN: JXFOOY

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ISSN 1560-4071 (Print)
ISSN 2618-7620 (Online)