Serviceeinschränkungen vom 12.-22.02.2026 - weitere Infos auf der UB-Homepage

Treffer: Machine Learning Efficiency in Predicting Obstructive Coronary Artery Disease in Patients with Non-ST Elevation Acute Coronary Syndrome in the First Hours of Admission.

Title:
Machine Learning Efficiency in Predicting Obstructive Coronary Artery Disease in Patients with Non-ST Elevation Acute Coronary Syndrome in the First Hours of Admission.
Authors:
Tsivanyuk MM; Senior Researcher, Laboratory of Big Data Analysis in Healthcare and Medicine; Far East Federal University, 10 Ayaks Village, Russkiy Island, Vladivostok, 690922, Russia; Interventional Cardiologist; Vladivostok City Clinical Hospital No.1, 22 Sadovaya St., Vladivostok, 690078, Russia., Shakhgeldyan KI; Associate Professor, Head of the Laboratory of Big Data Analysis in Healthcare and Medicine; Far East Federal University, 10 Ayaks Village, Russkiy Island, Vladivostok, 690922, Russia; Director of Scientific and Educational Center for Artificial Intelligence; Vladivostok State University, 41 Gogolya St., Vladivostok, 690014, Russia., Markov MA; Master's Student, Scientific and Educational Center for Artificial Intelligence; Vladivostok State University, 41 Gogolya St., Vladivostok, 690014, Russia., Shirobokov VG; Junior Researcher, Scientific and Educational Center for Artificial Intelligence; Vladivostok State University, 41 Gogolya St., Vladivostok, 690014, Russia., Geltser BI; Professor, Corresponding Member of Russian Academy of Sciences, Deputy Director of School of Medicine and Life Sciences; Far East Federal University, 10 Ayaks Village, Russkiy Island, Vladivostok, 690922, Russia.
Source:
Sovremennye tekhnologii v meditsine [Sovrem Tekhnologii Med] 2025; Vol. 17 (3), pp. 50-60. Date of Electronic Publication: 2025 Jun 30.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Nizhegorodskai︠a︡ gosudarstvennai︠a︡ medit︠s︡inskai︠a︡ akademii︠a Country of Publication: Russia (Federation) NLM ID: 101604515 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 2309-995X (Electronic) Linking ISSN: 20764243 NLM ISO Abbreviation: Sovrem Tekhnologii Med Subsets: MEDLINE
Imprint Name(s):
Original Publication: Nizhniĭ Novgorod : Nizhegorodskai︠a︡ gosudarstvennai︠a︡ medit︠s︡inskai︠a︡ akademii︠a︡
Contributed Indexing:
Keywords: acute coronary syndrome; coronary arteries; obstructive disease; prognostic models; risk stratification; stochastic gradient boosting; unstable angina
Entry Date(s):
Date Created: 20250717 Date Completed: 20250717 Latest Revision: 20250717
Update Code:
20250717
PubMed Central ID:
PMC12261292
DOI:
10.17691/stm2025.17.3.05
PMID:
40672765
Database:
MEDLINE

Weitere Informationen

The aim of the study was to assess the accuracy of prognostic models for obstructive coronary artery disease (OCAD) in the first hours of admission in patients with non-ST segment elevation acute coronary syndrome (NSTE-ACS).
Materials and Methods: The study involved 610 patients with low- and intermediate-risk NSTE-ACS (Me - 62 years). Based on invasive coronary angiography findings the patients were divided into 2 groups: the first - 363 (59.5%) patients with OCAD (coronary artery luminal occlusion ≥50%), the second - 247 (40.5%) patients without coronary obstruction (<50%). Clinical and functional status was assessed using 62 parameters available at the early hospitalization including: clinical and demographic, anthropometric, laboratory, electrocardiographic and echocardiographic data.OCAD predictive models were developed using machine learning methods: multifactorial logistic regression, random forest, and stochastic gradient boosting (SGB). The models contained the sets of predictors identified during the initial medical examination in the hospital (the first scenario), after 1-hour observation (the second scenario), and 3 h later (the third scenario). The quality of the models was assessed using six metrics. The impact degree of individual predictors on the study endpoint was determined by the Shapley method of additive explanation (SHAP). OCAD probability stratification was performed by distinguishing the categories of low, medium, high and very high risk.
Results: Based on machine learning methods, OCAD predictive models were developed, among which the best quality metrics were demonstrated by SGB models with the sets of predictors corresponding to three prognostic scenarios (the area under ROC curve: 0.846, 0.887, and 0.949, respectively). Using the SHAP method, we identified the factors with a dominant impact on OCAD, which included the anthropometric indicators (waist circumference, hip circumference, and their ratio) - in the first and second prognostic scenarios; and global longitudinal systolic strain of the left ventricle - in the third scenario. Based on SGB model data there were distinguished the categories of low, medium, high and very high risk of OCAD, their digital ranges depended on the prognostic scenarios.
Conclusion: The prognostic OCAD models developed based on SGB enable to highly accurately assess the degree of coronary damage in NSTE-ACS patients in the first hours of hospitalization. The highest accuracy of OCAD prediction was demonstrated by the models of the third scenario, the structure of which, in addition to anamnestic, anthropometric and ECG data, included clinical and biochemical blood parameters and echocardiographic indicators. Thus, OCAD risk stratification using the mentioned models can be a useful tool in selecting the optimal myocardial revascularization strategy.

Conflict of interest. All authors declare no potential conflict of interest related to the present study.