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https://dspace.ncfu.ru/handle/123456789/33039| Title: | Binary Classification of Single-Lead Electrocardiogram Using Machine and Deep Learning Methods |
| Authors: | Kiladze, M. R. Киладзе, М. Р. Lyakhov, P. A. Ляхов, П. А. Abdulkadirov, R. I. Абдулкадиров, Р. И. |
| Keywords: | Electrocardiogram;Long shot-term memory;Machine learning;Biomedical signal processing |
| Issue Date: | 2026 |
| Publisher: | Institute of Electrical and Electronics Engineers Inc. |
| Citation: | Kiladze M. R., Lyakhov P. A., Abdulkadirov R. I. Binary Classification of Single-Lead Electrocardiogram Using Machine and Deep Learning Methods // Proceedings - 2026 International Russian Smart Industry Conference, SmartIndustryCon 2026. - 2026. - pp. 334 - 338. - DOI: 10.1109/SmartIndustryCon68821.2026.11492851 |
| Series/Report no.: | Proceedings - 2026 International Russian Smart Industry Conference, SmartIndustryCon 2026 |
| Abstract: | This study presents a comparative analysis of machine and deep learning methods for binary classification of single-lead electrocardiogram (ECG) signals. Five cardiac data classification models were evaluated: decision tree and random forest classification, a long short-term memory (LSTM) network with pre-extraction of random forest and decision tree data, and the proposed hybrid model with parallel feature extraction on a stream of electrocardiogram signals. Experiments were conducted on the publicly available PhysioNet Computing in Cardiology Challenge 2017 dataset labeled as "Normal"or "Atrial Fibrillation."Simulation results showed that the hybrid model with parallel feature extraction is inferior in classification accuracy to the model with pre-extraction of morphological features using the random forest method. These results indicate that machine learning methods, in particular random forest, offer a robust and efficient solution for automatic ECG classification, balancing high performance with low computational cost. This makes them suitable for integration into wearable devices and large-scale screening applications. |
| URI: | https://dspace.ncfu.ru/handle/123456789/33039 |
| Appears in Collections: | Статьи, проиндексированные в SCOPUS, WOS |
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| File | Size | Format | |
|---|---|---|---|
| scopusresults 4036.pdf Restricted Access | 120.05 kB | Adobe PDF | View/Open |
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