References:
Клинические рекомендации: «Фибрилляция предсердий» / Л.А. Бокерия [и др.]. – Москва: Асколайн, 2017. – 65 с.
2. Larburu, N. Comparatie Study of Algorithms for Atrial Fibrillation Detection / N. Larburu, T. Lopetegi, I. Romero // Computers in Cardiology. – 2011. – 38. – P. 265-268.
3. Moody, G.B. A new method for detecting atrial fibrillation using R-R intervals / G.B. Moody, R.G. Mark // Computers in Cardiology. – 1983. – № 10. – P. 227-230.
4. Logan, B. Robust Detection of Atrial Fibrillation for a Long Term Telemonitoring System / B. Logan, J. Healey // Computers in Cardiology. – 2005. – 32. – P. 619-622.
5. Linker D.T. Selective screening for atrial fibrillation using multivariable risk models / D. T. Linker, T. B. Murphy, A. H. Mokdad // Heart. – 2018. – V. 104, I. 18 – P. 1492- 1499.
6. Tatento, K. Automatic detection of atrial fibrillation using the coefficient of variation and density histograms of RR and ∆RR intervals / K. Tatento, L. Glass // Medical & Biological Engineering & Computing. – 2001. – 39. – P. 664-671.
7. Analysis of the dynamics of RR interval series for the detection of atrial fibrillation episodes / S. Cerutti [et al.] // Computers in Cardiology. – 1997. – 24. – P. 77-80.
8. Slocum, J. Diagnosis of atrial fibrillation from surface electrocardiograms based on computer-detected atrial activity. / J. Slocum, A. Sahakian, S. Swiryn // Journal of Electrocardiology. – 1992. – 25. – P. 1-8.
9. Automatic Detection of Atrial Fibrillation andOther Arrhythmias in ECG Recordings Acquiredby a Smartphone Device / R. Schmidt [et al.] // Electronics. – 2018. – № 7 – P. 2-14.
10. Babaeizadeh, S. Improvements in atrial fibrillation detection for real-time monitoring / S. Babaeizadeh, R.E. Gregg, E.D. Helfenbein // Journal of Electrocardiology. – 2009. – 42. – P. 522-526. 11. Detection of Atrial Fibrillation using model-based ECG analysis / R. Couceiro [et al.]// 19th International Conferenceon Pattern Recognition (Tampa, FL, USA,8-11 Dec. 2008)– Tampa, 2009. – P. 1-5.
11. Magrupov T.M, Nеmatov Sh.K, Talatov Y.T, – “ECG processing and analysis technique based on neural network learning vector quantization” - Chemical Technology, Control and Management: Vol. 2020 : Iss. 4, Article 3. Р.15-22 Available at: https://uzjournals.edu.uz/ijctcm/vol2020/iss4/3
12. Talatov Y.Т., Ripka D S. – “Diagnostics of the cardiovascular system based on neural networks” - Conference Proceedings. Proceedings of the 2020 IEEE Conference of Russian Young Researchers in Electrical and Electronic Engineering. ElConRus. 2020, 9039248, Р. 1611-1615.