Please use this identifier to cite or link to this item: http://repository.tma.uz/xmlui/handle/1/2650
Title: Methods and algorithms for classifying ECG characteristics and training neural networks for diagnosing heart diseases
Authors: N.M.Nurillaeva, Talat Magrupov, Yokubjon Talatov
Keywords: ECG characteristics heart diseases.
Issue Date: 2022
Publisher: Европа
Abstract: Purpose to improve methods, develop algorithms for identifying ECG characteristics for automatic diagnosis of heart diseases such as arrhythmia. In this regard, we have proposed methods and algorithms: preprocessing of signals, extraction of functions Q, R, S, P, T; training of neural networks for diagnosing heart diseases; classifying the characteristics of the electrocardiogram for various possible states of the cardiovascular system using neural networks, determining the time and amplitude characteristics of the ECG functions, calculating the intervals between them and the heart rate.The results of the research are algorithms for training neural networks and a method for classifying ECG characteristics for diagnosing heart diseases, implemented on the Matlab programming system.
URI: http://repository.tma.uz/xmlui/handle/1/2650
Appears in Collections:Thesis, Articles

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