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Title: | Disease diagnosis from ECG signals based on optimizing independent component analysis using genetic algorithm [articol] |
Authors: | Ramkumar, M. Babu, C. Ganesh |
Subjects: | Electrocardiogram PCA variance estimator Principal component analysis Independent component analysis Genetic algorithm |
Issue Date: | 2019 |
Publisher: | Timișoara : Editura Politehnica |
Citation: | Ramkumar,M.; Babu, C. Ganesh: Disease diagnosis from ECG signals based on optimizing independent component analysis using genetic algorithm. Timişoara: Editura Politehnica, 2019. |
Series/Report no.: | Journal of Electrical Engineering;Vol 19 No 2 |
Abstract: | The examination of the ECG can benefit in diagnosing the greater part of the heart illness. The electrocardiogram (ECG) gives all data about electrical action of the heart. Changes in the typical beat of a human heart may bring about various cardiovascular arrhythmias, which might be quickly deadly or make hopeless harm to heart managed over drawn out stretches of time. The capacity to automatically recognize arrhythmias, for example, diabetics and blood pressure from ECG chronicles is critical for clinical analysis and treatment. The fundamental goal is to think of a straightforward strategy having less computational time without bargaining with the proficiency. This paper proposes an improved strategy for the arrhythmia classification and extraction of parameters from the ECG signal which is utilized for information gathering and classification framework. Principal component analysis (PCA) is utilized to diminish dimensionality of electrocardiogram (ECG) information proceeding for performing Independent component analysis (ICA). A recently proposed PCA change estimator by the author has been connected for distinguishing true, actual and false peaks of ECG information files. In this paper, it is felt that the capacity of ICA is also checked for parameterization of ECG signals, which is essential on occasion. Independent components (ICs) of appropriately parameterized ECG signals are more promptly interpretable than the estimations themselves, or their ICs. The original ECG recordings and the samples are organized by statistical measures to evaluate the noise statistics of ECG signals and discover the recreation errors. The capacity of ICA is clarified by finding the true, false and actual peaks of private hospital database ECG files. The preprocessed dataset is then classified utilizing machine learning algorithm named Genetic algorithm. The GA is qualified in improving the weights of the ICA, The genetic algorithm is used as a co-training algorithm for enhancing the connection weights values and minimizing the error value to least possible value. This method has demonstrated a decent outcome and a decent execution. Utilizing AI in examining the ECG signal has sparing time, quicker, and straightforward in diagnosing the illness. |
URI: | https://dspace.upt.ro/xmlui/handle/123456789/7077 |
ISSN: | 1582-4594 |
Appears in Collections: | Articole științifice/Scientific articles |
Files in This Item:
File | Description | Size | Format | |
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BUPT_ART_Ramkumar_f.pdf | 1.34 MB | Adobe PDF | View/Open |
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