Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation
As the number of health issues caused by heart problems is on the rise worldwide, the need for an efficient and portable device for detecting heart arrhythmia is needed. This work proposes a Premature Ventricular Contraction detection system, which is one of the most common arrhythmia, based on Herm...
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my.utm.578912022-04-06T07:27:33Z http://eprints.utm.my/id/eprint/57891/ Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation Hashim, Amin Bakhteri, Rabia Jahangir Hau, Yuan Wen TK Electrical engineering. Electronics Nuclear engineering As the number of health issues caused by heart problems is on the rise worldwide, the need for an efficient and portable device for detecting heart arrhythmia is needed. This work proposes a Premature Ventricular Contraction detection system, which is one of the most common arrhythmia, based on Hermite Polynomial Expansion and Artificial Neural Network Algorithm. The algorithm is implemented as a System-On-Chip on Altera DE2-115 FPGA board to form a portable, lightweight and cost effective biomedical embedded system to serve for arrhythmia screening and monitoring purposes. The complete Premature Ventricular Contraction classification computation includes pre-processing, segmentation, morphological information extraction based on Hermite Polynomial Expansion and classification based on artificial Neural Network algorithm. The MIT-BIH Database containing 48 patients' ECG records was used for training and testing purposes and Multilayer Perceptron training is performed using back propagation algorithm. Results show that the algorithm can detect the PVC arrhythmia for 48 different patients with 92.1% accuracy. Asian Research Publishing Network 2015 Article PeerReviewed Hashim, Amin and Bakhteri, Rabia Jahangir and Hau, Yuan Wen (2015) Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation. ARPN Journal of Engineering and Applied Sciences, 10 (20). pp. 9839-9845. ISSN 1819-6608 http://www.arpnjournals.com/jeas/volume_20_2015.htm |
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TK Electrical engineering. Electronics Nuclear engineering Hashim, Amin Bakhteri, Rabia Jahangir Hau, Yuan Wen Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation |
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As the number of health issues caused by heart problems is on the rise worldwide, the need for an efficient and portable device for detecting heart arrhythmia is needed. This work proposes a Premature Ventricular Contraction detection system, which is one of the most common arrhythmia, based on Hermite Polynomial Expansion and Artificial Neural Network Algorithm. The algorithm is implemented as a System-On-Chip on Altera DE2-115 FPGA board to form a portable, lightweight and cost effective biomedical embedded system to serve for arrhythmia screening and monitoring purposes. The complete Premature Ventricular Contraction classification computation includes pre-processing, segmentation, morphological information extraction based on Hermite Polynomial Expansion and classification based on artificial Neural Network algorithm. The MIT-BIH Database containing 48 patients' ECG records was used for training and testing purposes and Multilayer Perceptron training is performed using back propagation algorithm. Results show that the algorithm can detect the PVC arrhythmia for 48 different patients with 92.1% accuracy. |
format |
Article |
author |
Hashim, Amin Bakhteri, Rabia Jahangir Hau, Yuan Wen |
author_facet |
Hashim, Amin Bakhteri, Rabia Jahangir Hau, Yuan Wen |
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Hashim, Amin |
title |
Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation |
title_short |
Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation |
title_full |
Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation |
title_fullStr |
Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation |
title_full_unstemmed |
Arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on System-On-Chip implementation |
title_sort |
arrhythmia detection based on hermite polynomial expansion and multilayer perceptron on system-on-chip implementation |
publisher |
Asian Research Publishing Network |
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2015 |
url |
http://eprints.utm.my/id/eprint/57891/ http://www.arpnjournals.com/jeas/volume_20_2015.htm |
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1729703221239218176 |
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13.211869 |