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Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks

Anesthesia assessment is most important during surgery. Anesthesiologists use electrocardiogram (ECG) signals to assess the patient’s condition and give appropriate medications. However, it is not easy to interpret the ECG signals. Even physicians with more than 10 years of clinical experience may s...

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Autores principales: Yeh, Li-Ren, Chen, Wei-Chin, Chan, Hua-Yan, Lu, Nan-Han, Wang, Chi-Yuan, Twan, Wen-Hung, Du, Wei-Chang, Huang, Yung-Hui, Hsu, Shih-Yen, Chen, Tai-Been
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8226863/
https://www.ncbi.nlm.nih.gov/pubmed/34201215
http://dx.doi.org/10.3390/bios11060188
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author Yeh, Li-Ren
Chen, Wei-Chin
Chan, Hua-Yan
Lu, Nan-Han
Wang, Chi-Yuan
Twan, Wen-Hung
Du, Wei-Chang
Huang, Yung-Hui
Hsu, Shih-Yen
Chen, Tai-Been
author_facet Yeh, Li-Ren
Chen, Wei-Chin
Chan, Hua-Yan
Lu, Nan-Han
Wang, Chi-Yuan
Twan, Wen-Hung
Du, Wei-Chang
Huang, Yung-Hui
Hsu, Shih-Yen
Chen, Tai-Been
author_sort Yeh, Li-Ren
collection PubMed
description Anesthesia assessment is most important during surgery. Anesthesiologists use electrocardiogram (ECG) signals to assess the patient’s condition and give appropriate medications. However, it is not easy to interpret the ECG signals. Even physicians with more than 10 years of clinical experience may still misjudge. Therefore, this study uses convolutional neural networks to classify ECG image types to assist in anesthesia assessment. The research uses Internet of Things (IoT) technology to develop ECG signal measurement prototypes. At the same time, it classifies signal types through deep neural networks, divided into QRS widening, sinus rhythm, ST depression, and ST elevation. Three models, ResNet, AlexNet, and SqueezeNet, are developed with 50% of the training set and test set. Finally, the accuracy and kappa statistics of ResNet, AlexNet, and SqueezeNet in ECG waveform classification were (0.97, 0.96), (0.96, 0.95), and (0.75, 0.67), respectively. This research shows that it is feasible to measure ECG in real time through IoT and then distinguish four types through deep neural network models. In the future, more types of ECG images will be added, which can improve the real-time classification practicality of the deep model.
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spelling pubmed-82268632021-06-26 Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks Yeh, Li-Ren Chen, Wei-Chin Chan, Hua-Yan Lu, Nan-Han Wang, Chi-Yuan Twan, Wen-Hung Du, Wei-Chang Huang, Yung-Hui Hsu, Shih-Yen Chen, Tai-Been Biosensors (Basel) Article Anesthesia assessment is most important during surgery. Anesthesiologists use electrocardiogram (ECG) signals to assess the patient’s condition and give appropriate medications. However, it is not easy to interpret the ECG signals. Even physicians with more than 10 years of clinical experience may still misjudge. Therefore, this study uses convolutional neural networks to classify ECG image types to assist in anesthesia assessment. The research uses Internet of Things (IoT) technology to develop ECG signal measurement prototypes. At the same time, it classifies signal types through deep neural networks, divided into QRS widening, sinus rhythm, ST depression, and ST elevation. Three models, ResNet, AlexNet, and SqueezeNet, are developed with 50% of the training set and test set. Finally, the accuracy and kappa statistics of ResNet, AlexNet, and SqueezeNet in ECG waveform classification were (0.97, 0.96), (0.96, 0.95), and (0.75, 0.67), respectively. This research shows that it is feasible to measure ECG in real time through IoT and then distinguish four types through deep neural network models. In the future, more types of ECG images will be added, which can improve the real-time classification practicality of the deep model. MDPI 2021-06-08 /pmc/articles/PMC8226863/ /pubmed/34201215 http://dx.doi.org/10.3390/bios11060188 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Yeh, Li-Ren
Chen, Wei-Chin
Chan, Hua-Yan
Lu, Nan-Han
Wang, Chi-Yuan
Twan, Wen-Hung
Du, Wei-Chang
Huang, Yung-Hui
Hsu, Shih-Yen
Chen, Tai-Been
Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks
title Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks
title_full Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks
title_fullStr Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks
title_full_unstemmed Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks
title_short Integrating ECG Monitoring and Classification via IoT and Deep Neural Networks
title_sort integrating ecg monitoring and classification via iot and deep neural networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8226863/
https://www.ncbi.nlm.nih.gov/pubmed/34201215
http://dx.doi.org/10.3390/bios11060188
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