Design and implementation of a smart Internet of Things chest pain center based on deep learning
The data input process for most chest pain centers is not intelligent, requiring a lot of staff to manually input patient information. This leads to problems such as long processing times, high potential for errors, an inability to access patient data in a timely manner and an increasing workload. T...
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sg-ntu-dr.10356-1740242024-03-15T15:36:15Z Design and implementation of a smart Internet of Things chest pain center based on deep learning Li, Feng Bi, Zhongao Xu, Hongzeng Shi, Yunqi Duan, Na Li, Zhaoyu School of Computer Science and Engineering Computer and Information Science Internet of Things Deep learning The data input process for most chest pain centers is not intelligent, requiring a lot of staff to manually input patient information. This leads to problems such as long processing times, high potential for errors, an inability to access patient data in a timely manner and an increasing workload. To address the challenge, an Internet of Things (IoT)-driven chest pain center is designed, which crosses the sensing layer, network layer and application layer. The system enables the construction of intelligent chest pain management through a pre-hospital app, Ultra-Wideband (UWB) positioning, and in-hospital treatment. The pre-hospital app is provided to emergency medical services (EMS) centers, which allows them to record patient information in advance and keep it synchronized with the hospital's database, reducing the time needed for treatment. UWB positioning obtains the patient's hospital information through the zero-dimensional base station and the corresponding calculation engine, and in-hospital treatment involves automatic acquisition of patient information through web and mobile applications. The system also introduces the Bidirectional Long Short-Term Memory (BiLSTM)-Conditional Random Field (CRF)-based algorithm to train electronic medical record information for chest pain patients, extracting the patient's chest pain clinical symptoms. The resulting data are saved in the chest pain patient database and uploaded to the national chest pain center. The system has been used in Liaoning Provincial People's Hospital, and its subsequent assistance to doctors and nurses in collaborative treatment, data feedback and analysis is of great significance. Published version This work was supported by the Natural Science Foundation of Liaoning Province (No. 2023-MS054). 2024-03-12T04:41:29Z 2024-03-12T04:41:29Z 2023 Journal Article Li, F., Bi, Z., Xu, H., Shi, Y., Duan, N. & Li, Z. (2023). Design and implementation of a smart Internet of Things chest pain center based on deep learning. Mathematical Biosciences and Engineering, 20(10), 18987-19011. https://dx.doi.org/10.3934/mbe.2023840 1547-1063 https://hdl.handle.net/10356/174024 10.3934/mbe.2023840 38052586 2-s2.0-85176224575 10 20 18987 19011 en Mathematical Biosciences and Engineering © 2023 the Author(s), licensee AIMS Press. This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0). application/pdf |
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Computer and Information Science Internet of Things Deep learning Li, Feng Bi, Zhongao Xu, Hongzeng Shi, Yunqi Duan, Na Li, Zhaoyu Design and implementation of a smart Internet of Things chest pain center based on deep learning |
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The data input process for most chest pain centers is not intelligent, requiring a lot of staff to manually input patient information. This leads to problems such as long processing times, high potential for errors, an inability to access patient data in a timely manner and an increasing workload. To address the challenge, an Internet of Things (IoT)-driven chest pain center is designed, which crosses the sensing layer, network layer and application layer. The system enables the construction of intelligent chest pain management through a pre-hospital app, Ultra-Wideband (UWB) positioning, and in-hospital treatment. The pre-hospital app is provided to emergency medical services (EMS) centers, which allows them to record patient information in advance and keep it synchronized with the hospital's database, reducing the time needed for treatment. UWB positioning obtains the patient's hospital information through the zero-dimensional base station and the corresponding calculation engine, and in-hospital treatment involves automatic acquisition of patient information through web and mobile applications. The system also introduces the Bidirectional Long Short-Term Memory (BiLSTM)-Conditional Random Field (CRF)-based algorithm to train electronic medical record information for chest pain patients, extracting the patient's chest pain clinical symptoms. The resulting data are saved in the chest pain patient database and uploaded to the national chest pain center. The system has been used in Liaoning Provincial People's Hospital, and its subsequent assistance to doctors and nurses in collaborative treatment, data feedback and analysis is of great significance. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Li, Feng Bi, Zhongao Xu, Hongzeng Shi, Yunqi Duan, Na Li, Zhaoyu |
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Li, Feng Bi, Zhongao Xu, Hongzeng Shi, Yunqi Duan, Na Li, Zhaoyu |
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Li, Feng |
title |
Design and implementation of a smart Internet of Things chest pain center based on deep learning |
title_short |
Design and implementation of a smart Internet of Things chest pain center based on deep learning |
title_full |
Design and implementation of a smart Internet of Things chest pain center based on deep learning |
title_fullStr |
Design and implementation of a smart Internet of Things chest pain center based on deep learning |
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Design and implementation of a smart Internet of Things chest pain center based on deep learning |
title_sort |
design and implementation of a smart internet of things chest pain center based on deep learning |
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2024 |
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