Fusion: Practice and Applications

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Volume 13 , Issue 2 , PP: 22-33, 2023 | Cite this article as | XML | Html | PDF | Full Length Article

Enhancement CNN based on LSTM for vital sign classification

Mina H. Madhi 1 * , Abbas M. Al-Bakry 2 , Alaa Kadhim Farhan 3 , El-Sayed M. El-kenawy 4

  • 1 Information Institute Postgraduate Student, Iraqi Commission for Computers and Informatics, Baghdad, Iraq - (phd202010552@iips.icci.edu.iq)
  • 2 University of Information Technology and Communication, Baghdad, Iraq - (abbasm.albakry@uoitc.edu.iq)
  • 3 University of Technology, Computer Sciences, Baghdad, Iraq - (110030@uotechnology.edu.iq)
  • 4 Department of Communications and Electronics, Delta Higher Institute of Engineering and Technology, Mansoura 35111, Egypt - (skenawy@ieee.org)
  • Doi: https://doi.org/10.54216/FPA.130202

    Received: April 05, 2023 Revised: July 07, 2023 Accepted: September 09, 2023
    Abstract

    Monitoring vital signs is essential for tracking patient health and detecting changes in their condition. However, in aging cultures with overburdened healthcare staff, accurately and efficiently monitoring vital signs poses a challenge. To address this issue, an autonomous system for vital sign control is proposed, offering improved accuracy, real-time monitoring, alert systems, remote monitoring, and reduced staff labor costs. This paper presents a deep learning architecture using a publicly accessible dataset of 25,494 patients and five numerical characteristics to classify vital signs. A CNN-LSTM model is introduced, outperforming a traditional CNN model in terms of performance, parameter efficiency, and training time. The CNN-LSTM model effectively captures both spatial and temporal features from the input data, resulting in superior representation and improved accuracy compared to the CNN model, which only extracts spatial data. The suggested model achieved a remarkable accuracy of 98%, surpassing previous models. The findings demonstrate the potential of the CNN-LSTM model for early identification of medical issues, enabling prompt actions and enhanced patient outcomes. Overall, this research highlights the significance of implementing an autonomous system for vital sign control in healthcare organizations, offering substantial benefits in patient care and healthcare management.

    Keywords :

    Vital Signs , Healthcare , deep learning , CNN , LSTM

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    Cite This Article As :
    H., Mina. , M., Abbas. , Kadhim, Alaa. , M., El-Sayed. Enhancement CNN based on LSTM for vital sign classification. Fusion: Practice and Applications, vol. , no. , 2023, pp. 22-33. DOI: https://doi.org/10.54216/FPA.130202
    H., M. M., A. Kadhim, A. M., E. (2023). Enhancement CNN based on LSTM for vital sign classification. Fusion: Practice and Applications, (), 22-33. DOI: https://doi.org/10.54216/FPA.130202
    H., Mina. M., Abbas. Kadhim, Alaa. M., El-Sayed. Enhancement CNN based on LSTM for vital sign classification. Fusion: Practice and Applications , no. (2023): 22-33. DOI: https://doi.org/10.54216/FPA.130202
    H., M. , M., A. , Kadhim, A. , M., E. (2023) . Enhancement CNN based on LSTM for vital sign classification. Fusion: Practice and Applications , () , 22-33 . DOI: https://doi.org/10.54216/FPA.130202
    H. M. , M. A. , Kadhim A. , M. E. [2023]. Enhancement CNN based on LSTM for vital sign classification. Fusion: Practice and Applications. (): 22-33. DOI: https://doi.org/10.54216/FPA.130202
    H., M. M., A. Kadhim, A. M., E. "Enhancement CNN based on LSTM for vital sign classification," Fusion: Practice and Applications, vol. , no. , pp. 22-33, 2023. DOI: https://doi.org/10.54216/FPA.130202