sis 23(4): e19

Research Article

Time Series Classification for Portable Medical Devices

Download89 downloads
  • @ARTICLE{10.4108/eetsis.v10i3.3219,
        author={Zhaoyi Zhong and Le Sun and Sudha Subramani and Dandan Peng and Yilin Wang},
        title={Time Series Classification for Portable Medical Devices},
        journal={EAI Endorsed Transactions on Scalable Information Systems},
        volume={10},
        number={4},
        publisher={EAI},
        journal_a={SIS},
        year={2023},
        month={5},
        keywords={time series classification, autoencoder, attention mechanism, Medical mobile information systems},
        doi={10.4108/eetsis.v10i3.3219}
    }
    
  • Zhaoyi Zhong
    Le Sun
    Sudha Subramani
    Dandan Peng
    Yilin Wang
    Year: 2023
    Time Series Classification for Portable Medical Devices
    SIS
    EAI
    DOI: 10.4108/eetsis.v10i3.3219
Zhaoyi Zhong1,*, Le Sun1, Sudha Subramani2, Dandan Peng3, Yilin Wang1
  • 1: Nanjing University of Information Science and Technology
  • 2: Victoria University
  • 3: Guangzhou University
*Contact email: ZhaoyiZhong01@outlook.com

Abstract

INTRODUCTION: With the continuous progress of the medical Internet of Things, intelligent medical wearable devices are also gradually mature. Among them, medical wearable devices for arrhythmia detection have broad application prospects. Arrhythmia is a common cardiovascular disease. Arrhythmia causes millions of deaths every year and is one of the most noteworthy diseases. Medical mobile information systems (MMIS) provide many ECG signals, which can be used to train deep models to detect arrhythmia automatically. OBJECTIVES: Using deep models to detect arrhythmia is a research hot spot. However, the current algorithms for arrhythmia detection lack of attention to the unsupervised depth model. And they usually build a large comprehensive model for all users for arrhythmia detection, which has low flexibility and cannot extract personalized features from users. Therefore, this paper proposes a personalized arrhythmia detection system based on attention mechanism called personAD. METHODS: The personAD contains four modules: (1) Preprocessing module; (2) Training module; (3) Arrhythmia detection module and (4) User registration module. The personAD trains a separate autoencoder for each user to detect personalized arrhythmia. Using autoencoder to detect arrhythmia can avoid the imbalance of training data. The autoencoder combines a convolutional network and two attention mechanisms. RESULTS: Based on the results on MIT-BIH Arrhythmia Database, we can find that our arrhythmia detection system achieve 98.03%  and 99.32%  respectively. CONCLUSION: The personAD can effectively detect arrhythmia in ECG signals. The personAD has higher flexibility, and can easily modify the autoencoders for detecting arrhythmia for users.