Fast and Resource Efficient Atrial Fibrillation Detection Framework for Long Term Health Monitoring Devices

被引:3
作者
Phukan, Nabasmita [1 ]
Manikandan, M. Sabarimalai [2 ]
Pachori, Ram Bilas [1 ]
机构
[1] Indian Inst Technol Indore, Dept Elect Engn, Indore 453552, India
[2] Indian Inst Technol Palakkad, Dept Elect Engn, Palakkad 678623, India
关键词
Feature extraction; Electrocardiography; Rail to rail inputs; Monitoring; Databases; Sensors; Computational modeling; Sensor signal processing; atrial fibrillation (AF); sensor-equipped wearables; Shannon entropy (SH); symbolic dynamics;
D O I
10.1109/LSENS.2024.3367724
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
This letter presents a novel single feature-based atrial fibrillation (AF) detection framework for addressing the critical challenge of resource constraints of affordable wearable health monitoring devices equipped with sensors. The proposed method consists of simple R peak detection for extracting R-R interval, calculation of Shannon entropy of word sequence of symbolic dynamics of heart rate sequence followed by AF/non-AF classification using six classifiers. On four standard databases, with 10 and 30 s electrocardiogram (ECG) segments, the sensitivity (SE) and specificity (SP) of the support vector machine is 100% and 99.92%-100%, respectively. For decision tree, random forest, multilayer perception, naive Bayes, and light gradient boosting algorithms, the SE is 100%, and SP ranges between 99.96% and 100% for 10 and 30 s ECG segments. For further analysis, the datasets with best performance are also tested with approximate entropy and k-nearest neighbor. The best model is decision tree with the lowest model size of 1.30-1.33 kB and processing time (PT) of 2.16 and 0.97 mu s for 10 and 30 s segments, respectively. The realtime implementation on the Raspberry Pi computing platform demonstrates that all methods have small model size with memory space of 1.30-194 KB and PT of 4.82-56.7 mu s, outperforming computationally expensive deep learning-based AF detection methods. The significance and importance of the framework lie in its ability to provide accurate AF detection with low PT and memory space using a single feature, making it suitable for resource-constrained long-term health monitoring devices.
引用
收藏
页码:1 / 4
页数:4
相关论文
共 21 条
  • [1] Automatic detection of atrial fibrillation using stationary wavelet transform and support vector machine
    Asgari, Shadnaz
    Mehrnia, Alireza
    Moussavi, Maryam
    [J]. COMPUTERS IN BIOLOGY AND MEDICINE, 2015, 60 : 132 - 142
  • [2] AF Classification from a Short Single Lead ECG Recording: the PhysioNet/Computing in Cardiology Challenge 2017
    Clifford, Gari D.
    Liu, Chengyu
    Moody, Benjamin
    Lehman, Li-Wei H.
    Silva, Ikaro
    Li, Qiao
    Johnson, A. E.
    Mark, Roger G.
    [J]. 2017 COMPUTING IN CARDIOLOGY (CINC), 2017, 44
  • [3] A Novel Deep Arrhythmia-Diagnosis Network for Atrial Fibrillation Classification Using Electrocardiogram Signals
    Dang, Hao
    Sun, Muyi
    Zhang, Guanhong
    Qi, Xingqun
    Zhou, Xiaoguang
    Chang, Qing
    [J]. IEEE ACCESS, 2019, 7 : 75577 - 75590
  • [4] Automatic Real Time Detection of Atrial Fibrillation
    Dash, S.
    Chon, K. H.
    Lu, S.
    Raeder, E. A.
    [J]. ANNALS OF BIOMEDICAL ENGINEERING, 2009, 37 (09) : 1701 - 1709
  • [5] Real-Time Personalized Atrial Fibrillation Prediction on Multi-Core Wearable Sensors
    De Giovanni, Elisabetta
    Valdes, Adriana Arza
    Peon-Quiros, Miguel
    Aminifar, Amir
    Atienza, David
    [J]. IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTING, 2021, 9 (04) : 1654 - 1666
  • [6] Information Theory and Atrial Fibrillation (AF): A Review
    Dharmaprani, Dhani
    Dykes, Lukah
    McGavigan, Andrew D.
    Kuklik, Pawel
    Pope, Kenneth
    Ganesan, Anand N.
    [J]. FRONTIERS IN PHYSIOLOGY, 2018, 9
  • [7] PhysioBank, PhysioToolkit, and PhysioNet - Components of a new research resource for complex physiologic signals
    Goldberger, AL
    Amaral, LAN
    Glass, L
    Hausdorff, JM
    Ivanov, PC
    Mark, RG
    Mietus, JE
    Moody, GB
    Peng, CK
    Stanley, HE
    [J]. CIRCULATION, 2000, 101 (23) : E215 - E220
  • [8] Prevalence, incidence, prognosis, and predisposing conditions for atrial fibrillation: Population-based estimates
    Kannel, WB
    Wolf, PA
    Benjamin, EJ
    Levy, D
    [J]. AMERICAN JOURNAL OF CARDIOLOGY, 1998, 82 (8A) : 2N - 8N
  • [9] An Open Access Database for Evaluating the Algorithms of Electrocardiogram Rhythm and Morphology Abnormality Detection
    Liu, Feifei
    Liu, Chengyu
    Zhao, Lina
    Zhang, Xiangyu
    Wu, Xiaoling
    Xu, Xiaoyan
    Liu, Yulin
    Ma, Caiyun
    Wei, Shoushui
    He, Zhiqiang
    Li, Jianqing
    Kwee, Eddie Ng Yin
    [J]. JOURNAL OF MEDICAL IMAGING AND HEALTH INFORMATICS, 2018, 8 (07) : 1368 - 1373
  • [10] MGNN: A multiscale grouped convolutional neural network for efficient atrial fibrillation detection
    Liu, Sen
    Wang, Aiguo
    Deng, Xintao
    Yang, Cuiwei
    [J]. COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 148