Literature DB >> 24239968

Detection of life-threatening arrhythmias using feature selection and support vector machines.

Felipe Alonso-Atienza, Eduardo Morgado, Lorena Fernández-Martínez, Arcadi García-Alberola, José Luis Rojo-Álvarez.   

Abstract

Early detection of ventricular fibrillation (VF) and rapid ventricular tachycardia (VT) is crucial for the success of the defibrillation therapy. A wide variety of detection algorithms have been proposed based on temporal, spectral, or complexity parameters extracted from the ECG. However, these algorithms are mostly constructed by considering each parameter individually. In this study, we present a novel life-threatening arrhythmias detection algorithm that combines a number of previously proposed ECG parameters by using support vector machines classifiers. A total of 13 parameters were computed accounting for temporal (morphological), spectral, and complexity features of the ECG signal. A filter-type feature selection (FS) procedure was proposed to analyze the relevance of the computed parameters and how they affect the detection performance. The proposed methodology was evaluated in two different binary detection scenarios: shockable (FV plus VT) versus nonshockable arrhythmias, and VF versus nonVF rhythms, using the information contained in the medical imaging technology database, the Creighton University ventricular tachycardia database, and the ventricular arrhythmia database. sensitivity (SE) and specificity (SP) analysis on the out of sample test data showed values of SE=95%, SP=99%, and SE=92% , SP=97% in the case of shockable and VF scenarios, respectively. Our algorithm was benchmarked against individual detection schemes, significantly improving their performance. Our results demonstrate that the combination of ECG parameters using statistical learning algorithms improves the efficiency for the detection of life-threatening arrhythmias.

Entities:  

Mesh:

Year:  2013        PMID: 24239968     DOI: 10.1109/TBME.2013.2290800

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  24 in total

1.  Classification of ECG beats using deep belief network and active learning.

Authors:  Sayantan G; Kien P T; Kadambari K V
Journal:  Med Biol Eng Comput       Date:  2018-04-12       Impact factor: 2.602

2.  An IoT-cloud Based Wearable ECG Monitoring System for Smart Healthcare.

Authors:  Zhe Yang; Qihao Zhou; Lei Lei; Kan Zheng; Wei Xiang
Journal:  J Med Syst       Date:  2016-10-29       Impact factor: 4.460

3.  Efficient and robust ventricular tachycardia and fibrillation detection method for wearable cardiac health monitoring devices.

Authors:  Eedara Prabhakararao; M Sabarimalai Manikandan
Journal:  Healthc Technol Lett       Date:  2016-07-29

4.  Detection of ventricular arrhythmia using hybrid time-frequency-based features and deep neural network.

Authors:  Sukanta Sabut; Om Pandey; B S P Mishra; Monalisa Mohanty
Journal:  Phys Eng Sci Med       Date:  2021-01-08

5.  An Efficient Cardiac Arrhythmia Onset Detection Technique Using a Novel Feature Rank Score Algorithm.

Authors:  Hemalatha Karnan; N Sivakumaran; Rajajeyakumar Manivel
Journal:  J Med Syst       Date:  2019-05-06       Impact factor: 4.460

6.  Detection of Shockable Ventricular Arrhythmia using Variational Mode Decomposition.

Authors:  R K Tripathy; L N Sharma; S Dandapat
Journal:  J Med Syst       Date:  2016-01-21       Impact factor: 4.460

7.  An Innovative Machine Learning Approach for Classifying ECG Signals in Healthcare Devices.

Authors:  Kishore B; A Nanda Gopal Reddy; Anila Kumar Chillara; Wesam Atef Hatamleh; Kamel Dine Haouam; Rohit Verma; B Lakshmi Dhevi; Henry Kwame Atiglah
Journal:  J Healthc Eng       Date:  2022-04-13       Impact factor: 3.822

8.  LiteNet: Lightweight Neural Network for Detecting Arrhythmias at Resource-Constrained Mobile Devices.

Authors:  Ziyang He; Xiaoqing Zhang; Yangjie Cao; Zhi Liu; Bo Zhang; Xiaoyan Wang
Journal:  Sensors (Basel)       Date:  2018-04-17       Impact factor: 3.576

9.  Machine Learning Techniques for the Detection of Shockable Rhythms in Automated External Defibrillators.

Authors:  Carlos Figuera; Unai Irusta; Eduardo Morgado; Elisabete Aramendi; Unai Ayala; Lars Wik; Jo Kramer-Johansen; Trygve Eftestøl; Felipe Alonso-Atienza
Journal:  PLoS One       Date:  2016-07-21       Impact factor: 3.240

10.  Combining Low-dimensional Wavelet Features and Support Vector Machine for Arrhythmia Beat Classification.

Authors:  Qin Qin; Jianqing Li; Li Zhang; Yinggao Yue; Chengyu Liu
Journal:  Sci Rep       Date:  2017-07-20       Impact factor: 4.379

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.