Multi-lead ECG signal analysis using RBFNN-MSO algorithm

被引:0
|
作者
Menta Srinivasulu
机构
[1] Sri Vasavi Institute of Engineering & Technology,
关键词
Radial Basis Function Neural Network; Particle Swarm Optimization; Multi Swarm Optimization; Support Vector Machine;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we present a method for electrocardiogram beat based on multi swarm optimization and radial basis function neural network. ECG is a non-surgical method for measuring and recording the electrical activity of the heart and on many occasions, an experienced cardiologist may not be available on the patient’s site. Therefore, a type of automated ECG analysis is required for the patient to take the electrocardiogram by a general practitioner or paramedical team attending the patient’s location. There is a need for automated ECG analysis. Finally, this paper gives the best analysis methodology for the automated analysis of multi-channel ECG signals. Diagnosis may be affected by the presence of artifacts and noise in multi-channel ECG signals. Some researchers calculated dynamic cutoff frequency parameter from noisy ECG signals to remove noise using the neural network method of Radial Basis function with particle swarm improvement method (RBFNN-PSO). But PSO only has Swarm and it takes a lot of time to give a response. To overcome these limitations, an improved version of the RBFNN-PSO algorithm called Radial Basis Function Neural Network with Multi Swarm Optimization (RBFNN-MSO) has been proposed. Finally, the cutoff frequency parameter is determined by the RBFNN-MSO methodology that is applied to digital low-frequency filters for impulse response (FIR). The next step after removing noise from multi-channel ECG signals is the feature extraction and reduction process. 24 features of the patient’s multi-channel ECG signals are extracted. The next part of the research is divided into two steps. The first step is whether or not the patient’s ECG signals are affected. The vector machine is supported with particle swarm improvement (SVM-PSO) and another way is to support the vector machine with multi swarm improvement (SVM-MSO) to detect ECG signals of the affected patient or not. Finally, SVM-MSO offers greater accuracy compared to SVM-PSO. When compared to all other existing architecture results, they used the rating with 86% of all the test accuracy. But in this paper, our proposed work has 90% overall in different situations. In another point of view also,our proposed work has proven that average accuracy is over 85% even then train data set is small.
引用
收藏
页码:341 / 350
页数:9
相关论文
共 50 条
  • [21] DEVELOPMENT OF A REFERENCE LIBRARY FOR MULTI-LEAD ECG MEASUREMENT PROGRAMS
    WILLEMS, JL
    ARNAUD, P
    VANBEMMEL, JH
    BOURDILLON, PJ
    DEGANI, R
    DENIS, B
    GRAHAM, I
    HARMS, FMA
    MACFARLANE, PW
    MAZZOCCA, G
    MEYER, J
    ZYWIETZ, C
    JOURNAL OF ELECTROCARDIOLOGY, 1987, 20 : 56 - 61
  • [22] Neural network classifier based on the features of multi-lead ECG
    Mozhiwen
    Jun, F
    Qiu, YZ
    Lan, S
    ADVANCES IN NATURAL COMPUTATION, PT 1, PROCEEDINGS, 2005, 3610 : 33 - 43
  • [23] PCA and ICA applied to Noise Reduction in Multi-lead ECG
    Romero, I.
    2011 COMPUTING IN CARDIOLOGY, 2011, 38 : 613 - 616
  • [24] Can a multi-lead ECG be reconstructed using a single-lead handheld ECG recorder, and what is its diagnostic accuracy?
    Nigolian, A.
    Dayal, N.
    Nigolian, H.
    Burri, H.
    EUROPEAN HEART JOURNAL, 2017, 38 : 435 - 435
  • [25] A Dynamic Approach for Compressed Sensing of Multi-lead ECG Signals
    Iadarola, Grazia
    Daponte, Pasquale
    Picariello, Francesco
    De Vito, Luca
    2020 IEEE INTERNATIONAL SYMPOSIUM ON MEDICAL MEASUREMENTS AND APPLICATIONS (MEMEA), 2020,
  • [26] An undershirt for monitoring of multi-lead ECG and respiration wave signals
    De Vito, Luca
    Picariello, Enrico
    Picariello, Francesco
    Tudosa, Ioan
    Loprevite, Luca
    Avicolli, Davide
    Laudato, Gennaro
    Oliveto, Rocco
    2021 IEEE INTERNATIONAL WORKSHOP ON METROLOGY FOR INDUSTRY 4.0 & IOT (IEEE METROIND4.0 & IOT), 2021, : 550 - 555
  • [27] Accurate QRS complex detection in 12-lead ECG signals using multi-lead fusion
    Chauhan, Chhaviraj
    Agrawal, Monika
    Sabherwal, Pooja
    MEASUREMENT, 2023, 223
  • [28] Wavelet denoising for multi-lead high resolution ECG signals
    Kania, M.
    Fereniec, M.
    Maniewski, R.
    MEASUREMENT 2007: 6TH INTERNATIONAL CONFERENCE ON MEASUREMENT, PROCEEDINGS, 2007, : 400 - +
  • [29] Wearable Multi-lead ECG Recorder with Dry Metal Electrodes
    Hsu, Terng-Ren
    Hsu, Terng-Yin
    Yang, Shang-Yi
    Huang, Wei-Hsin
    Ou, Zong-Cheng
    Fan, Ching-Chih
    2016 11TH INTERNATIONAL MICROSYSTEMS, PACKAGING, ASSEMBLY AND CIRCUITS TECHNOLOGY CONFERENCE (IMPACT-IAAC 2016), 2016, : 73 - 76
  • [30] Comparison of single-lead and multi-lead ECG for QT variability assessment using autoregressive modelling
    El-Hamad, Fatima
    Baumert, Mathias
    PHYSIOLOGICAL MEASUREMENT, 2022, 43 (10)