List of Journals    /    Call For Papers    /    Subscriptions    /    Login
 
 
 
 
 SEARCH
By Author By Title
 
 
ABOUT CSC
 About CSC Journals
 CSC Journals Objectives
 List of Journals
 CALL FOR PAPERS
 Call For Papers CFP
 Special Issue CFP
AUTHOR GUIDELINES
 Submission Guidelines
 Peer Review Process
 Helpful Hints For Getting Published
 Plagiarism Policies
 Abstracting & Indexing
 Open Access Policy
 Submit Manuscript
 FOR REVIEWERS
 Reviewer Guidelines
 FOR EDITORIAL
 Editor Guidelines
 Join Us As Editor
 Launch Special Issue
 Suggest New Journal
 CSC LIBRARY
 Browse CSC Library
 Open Access Policy
  SERVICES
 Conference Partnership Program (CPP)
 Abstracting & Indexing
 SUBSCRIPTIONS
 Subscriptions
 Discounted Packages
 Archival Subscriptions
 How to Subscribe
 Librarians
 Subscriptions Agents
 Order Form
 DOWNLOADS
 
 
 
 
Telecardiology and Teletreatment System Design for Heart Failures Using Type-2 Fuzzy Clustering Neural Networks
Full text
 PDF(556.6KB)
Source 
International Journal of Artificial Intelligence and Expert Systems (IJAE)
Table of Contents
Download Complete Issue    PDF(487.48KB)
Volume:  1    Issue:  4
Pages:  75-122
Publication Date:   December 2010
ISSN (Online): 2180-124X
Pages 
100 - 110
Author(s)  
Rahime Ceylan - Turkey
Yüksel Özbay - Turkey
Bekir Karlik - Turkey
 
Published Date   
08-02-2011 
Publisher 
CSC Journals, Kuala Lumpur, Malaysia
ADDITIONAL INFORMATION
Keywords   Abstract   References   Cited by   Related Articles   Collaborative Colleague
 
KEYWORDS:   Telecardiology, type-2 fuzzy c-means clustering, ECG, neural network, diagnosis 
 
 
This Manuscript is indexed in the following databases/websites:-
1. Docstoc
2. Google Scholar
 
 
Proper diagnosis of heart failures is critical, since the appropriate treatments are strongly dependent upon the underlying cause. Furthermore, rapid diagnosis is also critical, since the effectiveness of some treatments depends upon rapid initiation. In this paper, a new web-based telecardiology system has been proposed for diagnosis, consultation, and treatment. The aim of this implemented telecardiology system is to help to practitioner doctor, if clinic findings of patient misgive heart failures. This model consists of three subsystems. The first subsystem divides into recording and preprocessing phase. Here, electrocardiography signal is recorded from emergency patient and this recorded signal is preprocessed for detection of RR interval. The second subsystem realizes classification of RR interval. In other words, this second subsystem is to diagnosis heart failures. In this study, a combined classification system has been designed using type-2 fuzzy c-means clustering (T2FCM) algorithm and neural networks. T2FCM was used to improve performance of neural networks which was obtained very high performance accuracy to classify RR intervals of ECG signals. This proposed automated telecardiology and diagnostic system assists to practitioner doctor to diagnosis heart failures easily. Training and testing data for this diagnostic system are included five ECG signal classes. The third subsystem is consultation and teletreatment between practitioner (or family) doctor and cardiologist worked in research hospital with prepared web page (www.telekardiyoloji.com). However, opportunity of signal’s evaluation is presented to practitioner and expert doctor with prepared interfaces. T2FCM is applied to the training data for the selection of best segments in the second subsystem. A new training set formed by these best segments was classified using the neural networks classifier which has backpropagation well-known algorithm and generalized delta rule learning. Recognition accuracy rate was found as 99% using proposed Type-2 Fuzzy Clustering Neural Networks (T2FCNN) method. 
 
 
 
1 Meau, Y.P., Ibrahim, F., Naroinasamy, S.A.L., Omar, R. (2006). Intelligent Classification of Electrocardiogram (ECG) Signal Using Extended Kalman Filter (EKF) Based Neuro Fuzzy System, Elsevier Science Computer Methods and Programs in Biomedicine, 82, 157-168.
2 Yu, S. N., Chou, K.T., (2006). Combining Independent Component Analysis and Backpropagation Neural Network for ECG Beat Classification, Proceedings of the 28th IEEE EMBS Annual International Conference, New York City, USA, Aug.30-Sept.3, 2006, 3090-3093.
3 Yu, S. N., Chou, K. T., Integration of Independent Component Analysis and Neural Networks for ECG Beat Classification, Elsevier Science Expert Systems with Applications, (Article in Press).
4 Yu, S. N., Chen, Y. H., (2009). Electrocardiogram Beat Classification Based on Wavelet Transformation and Probabilistic Neural Network, Elsevier Science Pattern Recognition Letters, 28, 1142-1150.
5 Osowski, S., Markiewicz, T., Hoai, L.T. Recognition and Classification System of Arrhythmia Using Assemble of Neural Networks, Elsevier Science Measurement, (Article in Press).
6 Hosseini, H.G., Luo, D., Reynolds, K. J. (2006). The Comparison of Different Feed-forward Neural Network Architectures for ECG Signal Diagnosis, Medical Engineering & Physics, 28, 372-378.
7 Übeyli, E. D. (2008). Usage of Eigenvector Methods in Implementation of Automated Diagnostic Systems for ECG Beats, Digital Signal Processing, 18, 33-48.
8 Özbay, Y., Ceylan, R., and Karl?k, B., (2006). A Fuzzy Clustering Neural Network Architecture for Classification of ECG Arrhythmias, Elsevier Science Computers in Biology and Medicine, 36, 376-388.
9 Ceylan, R. and Özbay, Y., (2007). Comparison of FCM, PCA and WT Techniques for Classification ECG Arrhythmias Using Artificial Neural Network, Elsevier Science Expert Systems with Applications, 33, 286-295.
10 Jang, J.S.R., Sun, C.T, and Mizutani, E. Neuro-Fuzzy and Soft Computing, Prentice Hall, USA, 1997.
11 Liao, T. W., Celmins A.K., and Hammell II R. J., (2003). A Fuzzy C-means Variant for the Generation of Fuzzy Term Sets, Elsevier Science Fuzzy Sets and Systems, 135, 241-257.
12 Fan J., Zhen W. and Xie W., (2003). Supervised Fuzzy C-means Clustering Algorithm, Elsevier Science Pattern Recognition Letters, 24, 1607-1612.
13 Li, R., Mukaidono, M., Turksen, I. B. (2002). A Fuzzy Neural Network for Pattern Classification and Feature Selection, Elsevier Science Fuzzy Sets and Systems, 130, 101-108.
14 Castellano, G. and Fanelli, A. M, (2000). A Self-organizing Neural Fuzzy Inference Network, Proc. of IEEE International Joint Conference on Neural Networks, 5, 14-19, Italy.
15 Castellano, G. and Fanelli, A.M, (2000). Fuzzy Inference and Rule Extraction Using a Neural Network, Neural Network World Journal, 3, 361-371.
16 Dazzi, D., Taddei, F., Gavarini, A., Uggeri, E., Negra, R., and Pezzarossa, A., (2001). The Control of Blood Glucose in the Critical Diabetic Patient: A Neuro-Fuzzy Method, Elsevier Science Journal of Diabetes and Its Complications, 15, 80-87.
17 De, R.K., Basak, J., Pal, S.K., (2002). Unsupervised Feature Extraction Using Neuro-Fuzzy Approach, Elsevier Science Fuzzy Sets and Systems, 126, 277-291.
18 Meesad, P. and Yen, G.G., (2000). Pattern Classification by a Neuro Fuzzy Network Application to Vibration Monitoring, Elsevier Science ISA Trans., 39, 293-308.
19 Zarandi, M.H.F., Türk?en, I.B., Kasbi, O.T., (2007). Type-2 Fuzzy Modeling for Desulphurization of Steel Process, Elsevier Science Expert Systems with Applications, 32, (1), 157-171.
20 Mendel, J. M., John, R. I. B., (2002). Type-2 Fuzzy Sets Made Simple, IEEE Transactions on Fuzzy Systems, 10 (2), 117-127.
21 Mendel, J., (2000). Uncertainty, Fuzzy Logic and Signal Processing, Elsevier Science Signal Processing, 80, 913-933.
22 Karnik, N. N., Mendel, J. M., (2001). Centroid of a Type-2 Fuzzy Set, Elsevier Science Information Sciences, 132,195-220.
23 Rhee, F.C.-H., (2007). Uncertain Fuzzy Clustering: Insights and Recommendations, IEEE Computational Intelligence Magazine, 2 (1), 44-56.
24 Haykin S., Neural Networks: A Comprehensive Foundation. New York: Macmillan, 1994.
25 Physiobank Archieve Index, MIT–BIH Arrhythmia Database: http://www.physionet.org/physiobank/database (access time: 15.01.2007)
26 G.M. Friesen, T.C. Jannett, M.A. Jadallah, S.L. Yates, S.R. Quint, H.T. Nagle, “A comparison of the noise sensitivity of nine QRS detection algorithms,” IEEE Transactions on Biomedical Engineering, vol.37, no.1, 85-98, 1990.
27 Ceylan, R., Özbay, Y., Karl?k, B., (2009). A Novel Approach for Classification of ECG Arrhythmias: Type-2 Fuzzy Clustering Neural Network, Expert Systems with Application, 36, 6721-6726.
28 Ceylan, R., A Tele-Cardiology System Design Using Feature Extraction Techniques and Artificial Neural Networks, PhD Thesis, Institute of Natural and Applied Science, Selcuk University, 2009.
 
 
 
 
 
 
 
 
Rahime Ceylan : Colleagues
Yüksel Özbay : Colleagues
Bekir Karlik : Colleagues  
 
 
 
  Untitled Document
 
Copyrights (c) 2012 Computer Science Journals. All rights reserved.
Best viewed at 1152 x 864 resolution. Microsoft Internet Explorer.
 
  
 
Copyrights & Usage: Articles published by CSC Journals are Open Access. Permission to copy and distribute any other content, images, animation and other parts of this website is prohibited. CSC Journals has the rights to take action against individual/group if they are found victim of copying these parts of the website.