Systematic Analysis and Classification of Cardiac Rate Variability using Artificial Neural Network

Abstract

Electrocardiogram (ECG) is acquisition of electrical activity signals in cardiology. It contains important information about the condition and diseases of heart. An ECG wave, pattern, size, shape and the time interval between different peaks of P-QRS-T wave provide useful information about the diseases which afflict heart. Heart rate signals vary and this variation contains important indicators of cardiac diseases. To assess autonomic nervous system, heart rate variability is popular and non-invasive tool. These indicators contained in ECG wave appear all the day or occur randomly in the day. So, computer based information is much useful over day long interval to diagnose heart disease. Thus, this paper deals with classification of heart diseases on the basis of heart rate variability using artificial neural network. Feed forward neural network is considered to be almost correct 85% of the test results.

Authors and Affiliations

Azizullah Kakar, Naveed Sheikh, Bilal Ahmed, Saleem Iqbal

Keywords

Related Articles

Comparative Study for Software Project Management Approaches and Change Management in the Project Monitoring & Controlling

A software project encounters many changes during the software development life cycle. The key challenge is to control these changes and manage their impact on the project plan, budget, and implementation schedules. A we...

Advanced Metaheuristics-based Tuning of Effective Design Parameters for Model Predictive Control Approach

This paper presents a systematic tuning approach for Model Predictive Control (MPC) parameters’ using an original LabVIEW-implementation of advanced metaheuristics algorithms. Perturbed Particle Swarm Optimization (pPSO)...

Weld Defect Categorization from Welding Current using Principle Component Analysis

Real time welding quality control still remains a challenging task due to the dynamic characteristic of welding. Welding current of gas metal arc welding possess valuable information that can be analyzed for weld quality...

DETECTION OF RELIABLE SOFTWARE USING SPRT 

In Classical Hypothesis testing volumes of data is to be collected and then the conclusions are drawn which may take more time. But, Sequential Analysis of statistical science could be adopted in order to decide upon the...

Sentiment Analysis using SVM: A Systematic Literature Review

The world has revolutionized and phased into a new era, an era which upholds the true essence of technology and digitalization. As the market has evolved at a staggering scale, it is must to exploit and inherit the advan...

Download PDF file
  • EP ID EP417801
  • DOI 10.14569/IJACSA.2018.0911106
  • Views 70
  • Downloads 0

How To Cite

Azizullah Kakar, Naveed Sheikh, Bilal Ahmed, Saleem Iqbal (2018). Systematic Analysis and Classification of Cardiac Rate Variability using Artificial Neural Network. International Journal of Advanced Computer Science & Applications, 9(11), 746-750. https://europub.co.uk/articles/-A-417801