Automatic heart disease detection by classification of ventricular arrhythmias on ecg usingmachine learning

Khalid Mahmood Aamir, Muhammad Ramzan, Saima Skinadar, Hikmat Ullah Khan, Usman Tariq, Hyunsoo Lee, Yunyoung Nam, Muhammad Attique Khan

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

This paper focuses on detecting diseased signals and arrhythmias classification into two classes: Ventricular tachycardia and premature ventricular contraction. The sole purpose of the signal detection is used to determine if a signal has been collected from a healthy or sick person. The proposed research approach presents amathematicalmodel for the signal detector based on calculating the instantaneous frequency (IF). Once a signal taken from a patient is detected, then the classifier takes that signal as input and classifies the target disease by predicting the class label. While applying the classifier, templates are designed separately for ventricular tachycardia and premature ventricular contraction. Similarities of a given signal with both the templates are computed in the spectral domain. The empirical analysis reveals precisions for the detector and the applied classifier are 100% and 77.27%, respectively. Moreover, instantaneous frequency analysis provides a benchmark that IF of a normal signal ranges from 0.8 to 1.1 Hz whereas IF range for ventricular tachycardia and premature ventricular contraction is 0.08-0.6 Hz. This indicates a serious loss of high-frequency contents in the spectrum, implying that the heart's overall activity is slowed down. This study may help medical practitioners in detecting the heart disease type based on signal analysis.

Original languageEnglish
Pages (from-to)17-33
Number of pages17
JournalComputers, Materials and Continua
Volume71
Issue number1
DOIs
StatePublished - 2022

Keywords

  • Detection
  • Heart disease
  • Machine learning
  • Preprocessing
  • Signals

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