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http://dx.doi.org/10.5392/JKCA.2011.11.3.271

Comparison of HRV Time and Frequency Domain Features for Myocardial Ischemia Detection  

Tian, Xue-Wei (경원대학교 IT대학)
Zhang, Zhen-Xing (경원대학교 IT대학)
Lee, Sang-Hong (경원대학교 IT대학)
Lim, Joon-S. (경원대학교 IT대학)
Publication Information
Abstract
Heart Rate Variability (HRV) analysis is a convenient tool to assess Myocardial Ischemia (MI). The analysis methods of HRV can be divided into time domain and frequency domain analysis. This paper uses wavelet transform as frequency domain analysis in contrast to time domain analysis in short term HRV analysis. ST-T and normal episodes are collected from the European ST-T database and the MIT-BIH Normal Sinus Rhythm database, respectively. An episode can be divided into several segments, each of which is formed by 32 successive RR intervals. Eighteen HRV features are extracted from each segment by the time and frequency domain analysis. To diagnose MI, the Neural Network with Weighted Fuzzy Membership functions (NEWFM) is used with the extracted 18 features. The results show that the average accuracy from time and frequency domain features is 75.29% and 80.93%, respectively.
Keywords
Heart Rate Variability(HRV); Time Domain; Frequency Domain; Short Term HRV Analysis; Myocardial Ischemia(MI);
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