학술논문

Distinguishing normal and abnormal heart rate variability using graphical and non-linear analyses
Document Type
Conference
Source
Computers in Cardiology, 2004 Computers in Cardiology Computers in Cardiology, 2004. :205-208 2004
Subject
Bioengineering
Computing and Processing
Signal Processing and Analysis
Heart rate variability
Frequency domain analysis
Fractals
Cardiology
Neural networks
Heart rate
Sun
Doped fiber amplifiers
Risk analysis
Rhythm
Language
Abstract
Abnormal HRV could confound risk stratification. Method: Hourly PoincarP and FFTplots examined in 270 rapes from the Cardiovascular Health Study. Afrer 8 years, 63 subjects had died. Hourly short and longer-term oletrended fractal scaling exponent and interbeat correlations were calculated. Hourly HRV was scored as nom1 (a), borderline (0.5) or abnormal (1) from plot appearance and HRV values. Scores were summed by subject and normalized to create nn abnormalig score (ABN,O- 100%). Cox regression determined the relationship of ABN and mortality. Results: Increased ABN was associated with mortality, p=O.O0.5. After adjustment for age (p=O.OOI) and gender (p=O.OOS), ABN remained associated with mortality (p=O.OIS). When ABN was dichotomized at 57%. HR and SDNN were not diflerent, but higher ABN (N=67) had significantly increased short and intermediate-term XRV and mortaliry. Conclusion: Even with a relatively crude guant$cation method, abnormal rhythms were associated with both mortality and increased HRV.