Higher order spectral analysis of ECG signals
Yamini Kotriwar, Sneha Kachhara, K. P. Harikrishnan, G. Ambika

TL;DR
This study applies higher order spectral analysis to short-duration ECG signals to differentiate healthy hearts from various disease states by examining nonlinear phase couplings and spectral power distributions.
Contribution
It introduces the use of bispectral analysis on 60-second ECG data to identify nonlinear dynamics and phase coupling differences between healthy and diseased hearts.
Findings
Healthy ECGs show strong quadratic phase coupling at pulse frequency.
Disease ECGs exhibit suppressed phase coupling and higher frequency power distribution.
Bicoherence indices can distinguish between normal and abnormal cardiac conditions.
Abstract
Higher Order Spectral (HOS) analysis is often applied effectively to analyze many bio-medical signals to detect nonlinear and non-Gaussian processes. One of the most basic HOS methods is the bispectral estimation, which extracts the degree of quadratic phase coupling between individual frequency components of a nonlinear signal. Most of the studies in this direction as applied to ECG signals are on the conventional, long duration (up to 24 hours) Heart Rate Variability (HRV) data. We report results of our studies on short duration ECG data of 60 seconds using power spectral and bispectral parameters. We analyze 60 healthy cases and 60 cases of patients diagnosed with four different heart diseases, Bundle Branch Block, Cardiomyopathy, Dysrhythmia and Myocardial Infarction. From the power spectra of these data sets we observe that the pulse frequency around 1 Hz has maximum power for all…
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Taxonomy
TopicsECG Monitoring and Analysis · Heart Rate Variability and Autonomic Control · Non-Invasive Vital Sign Monitoring
