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ECG CLASSIFICATION COMPARISON BETWEEN MF-DFA AND MF-DXA

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In this paper, automatic electrocardiogram (ECG) recognition and classification algorithms based on multifractal detrended fluctuation analysis (MF-DFA) and multifractal detrended cross-correlation analysis (MF-DXA) were studied. As human heart is a complex, nonlinear, chaotic system, using multifractal analysis to analyze chaotic systems is also a trend. We performed a comparison study of the multifractal nature of the healthy subjects and that of the cardiac dysfunctions ones. To analyze multifractal property quantitatively, the ranges of the Hurst exponent ([Formula: see text]) are computed by MF-DFA and MF-DXA. We found that for MF-DFA, the area of Hurst exponents for atrial premature beat (APB) people was narrower than normal sinus rhythm (NSR) subjects, and for MF-DXA, the difference of [Formula: see text] ([Formula: see text]) of NSR and APB subjects was larger than that of MF-DFA. We then regarded the Hurst exponents ([Formula: see text]) as the input vectors and took them into support vector machine (SVM) for classification. The results showed that [Formula: see text] obtained from MF-DXA led to a higher classification accuracy than that of MF-DFA. This is related to the widening of the difference in the values of Hurst exponents in MF-DFA and MF-DXA. The proposed MF-DFA-SVM and MF-DXA-SVM systems achieved classification accuracy of [Formula: see text] and [Formula: see text], achieved classification sensitivity of [Formula: see text] and [Formula: see text], achieved classification specificity of [Formula: see text] and [Formula: see text], respectively. In general, the Hurst exponents obtained from MF-DXA played an important role in classifying ECG of the healthy and that of the cardiac dysfunctions subjects. Moreover, MF-DXA was more accurate than MF-DFA in the classification of ECG studied in this paper. The research in automatic medical diagnosis and early warning of major diseases has very important practical value.
World Scientific Pub Co Pte Ltd
Title: ECG CLASSIFICATION COMPARISON BETWEEN MF-DFA AND MF-DXA
Description:
In this paper, automatic electrocardiogram (ECG) recognition and classification algorithms based on multifractal detrended fluctuation analysis (MF-DFA) and multifractal detrended cross-correlation analysis (MF-DXA) were studied.
As human heart is a complex, nonlinear, chaotic system, using multifractal analysis to analyze chaotic systems is also a trend.
We performed a comparison study of the multifractal nature of the healthy subjects and that of the cardiac dysfunctions ones.
To analyze multifractal property quantitatively, the ranges of the Hurst exponent ([Formula: see text]) are computed by MF-DFA and MF-DXA.
We found that for MF-DFA, the area of Hurst exponents for atrial premature beat (APB) people was narrower than normal sinus rhythm (NSR) subjects, and for MF-DXA, the difference of [Formula: see text] ([Formula: see text]) of NSR and APB subjects was larger than that of MF-DFA.
We then regarded the Hurst exponents ([Formula: see text]) as the input vectors and took them into support vector machine (SVM) for classification.
The results showed that [Formula: see text] obtained from MF-DXA led to a higher classification accuracy than that of MF-DFA.
This is related to the widening of the difference in the values of Hurst exponents in MF-DFA and MF-DXA.
The proposed MF-DFA-SVM and MF-DXA-SVM systems achieved classification accuracy of [Formula: see text] and [Formula: see text], achieved classification sensitivity of [Formula: see text] and [Formula: see text], achieved classification specificity of [Formula: see text] and [Formula: see text], respectively.
In general, the Hurst exponents obtained from MF-DXA played an important role in classifying ECG of the healthy and that of the cardiac dysfunctions subjects.
Moreover, MF-DXA was more accurate than MF-DFA in the classification of ECG studied in this paper.
The research in automatic medical diagnosis and early warning of major diseases has very important practical value.

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