Heart disease diagnostic graphical user interface using fractal dimension

J. J. George, Eman Mohammed Saeed Mohammed
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引用次数: 4

Abstract

Heart diseases are among the main causes of death in the world. Therefore, it is necessary to have proper methods to determine the cardiac condition of the patient. ECG signals of the heart being a self-similar object; can well be considered for fractal analysis. In this paper the Fractal Dimension method was used to distinguish and analyze three specific heart diseases namely Premature Atrial Contraction (PAC), Premature Ventricular Contraction (PVC), and Atrial Fibrillation from the normal ECG signal. The ECG signals used were taken from three databases, the MIT-BIH Arrhythmia Database, the MIT-BIH Normal Sinus Rhythm Database, and the Intracardiac Atrial Fibrillation Database. Rescaled range method was used to determine the specific range of fractal dimension for each disease. The obtained range of fractal dimension for a healthy person was 1.73-1.81, for PVC patients was 1.34-1.44, for PAC patients was 1.49-1.69 and for Atrial Fibrillation patients was 1.11-1.30. A Graphical User Interface (GUI) was designed using MATLAB program to calculate the Fractal Dimension, to distinguish between the ECG signals of a healthy person and patients with the three specific heart diseases from the raw ECG data. The results showed that the methodological analysis does provide a significant clinical advantage, and matches the doctor's opinion.
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使用分形维的心脏病诊断图形用户界面
心脏病是世界上导致死亡的主要原因之一。因此,有必要有适当的方法来确定患者的心脏状况。心脏是自相似物体的心电图信号;可以很好地考虑分形分析。本文采用分形维数方法从正常心电信号中对房颤(PAC)、室性早搏(PVC)和房颤(Atrial Fibrillation)三种特殊的心脏疾病进行了区分和分析。所使用的ECG信号来自三个数据库:MIT-BIH心律失常数据库、MIT-BIH正常窦性心律数据库和心内房颤数据库。采用重标量程法确定各疾病分形维数的具体量程。得到的分形维数范围为:健康人1.73 ~ 1.81,PVC患者1.34 ~ 1.44,PAC患者1.49 ~ 1.69,房颤患者1.11 ~ 1.30。利用MATLAB程序设计图形用户界面(GUI),计算分形维数,从原始心电数据中区分健康人的心电信号和三种特定心脏病患者的心电信号。结果表明,方法学分析确实提供了显著的临床优势,并符合医生的意见。
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