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Identification of sudden cardiac death using spectral domain analysis of Electrocardiogram(ECG)

机译:心电图谱域分析法识别心源性猝死

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Sudden death from cardiac arrest is a major health problem and is responsible for almost half of all heart disease deaths [1]. This paper introduces work that has been done to distinguish the Electrocardiogram (ECG) of a normal healthy human from that of a patient who may suffer from Sudden Cardiac Death (SCD), but this condition has not been detected. In SCD, the cardiac arrest occurs for a very short time which is preceded and followed by normal ECG (Fig 1). In time domain, detection of such condition would involve monitoring the ECG for over 24 hrs which is not at all feasible. Therefore we worked on normal portion of SCD ECG and compared its parameters with those of a healthy person's ECG. The intention is to design an algorithm that may enable doctors to detect chances of myocardial infarction beforehand on the basis of spectral analysis of an ECG. Fast Fourier Transform (FFT) on QRS complex was used to extract information from the ECG signals providing the basis with which a signal suggesting predisposition of the patient to suffer a cardiac arrest can be differentiated from a normal signal. In this way, instead of waiting for over 24 hrs, 4-5 min. of ECG of any patient is enough to detect possibility of SCD. The algorithm was tested on MIT-BIH (Massachusetts Institute of Technology-Beth Israel Hospital) Databases and the results verified our hypothesis that given an individual's ECG signal during normal function of the heart, it is possible to analyze it and predict whether he is susceptible to cardiac arrest. Further research is being carried out by utilizing the concept for analyzing an ECG signal to identify predisposition to other diseases
机译:心脏骤停导致的猝死是一个主要的健康问题,几乎占所有心脏病死亡的一半[1]。本文介绍了已完成的工作,以区分正常健康人的心电图(ECG)和可能患有心脏猝死(SCD)的患者的心电图(ECG),但尚未发现这种情况。在SCD中,心脏骤停发生的时间非常短,在此之前和之后是正常的心电图(图1)。在时域中,检测这种状况将涉及监测ECG 24小时以上,这根本不可行。因此,我们研究了SCD ECG的正常部分,并将其参数与健康人的ECG进行了比较。目的是设计一种算法,使医生能够根据心电图的频谱分析事先检测出心肌梗塞的机会。 QRS波群上的快速傅立叶变换(FFT)用于从ECG信号中提取信息,为可以将暗示患者易患心搏停止的倾向的信号与正常信号区分开来提供基础。以这种方式,而不是等待超过24小时,而是需要4-5分钟。任何患者的ECG值足以检测出SCD的可能性。该算法已在MIT-BIH(麻萨诸塞州理工大学贝斯以色列医院)数据库中进行了测试,结果验证了我们的假设,即给定一个人在心脏正常功能期间的ECG信号,就可以对其进行分析并预测他是否易感心脏骤停。通过利用该概念来分析ECG信号以识别其他疾病的易感性,正在开展进一步的研究。

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