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Towards real-time detection of myocardial infarction by digital analysis of electrocardiograms

机译:通过心电图数字分析实现心肌梗塞的实时检测

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Myocardial infarction (MI) is one of the most common sudden-onset heart diseases. Early diagnosis and management of heart ischemia result in good prognosis. Early changes in the heart muscle activity after ischemia reflect in ST segment elevation on electrocardiogram (ECG) recordings. With the development of signal processing techniques and the portable devices, there is a need to develop a real-time algorithm that accurately detects MI non-invasively. In this paper, we propose a computer algorithm that employs digital analysis scheme towards the real-time detection of MI. The proposed algorithm extract features based on clinical diagnosis conditions allowing the continuous analysis of ST segment and simultaneous detection of abnormal heart activity resulting from MI. Using an online ECG library of patient data, the signals were filtered for high frequency noise, baseline drift then features of interest (Q, R, S waves and J points) were extracted. These were used to measure the ST segment elevation and depression as an important indicator of MI defined in clinical guideline for MI diagnosis. The developed algorithm was capable of detecting MI with 85% sensitivity and 100% specificity in a test set of 40 ECG recordings.
机译:心肌梗塞(MI)是最常见的突发性心脏病之一。心脏缺血的早期诊断和处理可带来良好的预后。缺血后心肌活动的早期变化反映在心电图(ECG)记录的ST段抬高中。随着信号处理技术和便携式设备的发展,需要开发一种实时算法来无创地准确检测MI。在本文中,我们提出了一种计算机算法,该算法将数字分析方案用于MI的实时检测。所提出的算法根据临床诊断条件提取特征,从而可以连续分析ST段并同时检测出MI引起的异常心脏活动。使用在线ECG患者数据库,对信号进行高频噪声滤波,基线漂移,然后提取感兴趣的特征(Q,R,S波和J点)。这些被用于测量ST段抬高和压低,这是MI诊断的临床指南中定义的MI的重要指标。在40个ECG记录的测试集中,开发的算法能够以85%的灵敏度和100%的特异性检测MI。

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