Myocardial Ischemia Detection from Slope of ECG ST Segment

S. Farhan, K. T. Nahiyan
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引用次数: 5

Abstract

Myocardial ischemia occurs when blood flow to heart is reduced preventing it from receiving enough oxygen. It is a possible indication of partial or complete blockage of coronary arteries. Though ischemia is accompanied by symptoms (fatigue, chest pain, shortness of breath etc.) sometimes it can be silent. If not treated, it can lead to various heart diseases. Most importantly it can progress to myocardial infarction (heart attack), which can be fatal. Thus detecting ischemia at an early stage is important to prevent serious implications. Nowadays personal healthcare monitoring systems are used which provide vital physiological information. In future ECG measurement devices would also be common in homes. So, the proposed work intends to develop an algorithm in detecting myocardial ischemia from ECG, which would be computationally less complex and easy to implement in homecare ECG devices. One way to do it is through continuous or long term monitoring of ECG. The ST segment elevation (or depression) indicates presence of ischemia. The proposed method measures slope of ST segment which must vary in case of ST changes. The algorithm is tested on selected records of the European ST-T database and returns an accuracy of 83.33%.Bangladesh Journal of Medical Physics Vol.10 No.1 2017 12-24
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心电ST段斜率检测心肌缺血
当流向心脏的血流量减少,使心脏无法获得足够的氧气时,就会发生心肌缺血。这可能是冠状动脉部分或完全阻塞的指征。虽然缺血伴有症状(疲劳、胸痛、呼吸短促等),但有时可能是无声的。如果不及时治疗,会导致各种心脏疾病。最重要的是,它可能发展为心肌梗死(心脏病发作),这可能是致命的。因此,在早期阶段检测缺血对于防止严重影响是重要的。如今,个人健康监测系统被用于提供重要的生理信息。在未来,心电测量设备也将在家庭中普及。因此,本工作旨在开发一种从心电检测心肌缺血的算法,该算法计算量小,易于在家庭心电设备中实现。一种方法是通过持续或长期监测心电图。ST段抬高(或降低)表明存在缺血。所提出的方法测量ST段的斜率,当ST段变化时,斜率必须变化。该算法在欧洲ST-T数据库的选定记录上进行了测试,返回的准确率为83.33%。孟加拉医学物理杂志Vol.10 No.1 2017 12-24
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