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A novel method of diagnosing coronary heart disease by analysing ECG signals combined with motion activity

机译:通过分析ECG信号和运动活动来诊断冠心病的新方法

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In this paper, we propose an effective method to automatically diagnose coronary heart disease by detecting ST segment episodes of ECG signals. To improve the diagnostic accuracy, we consider the motion activity of individual while monitoring ECG signals and we detect the motion activity of people through heart rate. Our method is based on clinical principle that ST segment depression is greater relative to heart rate (HR) in the recovery period compared with the exercise phase, which is stated in reference. Finally, the method is simulated by The Long-Term ST Database which has reference annotations about whether the person had coronary heart disease or not, with a diagnostic accuracy 80%.
机译:在本文中,我们提出了一种通过检测ECG信号ST段发作自动诊断冠心病的有效方法。为了提高诊断的准确性,我们在监视ECG信号时考虑个人的运动活动,并通过心率检测人的运动活动。我们的方法是基于临床原理,与运动阶段相比,康复阶段的ST段压低相对于心率(HR)更大,这在参考文献中有所说明。最后,该方法由The Long-Term ST Database模拟,该数据库具有有关该人是否患有冠心病的参考注释,诊断准确性为80%。

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