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Using evolutionary algorithms for ECG Arrhythmia detection and classification

机译:使用进化算法进行心电图心律失常的检测和分类

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The electrocardiogram (ECG) is the most clinically accepted diagnostic tool used by physicians for interpreting the functional activity of the heart. The existing ECG machines require an expert-in-the-loop for identifying abnormalities in cardiac activity - commonly referred to as Arrhythmia - of a patient. The accuracy of diagnosis is directly dependent on the skill set of the physician; as a result, in rural and remote places, where no ECG specialist wants to relocate, the patients are unable to get any help in case of life threatening arrhythmias. In this paper, we investigate the suitability of evolutionary algorithms to discriminate a normal ECG from an abnormal one with minimum user intervention. Consequently, the human dependent errors are minimized. The intelligent framework is efficient and can be used for realtime ECG analysis to complement the diagnostic efficiency and accuracy of ECG specialists. Moreover, the system could also be used to raise early alarms for patients where no ECG specialist is available. In this paper, we aim at autonomously detecting six types of Arrhythmia: (1) Tachycardia, (2) Bradycardia, (3) Right Bundle Branch Block, (4) Left Bundle Branch Block, (5) Old Inferior Myocardial Infarction, and (6) Old Anterior Myocardial Infarction. We evaluate the accuracy of our system by selecting the best back end classifier from a set of 8 evolutionary classifiers. The results of our experiments show that our system is able to achieve more than 98% accuracy in detecting most types of Arrhythmia.
机译:心电图(ECG)是医生用于解释心脏功能活动的最临床公认的诊断工具。现有的ECG机器需要回路专家来识别患者的心脏活动异常(通常称为心律不齐)。诊断的准确性直接取决于医师的技能水平。结果,在没有心电图专家要搬迁的农村和偏远地区,如果发生危及生命的心律不齐,患者将无法获得任何帮助。在本文中,我们研究了进化算法在用户干预最少的情况下,将正常ECG与异常ECG区别开来的适用性。因此,人类相关的错误被最小化。智能框架是高效的,可用于实时心电图分析,以补充心电图专家的诊断效率和准确性。此外,该系统还可以用于没有心电图专家的患者的早期警报。在本文中,我们旨在自主检测六种类型的心律失常:(1)心动过速,(2)心动过缓,(3)右束支传导阻滞,(4)左束支传导阻滞,(5)下心肌梗死和( 6)旧的前部心肌梗塞。我们通过从8个进化分类器中选择最佳的后端分类器来评估系统的准确性。我们的实验结果表明,我们的系统能够在检测大多数类型的心律不齐中达到98%以上的准确性。

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