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Designing an Intelligent Support System for Emergency Cardiac Care

机译:设计智能心脏护理智能支持系统

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Electrocardiogram (ECG) is the most easily accessible bio-electric signal that provides the doctors with reasonably accurate data regarding the patient heart condition. Many of the cardiac problems are visible as distortions in the electrocardiogram. The major task in diagnosing the heart condition is analysing each heart beat and co-relating the distortions found therein with various heart diseases. In this paper the authors have focused on a particular extracted feature of the ECG signals for use with Artificial Neural Networks (ANNs). The accurate and automated detection of the R-peak value of the ECG signal is essential for efficient results. Here, the task of the ANN is to correctly classify five classes of diseases: Normal, Left bundle branch block, Right bundle branch block, premature ventricular contraction and atrial premature contraction. Further, another ANN is used to accurately determine the R-peak values of the ECG signal. The system is able to provide a rudimantary assessment of cardiac problems. This has been verified using experimental results. Here, the morphological feature extraction scheme is used for feature extraction. The simulation data are obtained from Massachusetts Institute of Technology/Beth Israel Hospital (MIT-BIH) arrhythmia database demonstrating different kinds of cardiac diseases detectable by ECG signals.
机译:心电图(ECG)是最易于访问的生物电信信号,为医生提供了有关患者心脏状况的合理准确的数据。许多心脏病问题都像心电图中的扭曲一样可见。诊断心脏状况的主要任务正在分析每个心跳并共同关心在其中发现的扭曲具有各种心脏病。在本文中,作者专注于ECG信号的特定提取特征,以与人工神经网络(ANNS)一起使用。 ECG信号的R峰值的准确性和自动检测对于有效的结果至关重要。在这里,ANN的任务是正确分类五类疾病:正常,左束分支块,右束分支块,过早的心室收缩和心房过早收缩。此外,另一个ANN用于精确地确定ECG信号的R峰值值。该系统能够提供对心脏病问题的无懈可灭评估。这已经使用实验结果进行了验证。这里,形态特征提取方案用于特征提取。仿真数据是从Massachusetts技术研究所/ Beth以色列医院(MIT-BIH)心律失常数据库获得,演示了ECG信号可检测的不同类型的心脏病。

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