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Heart diseases prediction based on ECG signals' classification using a genetic-fuzzy system and dynamical model of ECG signals

机译:遗传模糊系统和心电信号动力学模型基于心电信号分类的心脏病预测

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摘要

The early detection of abnormal heart conditions is vital to identify heart problems and avoid sudden cardiac death. The people with similar heart conditions almost have similar electrocardiogram (ECG) signals. By analyzing the ECG signals' patterns one can predict arrhythmias. Since the conventional methods of arrhythmia detection rely on observing morphological features of the ECG signals which are tedious and very time consuming, the automatic detection of arrhythmia is more preferable. In order to automate detection of heart diseases an adequate algorithm is required which could classify the ECG signals with unknown features according to the similarities between them and the ECG signals with known features. If this classifier can find the similarities precisely, the probability of arrhythmia detection is increased and this algorithm can become a useful means in laboratories. In this article a new classification method is presented to classify ECG signals more precisely based on dynamical model of the ECG signal. In this proposed method a fuzzy classifier is constructed and its simulation results indicate that this classifier can segregate the ECGs with an accuracy of 93.34%. To further improve the performance of this classifier, genetic algorithm is applied where the accuracy in prediction is increased up to 98.67%. This proposed method increases the accuracy of the ECG classification regarding more precise arrhythmia detection.
机译:早期发现异常的心脏状况对于识别心脏问题和避免心脏猝死至关重要。患有相似心脏病的人几乎具有相似的心电图(ECG)信号。通过分析ECG信号的模式,可以预测心律不齐。由于常规的心律不齐检测方法依赖于观察心电图信号的形态特征,这是乏味且非常耗时的,因此自动心律失常的检测更为可取。为了自动检测心脏病,需要一种适当的算法,该算法可以根据特征与未知特征的ECG信号之间的相似性对特征未知的ECG信号进行分类。如果该分类器能够精确找到相似之处,则心律失常检测的可能性将会增加,并且该算法将成为实验室中的一种有用手段。在本文中,提出了一种新的分类方法,以基于ECG信号的动力学模型更精确地对ECG信号进行分类。该方法构造了一个模糊分类器,其仿真结果表明该分类器能够以93.34%的准确率分离出心电图。为了进一步提高该分类器的性能,应用了遗传算法,其中预测精度提高到98.67%。此提议的方法提高了有关更精确的心律失常检测的ECG分类的准确性。

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