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Detection of QRS-complex using K-nearest neighbour algorithm

机译:使用K近邻算法检测QRS复杂信号

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The automatic detection of ECG wave is important for cardiac disease diagnosis. A good performance of an automatic ECG analysing system depends upon the accurate and reliable detection of the QRS complex. This paper presents an application of K-nearest neighbour (KNN) algorithm for detection of QRS-complex in ECG. Here, the ECG signal was filtered using a band-pass filter to remove power line interference and baseline wander and gradient of the signal was used as a feature for QRS detection. The accuracy of KNN algorithm is largely dependent on the value of K and type of distance metric. Hence, K = 3 and Euclidean distance metric has been proposed, using five-fold cross-validation. The performance of this algorithm was evaluated on EUROBAVAR database and ECGs recorded using BIOPAC?MP100 system and using Atria?6100 ECG machine. The detection rates of 100%, 99.97% and 100% have been achieved for respective datasets. These results emphasises that KNN is a useful tool for QRS detection.
机译:心电图波的自动检测对于心脏病诊断很重要。自动心电图分析系统的良好性能取决于对QRS复合体的准确和可靠检测。本文提出了一种K近邻算法在心电图中QRS波群检测中的应用。在这里,使用带通滤波器对ECG信号进行滤波以消除电源线干扰,并且基线漂移和信号的梯度被用作QRS检测的功能。 KNN算法的准确性在很大程度上取决于K的值和距离度量的类型。因此,使用三重交叉验证,提出了K = 3和欧几里得距离度量。在EUROBAVAR数据库上评估了该算法的性能,并使用BIOPAC?MP100系统和Atria?6100 ECG机记录了ECG。各个数据集的检出率分别为100%,99.97%和100%。这些结果强调了KNN是QRS检测的有用工具。

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