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QRS pattern recognition using a simple clustering approach for continuous data

机译:QRS模式识别使用简单的聚类方法进行连续数据

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This Paper describes a clustering approach to be used for incoming data under computational constraints at an early stage of the signal processing chain. The algorithm is evaluated on the MIT-BIH Arrhythmia Database (MIT) and the European ST-T-Database (EDB) using a pseudo classification method to estimate the beat identification rates. The algorithm allows an extensive computational simplification, still providing reliable pattern recognition results for normal QRS beat types (Se=96.18 %; +P=99.61 % on MIT and Se=98.26 %; +P=99.95 % on EDB) as well as for ventricular ectopic QRS types (Se=97.61 %; +P=99.64 % on MIT and Se=99.07 %; +P=98.93 % on EDB). Besides its performance in terms of pseudo classification, the computational simplicity and few restrictions regarding its applicability render the proposed clustering method an interesting choice for online-clustering applications even apart from ECG processing.
机译:本文介绍了在信号处理链的早期阶段的计算约束下用于输入数据的聚类方法。使用伪分类方法对MIT-BIH心律失常数据库(MIT)和欧洲ST-T-DATABASE(EDB)进行评估算法,以估计节拍识别率。该算法允许广泛的计算简化,仍提供正常QRS击败类型的可靠模式识别结果(SE = 96.18%; + P = 99.61%,SE = 98.26%; EDB上的98.26%; + P = 99.95%)以及心室异位QRS类型(SE = 97.61%; + P = 99.64%,SE = 99.07%; EDB上+ P = 98.93%)。除了在伪分类方面的性能之外,还有关于其适用性的计算简单性和限制很少,使提出的聚类方法甚至除了ECG处理之外的在线聚类应用程序也是一个有趣的选择。

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