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Classification of electrocardiogram using hidden Markov models

机译:使用隐马尔可夫模型进行心电图的分类

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摘要

The objective of this project is to develop models for the characterization of electrocardiogram (EGG). A fast and reliable QRS detection algorithm based on a one-pole filter has been developed. Automatic ECG classification using hidden Markov models (HMMs) is investigated. Models representing various types of beat are trained using the American Heart Association (AHA) ventricular arrhythmia ECG data. The types of beat being selected in the study are: normal (N), premature ventricular contraction (V), and fusion of ventricular and normal beats (F). Artificial ECG generated from the model shows that each model truly characterizes that particular type of beat. In the testing phase, ECG signals are classified using the trained models. The average classification accuracy is 93% for N beat, 65.55% for V beat, and 56.38% for F beat respectively.
机译:该项目的目的是开发用于表征心电图(鸡蛋)的模型。已经开发了一种基于单极滤波器的快速可靠的QRS检测算法。研究了使用隐马尔可夫模型(HMMS)的自动ECG分类。代表各种类型的节拍的模型使用美国心脏关联(AHA)心律失常ECG数据进行培训。在研究中选择的节拍类型是:正常(n),过早心室收缩(V),和心室和正常节拍的融合(f)。从模型产生的人工ECG表明,每个模型真正表征了那种特定类型的节拍。在测试阶段,使用培训的型号分类ECG信号。平均分类准确度为N次为93%,对于V搏动,65.55%,分别为5拍56.38%。

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