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   the classification of heartbeats from two-channel ecg signals using layered hidden markov model  
   
نویسنده sadoughi azadeh ,shamsollahi mohammad bagher ,fatemizadeh emad
منبع frontiers in biomedical technologies - 2022 - دوره : 9 - شماره : 1 - صفحه:59 -67
چکیده    Purpose: cardiac arrhythmia is one of the most common heart diseases that can have serious consequences. thus, heartbeat arrhythmias classification is very important to help diagnose and treat. to develop the automatic classification of heartbeats, recent advances in signal processing can be employed. the hidden markov model (hmm) is a powerful statistical tool with the ability to learn different dynamics of the real time-series such as cardiac signals.materials and methods: in this study, a hierarchy of hmms named layered hmm (lhmm) was presented to classify heartbeats from the two-channel electrocardiograms. for training in the first layer, the morphology of the heartbeats was used as observations, while observations in the second layer were the inference results of the first layer. the performance of the proposed lhmm was evaluated in classifying three types of heartbeat arrhythmias (atrial premature beats (a), escape beats (e), left bundle branch block beats (l)) using fifteen records of the mit-bih arrhythmia database. furthermore, the obtained results of the proposed model were compared with other hmm generalizations.results: the best average accuracy was achieved 97.10±1.63%. the best sensitivity of 96.8±1.24%, 98.85±0.52%, and 95.64±1.41% were obtained for a, e, and l, respectively. furthermore, the results of the proposed method were better than other hmm generalizations.conclusion: extracting information from time-series dynamics by hmm-based methods has good classification results. the proposed model shows that applying a two-layered hmm can lead to better extraction of information from the observations; therefore, the classification performance of cardiac arrhythmias has been improved using lhmm.
کلیدواژه layered hidden markov model; arrhythmia; electrocardiogram; machine learning; classification
آدرس islamic azad university, tehran science and research branch, department of biomedical engineering, iran, sharif university of technology, school of electrical engineering, biomedical signal and image processing laboratory, iran, sharif university of technology, school of electrical engineering, biomedical signal and image processing laboratory, iran
پست الکترونیکی fatemizadeh@sharif.edu
 
     
   
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