scholarly journals K-Means Clustering Algorithm Based Arrhythmic Heart Beat Detection in ECG Signal

Author(s):  
Önder YAKUT ◽  
Emine DOĞRU BOLAT ◽  
Hatice EFE
Author(s):  
Veena K N ◽  
Shobha S.

Cardiac disorders turn out to be a serious disease if not diagnosed and treated at the earliest. Arrhythmia is a cardiac disorder that exists as a result of irregular heart beat conditions. There are several variants in this type of disorder which can be only diagnosed only when patient is under an intensive care conditions and also the patient with such disorder do not experience and physical symptoms. Such diseases turn out to be deadly if not treated early. A detection system is thus required which is capable of detecting these arrhythmias in real time and aid in the diagnosis. An FPGA based arrhythmia detection system is designed and implemented here which can detect second degree AV block type of arrhythmia. The designed system was simulated and tested with ECG signal from MIT-BH database and the results revealed that a robust arrhythmia detection system was implemented.


Author(s):  
Niklas Duda ◽  
Alexander Barthule ◽  
Simon Ripperger ◽  
Frieder Mayer ◽  
Robert Weigel ◽  
...  

2020 ◽  
Vol 7 (2) ◽  
pp. 53
Author(s):  
Ziti Fariha Mohd Apandi ◽  
Ryojun Ikeura ◽  
Soichiro Hayakawa ◽  
Shigeyoshi Tsutsumi

Heartbeat detection for ambulatory cardiac monitoring is more challenging as the level of noise and artefacts induced by daily-life activities are considerably higher than monitoring in a hospital setting. It is valuable to understand the relationship between the characteristics of electrocardiogram (ECG) noises and the beat detection performance in the cardiac monitoring system. For this purpose, three well-known algorithms for the beat detection process were re-implemented. The beat detection algorithms were validated using two types of ambulatory datasets, which were the ECG signal from the MIT-BIH Arrhythmia Database and the simulated noise-contaminated ECG signal with different intensities of baseline wander (BW), muscle artefact (MA) and electrode motion (EM) artefact from the MIT-BIH Noise Stress Test Database. The findings showed that signals contaminated with noise and artefacts decreased the potential of beat detection in ambulatory signal with the poorest performance noted for ECG signal affected by the EM artefacts. In conclusion, none of the algorithms was able to detect all QRS complexes without any false detection at the highest level of noise. The EM noise influenced the beat detection performance the most in comparison to the MA and BW noises that resulted in the highest number of misdetections and false detections.


2019 ◽  
Vol 66 (12) ◽  
pp. 3310-3319 ◽  
Author(s):  
Chen Lin ◽  
Hui-Ming Yeh ◽  
Men-Tzung Lo ◽  
Chien-Hung Yeh ◽  
Cheng-Yen Wang ◽  
...  

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