首页> 中文期刊> 《计算机系统科学与工程(英文)》 >Arrhythmia PredictioArrhythmia Prediction on Optimal Features Obtained from the ECG as Imagesn on Optimal Features Obtained from the ECG as

Arrhythmia PredictioArrhythmia Prediction on Optimal Features Obtained from the ECG as Imagesn on Optimal Features Obtained from the ECG as

         

摘要

A critical component of dealing with heart disease is real-time identifi-cation,which triggers rapid action.The main challenge of real-time identification is illustrated here by the rare occurrence of cardiac arrhythmias.Recent contribu-tions to cardiac arrhythmia prediction using supervised learning approaches gen-erally involve the use of demographic features(electronic health records),signal features(electrocardiogram features as signals),and temporal features.Since the signal of the electrical activity of the heartbeat is very sensitive to differences between high and low heartbeats,it is possible to detect some of the irregularities in the early stages of arrhythmia.This paper describes the training of supervised learning using features obtained from electrocardiogram(ECG)image to correct the limitations of arrhythmia prediction by using demographic and electrocardio-graphic signal features.An experimental study demonstrates the usefulness of the proposed Arrhythmia Prediction by Supervised Learning(APSL)method,whose features are obtained from the image formats of the electrocardiograms used as input.

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