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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Automated Electrocardiogram Signals Based Risk Marker for Early Sudden Cardiac Death Prediction
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Automated Electrocardiogram Signals Based Risk Marker for Early Sudden Cardiac Death Prediction

机译:基于自动心电图的早期心脏死亡预测的风险标记

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Sudden cardiac death (SCD) is one of the cardiovascular diseases that lead to millions of deaths worldwide every year. The aim of the present work is to propose a method for reducing the mortality rate of the SCD patients by an early prediction for SCD from the ECG signal. Normal and SCD MIT databases were used in this research work. One minute segments of ECG signals were segmented from MIT databases where these segments are ten minutes before sudden cardiac arrest (SCA) onset The collected raw ECG signals were subjected to filter to remove the noise and then normalized. A frequency-domain feature and time-domain features were extracted from the Q-T segment, Q-T interval, R-R interval and QRS interval. The features were normalized to improve the performance of the classifier. Artificial intelligence classifiers; namely, K-nearest neighbor (KNN) and linear discriminant analysis (LDA) were used separately on SCD and normal ECG signals. The highest classification accuracy obtained for KNN and LDA are 97% and 95.5% respectively.
机译:突然的心脏死亡(SCD)是每年导致全世界数百万人死亡的心血管疾病之一。本作工作的目的是提出一种通过从ECG信号的SCD的早期预测降低SCD患者的死亡率的方法。在本研究工作中使用了正常和SCD MIT数据库。从MIT数据库中分段了一分钟的ECG信号,其中这些段是突然心脏骤停(SCA)发起之前十分钟的收集的原始ECG信号进行过滤以除去噪声,然后标准化。从Q-T段,Q-T间隔,R-R间隔和QRS间隔中提取频域特征和时域特征。该特征被标准化以提高分类器的性能。人工智能分类器;即,在SCD和正常的ECG信号上单独使用K最近邻(KNN)和线性判别分析(LDA)。为KNN和LDA获得的最高分类准确度分别为97%和95.5%。

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