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Novel deep genetic ensemble of classifiers for arrhythmia detection using ECG signals

机译:使用ECG信号进行心律失常检测分类器的新型深遗传合奏

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摘要

The heart disease is one of the most serious health problems in today's world. Over 50 million persons have cardiovascular diseases around the world. Our proposed work based on 744 segments of ECG signal is obtained from the MIT-BIH Arrhythmia database (strongly imbalanced data) for one lead (modified lead II), from 29 people. In this work, we have used long-duration (10 s) ECG signal segments (13 times less classifications/analysis). The spectral power density was estimated based on Welch's method and discrete Fourier transform to strengthen the characteristic ECG signal features. Our main contribution is the design of a novel three-layer (48 + 4 + 1) deep genetic ensemble of classifiers (DGEC). Developed method is a hybrid which combines the advantages of: (1) ensemble learning, (2) deep learning, and (3) evolutionary computation. Novel system was developed by the fusion of three normalization types, four Hamming window widths, four classifiers types, stratified tenfold cross-validation, genetic feature (frequency components) selection, layered learning, genetic optimization of classifiers parameters, and new genetic layered training (expert votes selection) to connect classifiers. The developed DGEC system achieved a recognition sensitivity of 94.62% (40 errors/744 classifications), accuracy = 99.37%, specificity = 99.66% with classification time of single sample = 0.8736 (s) in detecting 17 arrhythmia ECG classes. The proposed model can be applied in cloud computing or implemented in mobile devices to evaluate the cardiac health immediately with highest precision.
机译:心脏病是当今世界中最严重的健康问题之一。超过5000万人在世界各地的心血管疾病。我们的拟议工作基于744个ECG信号的ECG信号是从29人的MIT-BIH心律失常数据库(强不平衡数据)获得的,从29人中获得。在这项工作中,我们使用了长期(10秒)ECG信号段(分类/分析少13倍)。基于Welch的方法和离散傅里叶变换来估计光谱功率密度,以增强特征的ECG信号特征。我们的主要贡献是设计小组(48 + 4 + 1)分类器(DGEC)深遗传集合的设计。开发方法是一个混合动力车,它结合了以下优点:(1)集合学习,(2)深度学习,(3)进化计算。新颖的系统是由三种标准化类型的融合而开发的,四种汉明窗宽,四种分类器类型,分层十倍交叉验证,遗传特征(频率分量)选择,分层学习,分类器参数的遗传优化,以及新的遗传分层训练(专家投票选择)连接分类器。开发的DGEC系统实现了94.62%的识别敏感性(40次误差/ 744分类),精度= 99.37%,特异性= 99.66%,单个样本的分类时间= 0.8736检测17个心律失常。所提出的模型可以应用于云计算或在移动设备中实现,以便立即以最高精度评估心脏健康。

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