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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Novel Density Poincaré Plot Based Machine Learning Method to Detect Atrial Fibrillation From Premature Atrial/Ventricular Contractions
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Novel Density Poincaré Plot Based Machine Learning Method to Detect Atrial Fibrillation From Premature Atrial/Ventricular Contractions

机译:基于新型心房/心室收缩的小型密度Poincaré绘制的机器学习方法检测心房颤动

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Objective: Detection of Atrial fibrillation (AF) from premature atrial contraction (PAC) and premature ventricular contraction (PVC) is difficult as frequent occurrences of these ectopic beats can mimic the typical irregular patterns of AF. In this paper, we present a novel density Poincaré plot-based machine learning method to detect AF from PAC/PVCs using electrocardiogram (ECG) recordings. Methods: First, we propose the generation of this new density Poincaré plot which is derived from the difference of the heart rate (DHR) and provides the overlapping phase-space trajectory information of the DHR. Next, from this density Poincaré plot, several image processing domain-based approaches including statistical central moments, template correlation, Zernike moment, discrete wavelet transform and Hough transform features are used to extract suitable features. Subsequently, the infinite latent feature selection algorithm is implemented to rank the features. Finally, classification of AF vs. PAC/PVC is performed using K-Nearest Neighbor, Support vector machine (SVM) and Random Forest (RF) classifiers. Our method is developed and validated using a subset of Medical Information Mart for Intensive Care (MIMIC) III database containing 10 AF and 10 PAC/PVC subjects. Results- During the segment-wise 10-fold cross-validation, SVM achieved the best performance with 98.99% sensitivity, 95.18% specificity and 97.45% accuracy with the extracted features. In subject-wise scenario, RF achieved the highest accuracy of 91.93%. Moreover, we further validated the proposed method using two other databases: wearable armband ECG data and the Physionet AFPDB. 100% PAC detection accuracy was obtained for both databases without any further training. Conclusion: Our proposed density Poincaré plot-based method showed superior performance when compared with four existing algorithms; thus showing the efficacy of the extracted image domain-based features. Significance: From intensive care unit's ECG to wearable armband ECGs, the proposed method is shown to discriminate PAC/PVCs from AF with high accuracy.
机译:目标:检测从过早心房收缩(PAC)和过早心室收缩(PVC)的心房颤动(AF)难以常见的这些异位节拍可以模仿AF的典型不规则模式。在本文中,我们提出了一种新的密度Poincaré绘图的机器学习方法,用于使用心电图(ECG)录制来检测来自PAC / PVC的AF。 方法:首先,我们建议产生这种新密度Poincaré的图,该图是从心率(DHR)的差异的衍生,并提供DHR的重叠的相位空间轨迹信息。接下来,从这个密度Poincaré绘图,几种基于域的方法包括统计中央矩,模板相关,Zernike矩,离散小波变换和Hough变换特征的基于域的方法用于提取合适的特征。随后,实现了无限潜在特征选择算法以对特征进行排名。最后,使用K-Collect邻居,支持向量机(SVM)和随机林(RF)分类器进行AF与PAC / PVC的分类。我们的方法是使用包含10 AF和10 PAC / PVC受试者的重症监护(模拟)III数据库的医疗信息MART子集进行开发和验证。结果 - 在分段10倍交叉验证期间,SVM实现了98.99%的灵敏度,95.18%的特异性95.18%和97.45%的精度。在主题方案中,RF实现了91.93%的最高精度。此外,我们进一步使用了另外两个数据库验证了所提出的方法:可穿戴臂带ECG数据和专题特性AFPDB。两个数据库都获得了100%PAC检测准确性,而无需进一步培训。结论:与四种现有算法相比,我们所提出的密度Poincaré绘图的方法显示出卓越的性能;因此,显示了基于提取的图像域的特征的功效。意义:从重症监护单元的ECG到可穿戴臂带ECG,所提出的方法显示,以高精度鉴别AF的PAC / PVC。

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