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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Detection of Life-Threatening Arrhythmias Using Feature Selection and Support Vector Machines
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Detection of Life-Threatening Arrhythmias Using Feature Selection and Support Vector Machines

机译:使用特征选择和支持向量机检测威胁生命的心律失常

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Early detection of ventricular fibrillation (VF) and rapid ventricular tachycardia (VT) is crucial for the success of the defibrillation therapy. A wide variety of detection algorithms have been proposed based on temporal, spectral, or complexity parameters extracted from the ECG. However, these algorithms are mostly constructed by considering each parameter individually. In this study, we present a novel life-threatening arrhythmias detection algorithm that combines a number of previously proposed ECG parameters by using support vector machines classifiers. A total of $hbox{13}$ parameters were computed accounting for temporal (morphological), spectral, and complexity features of the ECG signal. A filter-type feature selection (FS) procedure was proposed to analyze the relevance of the computed parameters and how they affect the detection performance. The proposed methodology was evaluated in two different binary detection scenarios: shockable (FV plus VT) versus nonshockable arrhythmias, and VF versus nonVF rhythms, using the information contained in the medical imaging technology database, the Creighton University ventricular tachycardia database, and the ventricular arrhythmia database. sensitivity (SE) and specificity (SP) analysis on the out of sample test data showed values of $hbox{SE}=hbox{95%}$, $hbox{SP}=hbox{99%}$, and $hbox{SE}=hbox{92%}$ , $hbox{SP}=hbox{97%}$ in the case of shockable and VF scenarios, respectively. Our algorithm was benchmarked against individual detection schemes, significantly improving their performance. Our results demonstrate that the combination of ECG parameters using statistical learning - lgorithms improves the efficiency for the detection of life-threatening arrhythmias.
机译:早期发现室颤(VF)和快速室性心动过速(VT)对于除颤治疗的成功至关重要。基于从ECG提取的时间,频谱或复杂性参数,已经提出了各种各样的检测算法。但是,这些算法主要是通过分别考虑每个参数来构造的。在这项研究中,我们提出了一种新颖的威胁生命的心律失常检测算法,该算法通过使用支持向量机分类器结合了许多先前提出的ECG参数。计算了总共$ hbox {13} $个参数,说明了ECG信号的时间(形态),频谱和复杂性特征。提出了一种过滤器类型特征选择(FS)程序来分析计算参数的相关性以及它们如何影响检测性能。使用医学成像技术数据库,Creighton大学心室心动过速数据库和室性心律失常中包含的信息,在两种不同的二元检测方案中对提出的方法进行了评估:可电击(FV加VT)与不可电击心律不齐,以及VF与非VF节律数据库。对非样本测试数据的敏感度(SE)和特异性(SP)分析显示$ hbox {SE} = hbox {95%} $,$ hbox {SP} = hbox {99%} $和$ hbox {对于令人震惊的场景和VF场景,分别为SE} = hbox {92%} $和$ hbox {SP} = hbox {97%} $。我们的算法针对单个检测方案进行了基准测试,大大提高了它们的性能。我们的结果表明,使用统计学习-算法可以结合使用ECG参数,从而提高了检测到危及生命的心律失常的效率。

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