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Recognition of Dangerous Rhythm Disturbances from Short ECG Fragments

机译:从短信片段识别危险节奏扰动

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Recognition methods of dangerous rhythm disturbances using the spectral description of short electrocardiosignals are the subject of this paper. Each object is described by 15 spectral features in the range from 0 to 15 Hz, all data are normalized to total signal strength. The sample size is 270 objects of each class. The method of Fisher linear discriminant (FLD) is used, as well as the method of convex hulls classification. The results of the binary classification of arrhythmias into non-dangerous and dangerous using two methods are presented. The performances of the classification efficiency (sensitivity, specificity, and overall accuracy) are calculated. Leave-one-out cross-validation (LOO CV) is used during the classification experiment to empirically evaluated the generalization ability of the algorithm. Also, mapping of two classes' objects onto the plane of vectors, obtained using the FLD method is presented. The convex hull classification based on linear programming has an overall accuracy of 91.5%. The results of this work can be used to solve practical problems in medicine.
机译:使用短心电上的光谱描述识别危险节律扰动的方法是本文的主题。每个对象在0到15 Hz的范围内完成了15个光谱特征,所有数据都被归一化为总信号强度。样本大小为每个类的270个对象。使用Fisher线性判别(FLD)的方法,以及凸壳分类的方法。介绍了使用两种方法的非危险和危险性的二元分类的结果。计算分类效率(敏感度,特异性和总体精度)的性能。在分类实验期间使用休留交叉验证(LOO CV),以凭经验评估算法的泛化能力。此外,提出了使用FLD方法获得的两个类对象的映射到矢量平面上。基于线性规划的凸船船分类总精度为91.5%。这项工作的结果可用于解决医学中的实际问题。

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