A real time QRS complex classification method using Mahalanobis distance

J. Moraes, M.O. Seixas, F.N. Vilani, E.V. Costa
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引用次数: 63

Abstract

An unsupervised method to recognize and classify QRS complexes was developed in order to create an automatic cardiac beat classifier in real time. After exhaustive analysis, four features extracted from the QRS complex in the time domain were selected as the ones presenting the best results: width, total sum of the areas under the positive and negative curves, total sum of the absolute values of sample variations and total amplitude. Preliminary studies indicated these features follow a normal distribution, allowing the use of the Mahalanobis distance as their classification criterion. After an initial learning period, the algorithm extracts the four features from every new QRS complex and calculates the Mahalanobis distance between its feature set and the centroids of all existing classes to determine the class in which the new QRS belongs to. If a predefined distance is surpassed, a new class is created Using 44 records from the MIT-BIH we have obtained 90,74% of sensitivity, 96,55% of positive predictivity and 0.242% of false positives.
基于马氏距离的QRS实时复杂分类方法
为了建立实时自动心跳分类器,提出了一种无监督的QRS复合体识别和分类方法。经过详尽的分析,从QRS复合体提取的时域特征中,选择宽度、正负曲线下面积之和、样本变化绝对值之和和总幅值四个特征作为效果最好的特征。初步研究表明,这些特征遵循正态分布,允许使用马氏距离作为它们的分类标准。经过一段初始学习期后,算法从每个新的QRS复合体中提取出四个特征,并计算其特征集与所有现有类的质心之间的马氏距离,从而确定新的QRS属于哪个类。如果超过预定义的距离,则创建一个新的类。使用来自MIT-BIH的44条记录,我们获得了9074%的灵敏度,96,55%的阳性预测和0.242%的假阳性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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