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Non linear and Dynamic Time Warping classification of morphological patterns identified from Plethysmographic observations in the radial pulse

机译:从径向脉搏波描记观察中发现的形态学模式的非线性和动态时间扭曲分类

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Impedance Plethysmographic (IP) observations from the arterial pulse forms a powerful tool for deciphering various cardiovascular diseases. However, a major bottleneck for applying this technique effectively is the assignment of variable waveform morphology to its respective diseases. Rationale of this work is to investigate Non linear and Dynamic Time Warping (DTW) approaches for classifying Impedance Plethysmographic (IP) waveforms. Our adaptation is two fold, firstly, where we establish the IP waveforms as a dynamic system using embedding dimension. Analysis of IP waveforms reveal the existence of eight different patterns corresponding to normal subjects and those suffering from diseases of heart, liver and lungs. Secondly we take up the task of classification of these patterns with template matching using DTW technique. Parametric evaluations reveal that IP waveforms exhibit dynamical nature in a three dimensional attractor. This observation is further validated by exhibition of determinism in reccurrence plots and by parameters determined using recurrence quantification analysis. Classification of the IP patterns by DTW on 1200 samples selected meticulously from 5628 patterns shows an average accuracy of 94%, 95% sensitivity, high statistical predictive values and kappa value of 0.9314 for the eight different classes.
机译:动脉搏动的容积描记法(IP)观察结果是解密各种心血管疾病的有力工具。然而,有效应用该技术的主要瓶颈是将可变波形形态分配给其各自的疾病。这项工作的基本原理是研究非线性和动态时间规整(DTW)方法来对阻抗体积描记(IP)波形进行分类。我们的适应性有两个方面,首先,我们使用嵌入维将IP波形建立为动态系统。 IP波形分析显示存在八种不同的模式,分别对应于正常人和患有心脏,肝脏和肺部疾病的人。其次,我们使用DTW技术通过模板匹配来处理这些模式的分类任务。参数评估表明,IP波形在三维吸引子中表现出动力学性质。通过在重复图中显示确定性以及通过使用重复定量分析确定的参数,可以进一步验证此观察结果。通过DTW对从5628种模式中精心选择的1200个样本进行的IP模式分类显示,八种不同类别的平均准确度为94%,灵敏度为95%,较高的统计预测值和kappa值为0.9314。

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