级联的非线性熵和统计区分胎儿心率

A. Zaylaa, Soha Saleh, F. Karameh, Ziad Nahas, A. Bouakaz
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引用次数: 5

摘要

胎儿心率识别是生物医学工程中一个不断发展的领域,许多努力致力于通过改进胎儿监测方法和设备来避免早产。熵分析是一种非线性信号分析技术,已逐步发展,以提高几种生理信号的可分辨性,核熵参数(KBEPs)发现优于标准技术。这项研究首次应用kbep来分析胎儿心率。具体来说,它探讨了前沿的非线性kbep在区分健康胎儿和窘迫胎儿方面的可用性。本研究使用的数据库包括50个健康和50个严重宫内生长受限的胎儿心率信号。Cascade分析研究了六种基于核熵的胎儿心率判别方法,并将它们与四种标准熵进行了比较。该研究对每个参数的判别能力进行了统计评估(配对t检验统计量和分布差)。仿真结果表明,心绞痛组80%的熵参数分布范围高于健康对照组。结果表明,选择循环熵比选择柯西熵更有利(p <;0.001)高于标准技术,以区分胎儿心率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cascade of nonlinear entropy and statistics to discriminate fetal heart rates
Fetal heart rate discrimination is an evolving field in biomedical engineering with many efforts dedicated to avoid preterm deliveries by way of improving fetus monitoring methods and devices. Entropy analysis is a nonlinear signal analysis technique that has been progressively developed to improve the discriminability of a several physiological signals, with Kernel based entropy parameters (KBEPs) found advantageous over standard techniques. This study is the first to apply KBEPs to analyze fetal heart rates. Specifically, it explores the usability of the cutting-edge nonlinear KBEPs in discriminating between healthy fetuses and fetuses under distress. The database used in this study comprises 50 healthy and 50 distressed fetal heart rate signals with severe intrauterine growth restriction. The Cascade analysis investigates six kernel based entropy measures on fetal heart rates discrimination, and compares them to four standard entropies. The study presents a statistical evaluation of the discrimination power of each parameter (paired t-test statistics and distribution spread). Simulation results showed that the distribution ranges in 80% of the entropy parameters in the distressed heart group are higher than those in the healthy control group. Moreover, the results show that it is advantageous to choose Circular entropy then Cauchy entropy (p <; 0.001) over the standard techniques, in order to discriminate fetal heart rates.
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