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首页> 外文期刊>Technology and health care: official journal of the European Society for Engineering and Medicine >A novel modular fetal ECG STAN and HRV analysis: Towards robust hypoxia detection
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A novel modular fetal ECG STAN and HRV analysis: Towards robust hypoxia detection

机译:一种新型模块化胎儿ECG STAN和HRV分析:促进缺氧检测

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摘要

This paper introduces a comprehensive fetal Electrocardiogram (fECG) Signal Extraction and Analysis Virtual Instrument that integrates various methods for detecting the R-R Intervals (RRIs) as a means to determine the fetal Heart Rate (fHR) and therefore facilitates fetal Heart Rate Variability (HRV) signal analysis. Moreover, it offers the capability to perform advanced morphological fECG signal analysis called ST segment Analysis (STAN) as it seamlessly allows the determination of the T-wave to QRS complex ratio (also called T/QRS) in the fECG signal. The integration of these signal processing and analytical modules could help clinical researchers and practitioners to noninvasively monitor and detect the life threatening hypoxic conditions that may arise in different stages of pregnancy and more importantly during delivery and could therefore lead to the reduction of unnecessary C-sections. In our experiments we used real recordings from a Fetal Scalp Electrode (ESE) as well as maternal abdominal electrodes. This Virtual Instrument (Toolbox) not only serves as a desirable platform for comparing various fECG extraction signal processing methods, it also provides an effective means to perform STAN and HRV signal analysis based on proven ECG morphological as well as Autonomic Nervous System (ANS) indices to detect hypoxic conditions.
机译:本文介绍了一种全面的胎儿心电图(FECG)信号提取和分析虚拟仪器,其集成了检测RR间隔(RRI)作为确定胎儿心率(FHR)的方法,因此有助于胎儿心率变异性(HRV)信号分析。此外,它提供了执行称为ST段分析(STAN)的先进形态FECG信号分析的能力,因为它无缝地允许在FECG信号中确定T波的QRS复数(也称为T / QR)。这些信号处理和分析模块的整合可以帮助临床研究人员和从业者进行非侵入性监测和检测可能在妊娠的不同阶段产生的缺氧条件,更重要的是在交付期间,因此可能导致不必要的C段的减少。在我们的实验中,我们使用来自胎儿头皮电极(ESE)以及母体腹部电极的实际记录。该虚拟仪器(工具箱)不仅用作比较各种FECG提取信号处理方法的理想平台,它还提供了基于经过验证的ECG形态学以及自主神经系统(ANS)指数来执行STAN和HRV信号分析的有效手段检测缺氧条件。

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