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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >Model-Based Estimation of Aortic and Mitral Valves Opening and Closing Timings in Developing Human Fetuses
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Model-Based Estimation of Aortic and Mitral Valves Opening and Closing Timings in Developing Human Fetuses

机译:基于模型的人类胎儿发育过程中主动脉和二尖瓣打开和关闭时间的估计

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Electromechanical coupling of the fetal heart can be evaluated noninvasively using doppler ultrasound (DUS) signal and fetal electrocardiography (fECG). In this study, an efficient model is proposed using -means clustering and hybrid Support Vector Machine–Hidden Markov Model (SVM–HMM) modeling techniques. Opening and closing of the cardiac valves were detected from peaks in the high frequency component of the DUS signal decomposed by wavelet analysis. It was previously proposed to automatically identify the valve motion by hybrid SVM-HMM based on the amplitude and timing of the peaks. However, in the present study, six patterns were identified for the DUS components which were actually variable on a beat-to-beat basis and found to be different for the early gestation (16–32 weeks), compared to the late gestation fetuses (36–41 weeks). The amplitude of the peaks linked to the valve motion was different across the six patterns and this affected the precision of valve motion identification by the previous hybrid SVM-HMM method. Therefore in the present study, clustering of the DUS components based on K-means was proposed and the hybrid SVM-HMM was trained for each cluster separately. The valve motion events were consequently identified more efficiently by beat-to-beat attribution of the DUS component peaks. Applying this method, more than 98.6% of valve motion events were beat-to-beat identified with average precision and recall of 83.4% and 84.2% respectively. It was an improvement compared to the hybrid method without clustering with average precision and recall of 79.0% and 79.8%. Therefore, this model would be useful for reliable screening of fetal wellbeing.
机译:可以使用多普勒超声(DUS)信号和胎儿心电图(fECG)无创地评估胎儿心脏的机电耦合。在这项研究中,使用-均值聚类和混合支持向量机-隐马尔可夫模型(SVM-HMM)建模技术,提出了一种有效的模型。从通过小波分析分解的DUS信号的高频分量的峰值中检测出心脏瓣膜的打开和关闭。以前有人提出根据峰值的幅度和时间,通过混合SVM-HMM自动识别阀门运动。但是,在本研究中,发现了DUS成分的六种模式,这些模式实际上是逐次变化的,并且发现与早期妊娠胎儿相比,早期妊娠(16-32周)有所不同( 36-41周)。在这六个模式中,与气门运动相关的峰的幅度是不同的,这影响了以前的混合SVM-HMM方法对气门运动识别的精度。因此,在本研究中,提出了基于K均值的DUS组件的聚类,并且分别为每个聚类训练了混合SVM-HMM。因此,通过DUS分量峰的逐个搏动归因,可以更有效地识别气门运动事件。应用这种方法,可以识别出98.6%以上的瓣膜运动事件,平均准确度和召回率分别为83.4%和84.2%。与没有聚类的混合方法相比,这是一种改进,平均精度和查全率分别为79.0%和79.8%。因此,该模型对于可靠筛查胎儿健康状况将很有用。

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