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Analysis of Extracted Cardiotocographic Signal Features to Improve Automated Prediction of Fetal Outcome

机译:分析提取的心动图信号特征,以改善胎儿预后的自动预测

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Cardiotocographic monitoring based on automated analysis of the fetal heart rate (FHR) signal is widely used for fetal assessment. However, the conclusion generation system is still needed to improve the abnormal fetal outcome prediction. Classification of the signals according to the predicted fetal outcome by means of neural networks is presented in this paper. Multi-layer perceptron neural networks were learned through seventeen time-domain signal features extracted during computerized analysis of 749 traces from 103 patients. The analysis included estimation of the FHR baseline, detection of acceleration and deceleration patterns as well as measurement of the instantaneous FHR variability. All the traces were retrospectively verified by the real fetal outcome defined by newborn delivery data. Influence of numerical and categorical representation of the input signal features, different data sets during learning, and gestational age as additional information, were investigated. We achieved the best sensitivity and specificity for the neural networks fed with numerical input variables together with additional information on the gestational age in the categorical form.
机译:基于胎儿心率(FHR)信号自动分析的心电图监测广泛用于胎儿评估。但是,仍然需要结论生成系统来改善异常胎儿结局的预测。本文介绍了根据预测的胎儿结果通过神经网络对信号进行分类的方法。通过在103例患者的749条痕迹的计算机分析过程中提取的十七个时域信号特征,学习了多层感知器神经网络。分析包括对FHR基线的估计,加速和减速模式的检测以及FHR瞬时变化的测量。所有痕迹均通过新生儿分娩数据定义的真实胎儿结局进行了回顾性验证。研究了输入信号特征的数字和分类表示,学习过程中的不同数据集以及胎龄作为附加信息的影响。对于以数字形式输入的变量以及分类形式的有关胎龄的其他信息,我们获得了最佳的神经网络敏感性和特异性。

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