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Fetal Heart Baseline Extraction And Classification based on Deep Learning

机译:基于深度学习的胎心基线提取与分类

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Electronic fetal heart monitoring is a common method to detect fetal abnormalities used by obstetricians. Effective analysis and diagnosis of cardiotocography during labor not only helps to solve the problem of neonatal cerebral palsy caused by fetal distress, but also greatly reduces neonatal mortality. Among the existing analysis algorithms, most of them are based on machine learning to extract and classify the characteristics of cardiotocography. The results which depend on the recognition of features are always unstable. The baseline of fetal heart rate is the most basic characteristic. In this paper, the baseline characteristics of fetal heart rate are firstly extracted, and then the Long Short-Term Memory network is used for segmental classification of fetal heart rate. The results of the experiment show the superiority and efficiency of deep learning in feature extraction, and make it possible for fetal distress detection in computer-aid diagnosis which has greatly reduced the burden on doctors.
机译:电子胎儿心脏监测是检测产科医生使用的胎儿异常的常见方法。在劳动期间的心肌造影的有效分析和诊断不仅有助于解决胎儿窘迫引起的新生儿脑瘫的问题,而且大大降低了新生儿死亡率。在现有的分析算法中,其中大多数基于机器学习来提取和分类心脏切断的特征。依赖于特征识别的结果总是不稳定的。胎儿心率的基线是最基本的特征。本文首先提取了胎儿心率的基线特征,然后长短期存储网络用于胎儿心率的分段分类。实验结果表明了特征提取中深度学习的优越性和效率,使胎儿窘迫检测有可能在计算机辅助诊断中,这极大地减少了医生的负担。

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