Detection of Bradycardia in Preterm Infants by Using ECG and Respiratory Signals

Ting-Kai Hsu, Hangzhang Cheng, S. Yao
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Abstract

This study is conducted to detect bradycardia in preterm infants. The signal of electrocardiogram (ECG) has been widely applied to the detection. We propose to consider respiratory signals to improve the accuracy of classification. The machine learning model AutoML is used for feature selection and classification. The training data include ECG and respiratory signals. The target is to determine whether symptoms of bradycardia occur in preterm infants. Through the experimental results, the classification by analyzing the features of the ECG together with the respiratory signal showed an average accuracy of 79.2% which was better than 75.32% by using ECG only and 62.08% by using a respiratory signal only. The comparison result shows that in addition to ECG, respiratory signals are important in the detection of bradycardia.
利用心电图和呼吸信号检测早产儿心动过缓
本研究旨在检测早产儿的心动过缓。心电图信号已被广泛应用于检测。我们建议考虑呼吸信号来提高分类的准确性。机器学习模型AutoML用于特征选择和分类。训练数据包括心电和呼吸信号。目的是确定早产儿是否出现心动过缓症状。实验结果表明,结合心电和呼吸信号特征进行分类的平均准确率为79.2%,优于单独使用心电和呼吸信号的分类准确率分别为75.32%和62.08%。对比结果表明,除心电图外,呼吸信号对心动过缓的检测也很重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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