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Short term prediction of severe bradycardia in premature newborns

机译:早产儿严重心动过缓的短期预测

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Premature newborns show frequent episodes of bradycardia due to the immaturity of their autonomic nervous system. There is a need for developing methods which may alert physicians as soon as early signs of bradycardia are detected. In this paper we studied the RR interval (RRI) series using data mining methods to detect early signs of bradycardia. We employed principal components analysis (PCA) and hierarchical ascending classification (HAC) according to the generalised Ward's method. Time domain and frequency domain parameters as well as non-linear indices based on entropy were extracted from 13 stationary RRI series 3 minutes preceding the bradycardias. The projection of observations on the first factorial plan demonstrated a well defined path: clustering of observations appeared approaching the bradycardia (in 10/13 cases). These results suggest that the RRI contains information that can be employed to predict the onset of the bradycardia event.
机译:早产儿由于自主神经系统的不成熟而经常出现心动过缓。需要开发出一种方法,一旦检测到心动过缓的早期征兆,便可以提醒医生。在本文中,我们使用数据挖掘方法研究了RR间期(RRI)系列,以检测心动过缓的早期体征。根据广义沃德方法,我们采用了主成分分析(PCA)和层次升序分类(HAC)。在心动过缓发生前3分钟从13个固定RRI系列中提取时域和频域参数以及基于熵的非线性指标。对第一个析因计划的观察结果的投影显示了一个明确定义的路径:观察结果的聚集出现在心动过缓附近(在10/13例中)。这些结果表明,RRI包含可用于预测心动过缓事件发作的信息。

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