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Undersampling and Bagging of Decision Trees in the Analysis of Cardiorespiratory Behavior for the Prediction of Extubation Readiness in Extremely Preterm Infants

机译:在极端预料婴幼儿预测拔管准备的拔管准备内的拔除性行为中的缺点和袋装

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Extremely preterm infants often require endotracheal intubation and mechanical ventilation during the first days of life. Due to the detrimental effects of prolonged invasive mechanical ventilation (IMV), clinicians aim to extubate infants as soon as they deem them ready.Unfortunately, existing strategies for prediction of extubation readiness vary across clinicians and institutions, and lead to high reintubation rates. We present an approach using Random Forest classifiers for the analysis of cardiorespiratory variability to predict extubation readiness. We address the issue of data imbalance by employing random undersampling of examples from the majority class before training each Decision Tree in a bag. By incorporating clinical domain knowledge, we further demonstrate that our classifier could have identified 71% of infants who failed extubation, while maintaining a success detection rate of 78%.
机译:极端早产儿经常需要在生命的第一天内需要气管内插管和机械通风。由于延长侵入式机械通气(IMV)的不利影响,临床医生旨在尽快拔管婴儿。不幸的是,临床医生和机构预测拔管准备的现有策略,并导致了高的重新涂布率。我们使用随机森林分类器来提出一种方法,以分析心肺变异以预测拔管准备。在培训袋子中的每个决策树之前,通过采用来自多数类的例子的随机缺乏采样来解决数据不平衡问题。通过纳入临床域知识,我们进一步证明我们的分类器可以识别出现拔管失败的71%的婴儿,同时保持了78%的成功检测率。

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