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Feature selection and oversampling in analysis of clinical data for extubation readiness in extreme preterm infants

机译:极端早产儿拔管准备的临床数据分析中的特征选择和过采样

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We present an approach for the analysis of clinical data from extremely preterm infants, in order to determine if they are ready to be removed from invasive endotracheal mechanical ventilation. The data includes over 100 clinical features, and the subject population is naturally quite small. To address this problem, we use feature selection, specifically mutual information, in order to choose a small subset of informative features. The other challenge we address is class imbalance, as there are many more babies that succeed extubation than those who fail. To handle this problem, we use SMOTE, an algorithm which creates synthetic examples of the minority class.
机译:我们提供了一种分析极早产儿临床数据的方法,以确定他们是否准备好从有创气管内机械通气中取出。数据包括100多个临床特征,对象人群自然很小。为了解决这个问题,我们使用特征选择,特别是互信息,以选择信息特征的一小部分。我们要解决的另一个挑战是班级失衡,因为成功拔管的婴儿比失败的婴儿多。为了解决这个问题,我们使用SMOTE,该算法可创建少数类的综合示例。

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