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ICU Mortality Prediction: A Classification Algorithm for Imbalanced Datasets

机译:ICU死亡率预测:不平衡数据集的分类算法

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Determining mortality risk is important for critical decisions in Intensive Care Units (ICU). The need for machine learning models that provide accurate patient-specific prediction of mortality is well recognized. We present a new algorithm for ICU mortality prediction that is designed to address the problem of imbalance, which occurs, in the context of binary classification, when one of the two classes is significantly under-represented in the data. We take a fundamentally new approach in exploiting the class imbalance through a feature transformation such that the transformed features are easier to classify. Hypothesis testing is used for classification with a test statistic that follows the distribution of the difference of two χ~2 random variables, for which there are no analytic expressions and we derive an accurate approximation. Experiments on a benchmark dataset of 4000 ICU patients show that our algorithm surpasses the best competing methods for mortality prediction.
机译:确定死亡率风险对于重症监护单位(ICU)的关键决策很重要。 需要充分认识到提供准确患者特异性预测的机器学习模型。 我们为ICU死亡率预测提出了一种新的算法,该算法旨在解决在二进制分类的上下文中发生不平衡的问题,当两个类中的一个在数据中显着低于表示时。 我们采取了基本上通过特征转换利用类别的不平衡来实现新的方法,使得变换的功能更容易分类。 假设测试用于分类,具有遵循两个χ〜2个随机变量差异的分布,没有分析表达,我们得出了准确的近似。 4000名ICU患者的基准数据集的实验表明,我们的算法超越了死亡预测的最佳竞争方法。

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