A Hybrid Machine Learning Approach for Improving Mortality Risk Prediction on Imbalanced Data

Araek Tashkandi, L. Wiese
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引用次数: 1

Abstract

The efficiency of Machine Learning (ML) models has widely been acknowledged in the healthcare area. However, the quality of the underlying medical data is a major challenge when applying ML in medical decision making. In particular, the imbalanced class distribution problem causes the ML model to be biased towards the majority class. Furthermore, the accuracy will be biased, too, which produces the Accuracy Paradox. In this paper, we identify an optimal ML model for predicting mortality risk for Intensive Care Units (ICU) patients. We comprehensively assess an approach that leverages the efficiency of ML ensemble learning (in particular, Gradient Boosting Decision Tree) and clustering-based data sampling to handle the imbalanced data problem that this model faces. We comprehensively compare different competitors (in terms of ML models as well as clustering methods) on a big real-world ICU dataset achieving a maximum area under the curve value of 0.956.
一种改进不平衡数据死亡率风险预测的混合机器学习方法
机器学习(ML)模型的效率在医疗保健领域得到了广泛的认可。然而,在将机器学习应用于医疗决策时,底层医疗数据的质量是一个主要挑战。特别是,不平衡的类分布问题导致ML模型偏向大多数类。此外,准确性也会有偏差,这就产生了准确性悖论。在本文中,我们确定了预测重症监护病房(ICU)患者死亡风险的最佳ML模型。我们全面评估了一种利用机器学习集成学习(特别是梯度增强决策树)和基于聚类的数据采样的效率来处理该模型面临的数据不平衡问题的方法。我们在一个大的真实ICU数据集上综合比较了不同的竞争对手(在ML模型和聚类方法方面),在曲线值0.956下获得了最大面积。
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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