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Vital Prognosis of Patients in Intensive Care Units Using an Ensemble of Bayesian Classifiers

机译:使用贝叶斯分类器的集成综合保健单位患者的至关重要预后

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An Ensemble of Bayesian Classifiers (EBC) is constructed to perform vital prognosis of patients in the Intensive Care Units (ICU). The data are scarce and unbalanced, so that the size of the minority class (critically ill patients who die) is very small, and this fact prevents the use of accuracy as a measure of performance in classification; instead we use the Area Under the Precision-Recall curve (AUPR). To address the classification in this setting, we propose the use of an ensemble constructed from five base Bayesian classifiers with the weighted majority vote rule, where the weights are defined from AUPR. We compare this EBC model with the base Bayesian classifiers used to build it, as well as with the ensemble obtained using the mere majority vote criterion, and with some state-of-the-art machine learning supervised classifiers. Our results show that the EBC model outperforms most of the competing classifiers, being only slightly surpassed by Random Forest.
机译:构建贝叶斯分类器(EBC)的集合,以对重症监护单位(ICU)进行患者的重要预后。这些数据稀缺和不平衡,因此少数阶级的大小(严重生病的患者死亡)非常小,这一事实可防止使用准确性作为分类性能的衡量标准;相反,我们在精密召回曲线(AUPR)下使用该区域。要在此设置中解决分类,我们建议使用由五个基本贝叶斯分类器构建的集合,其中重量的多数票规则,其中重量由AUPR定义。我们将此EBC模型与用于构建它的基础贝叶斯型分类器以及使用Mere Mere Compority表决标准获得的集合,以及一些最先进的机器学习监督分类器。我们的研究结果表明,EBC模型优于大多数竞争分类器,仅被随机森林略微超越。

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