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Patients Classification by Risk Using Cluster Analysis and Genetic Algorithms

机译:患者通过群集分析和遗传算法进行风险分类

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Knowing a patient's risk at the moment of admission to a medical unit is important for both clinical and administrative decision making: it is fundamental to carry out a health technology assessment. In this paper, we propose a non-supervised learning method based on cluster analysis and genetic algorithms to classify patients according to their admission risk. This proposal includes an innovative way to incorporate the information contained in the diagnostic hypotheses into the classification system. To assess this method, we used retrospective data of 294 patients (50 dead) admitted to two Adult Intensive Care Units (ICU) in the city of Santiago, Chile. An area calculation under the ROC curve was used to verify the accuracy of this classification. The results show that, with the proposed methodology, it is possible to obtain an ROC curve with a 0.946 area, whereas with the APACHE II system it is possible to obtain only a 0.786 area.
机译:在向医疗单位入场时,了解患者的风险对于临床和行政决策是重要的:这是开展健康技术评估的基础。在本文中,我们提出了一种基于聚类分析和遗传算法的非监督学习方法,根据入场风险对患者进行分类。该提案包括一种创新的方法,可以将诊断假设中包含的信息纳入分类系统。为了评估这种方法,我们使用了智利市圣地亚哥市的两名成人重症监护单位(ICU)的294名患者(50人死亡)的回顾性数据。 ROC曲线下的区域计算用于验证该分类的准确性。结果表明,利用所提出的方法,可以获得0.946区域的ROC曲线,而与Apache II系统有可能仅获得0.786区域。

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