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Comparison of Bayesian Network and Decision Tree Methods for Predicting Access to the Renal Transplant Waiting List

机译:贝叶斯网络和决策树方法比较预测肾移植等待名单的访问

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The study compares the effectiveness of Bayesian networks versus Decision Trees for predicting access to renal transplant waiting list in a French healthcare network. The data set consisted in 809 patients starting renal replacement therapy. The data were randomly divided into a training set (90%) and a validation set (10%). Bayesian network and CART decision tree were built on the training set. Their predictive performances were compared on the validation set. The age variable was found to be the most important factor in both models. Both models were highly sensitive and specific: sensitivity 90.0% (95%CI: 76.8-100), specificity 96.7% (95%CI: 92.2-100). Moreover, the models were complementary since the Bayesian network provided a global view of the variables' associations while the decision tree was more easily interpretable by physicians. These approaches provide insights on the current care process. This knowledge could be used for optimizing the healthcare process.
机译:该研究比较了贝叶斯网络与决策树的有效性,以预测法国医疗网络中的肾移植候选名单的访问。数据集团组成809名患者开始肾替代疗法。将数据随机分为培训集(90%)和验证集(10%)。贝叶斯网络和购物车决策树建于训练集。将它们的预测性能进行了比较验证集。发现年龄变量是两种模型中最重要的因素。两种型号都具有高度敏感和特异性:敏感性90.0%(95%CI:76.8-100),特异性96.7%(95%CI:92.2-100)。此外,由于贝叶斯网络提供了变量关联的全球视图,因此模型是互补的,而决定树更容易被医生解释。这些方法提供了对当前护理过程的见解。这些知识可用于优化医疗保健过程。

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