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Boosted classification trees result in minor to modest improvement in the accuracy in classifying cardiovascular outcomes compared to conventional classification trees

机译:与传统的分类树相比,增强的分类树导致心血管结局分类的准确性略有改善

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Purpose: Classification trees are increasingly being used to classifying patients according to the presence or absence of a disease or health outcome. A limitation of classification trees is their limited predictive accuracy. In the data-mining and machine learning literature, boosting has been developed to improve classification. Boosting with classification trees iteratively grows classification trees in a sequence of reweighted datasets. In a given iteration, subjects that were misclassified in the previous iteration are weighted more highly than subjects that were correctly classified. Classifications from each of the classification trees in the sequence are combined through a weighted majority vote to produce a final classification. The authors' objective was to examine whether boosting improved the accuracy of classification trees for predicting outcomes in cardiovascular patients. Methods: We examined the utility of boosting classification trees for classifying 30-day mortality outcomes in patients hospitalized with either acute myocardial infarction or congestive heart failure. Results: Improvements in the misclassification rate using boosted classification trees were at best minor compared to when conventional classification trees were used. Minor to modest improvements to sensitivity were observed, with only a negligible reduction in specificity. For predicting cardiovascular mortality, boosted classification trees had high specificity, but low sensitivity. Conclusions: Gains in predictive accuracy for predicting cardiovascular outcomes were less impressive than gains in performance observed in the data mining literature.
机译:目的:分类树正越来越多地用于根据疾病或健康结果的存在与否对患者进行分类。分类树的局限性在于其有限的预测准确性。在数据挖掘和机器学习文献中,已经开发了增强算法来改进分类。使用分类树增强功能可在一系列经过加权的数据集中迭代地增加分类树。在给定的迭代中,在上一次迭代中被错误分类的主题比被正确分类的主题具有更高的权重。序列中每个分类树的分类通过加权多数投票进行组合,以产生最终分类。作者的目的是检验增强疗法是否可以提高分类树的准确性,以预测心血管疾病的预后。方法:我们检查了增强分类树在住院急性心肌梗塞或充血性心力衰竭患者30天死亡率结果分类中的作用。结果:与使用常规分类树相比,使用增强分类树对误分类率的改进最多是轻微的。观察到灵敏度有轻微或中等程度的提高,但特异性的下降却微不足道。为了预测心血管疾病的死亡率,增强分类树具有较高的特异性,但敏感性较低。结论:用于预测心血管结果的预测准确性的提高不如数据挖掘文献中观察到的性能提高那么令人印象深刻。

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