Learning Cost-Sensitive Decision Trees to Support Medical Diagnosis

A. Freitas, A. Pereira
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Abstract

Classification plays an important role in medicine, especially for medical diagnosis. Real-world medical applications often require classifiers that minimize the total cost, including costs for wrong diagnosis (misclassifications costs) and diagnostic test costs (attribute costs). There are indeed many reasons for considering costs in medicine, as diagnostic tests are not free and health budgets are limited. In this chapter, the authors have defined strategies for cost-sensitive learning. They have developed an algorithm for decision tree induction that considers various types of costs, including test costs, delayed costs and costs associated with risk. Then they have applied their strategy to train and to evaluate cost-sensitive decision trees in medical data. Generated trees can be tested following some strategies, including group costs, common costs, and individual costs. Using the factor of “risk” it is possible to penalize invasive or delayed tests and obtain patient-friendly decision trees.
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学习成本敏感决策树以支持医学诊断
分类在医学中起着重要的作用,尤其是在医学诊断中。现实世界的医疗应用通常需要将总成本最小化的分类器,包括错误诊断成本(错误分类成本)和诊断测试成本(属性成本)。确实有很多理由考虑医疗费用,因为诊断测试不是免费的,卫生预算有限。在本章中,作者定义了成本敏感学习的策略。他们开发了一种决策树归纳算法,该算法考虑了各种类型的成本,包括测试成本、延迟成本和与风险相关的成本。然后,他们将他们的策略应用于训练和评估医疗数据中的成本敏感决策树。生成的树可以按照一些策略进行测试,包括组成本、公共成本和个体成本。利用“风险”因素,可以惩罚侵入性或延迟的测试,并获得对患者友好的决策树。
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