医学疾病诊断中二元分类的不对称误差控制

Wasif Bokhari, A. Bansal
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引用次数: 0

摘要

在二元分类应用中,例如医学疾病诊断,一种错误的成本可能大大超过另一种错误的成本,从而需要非对称错误控制。由于这个问题的独特性,其中一个错误大大超过另一个错误,传统的机器学习技术,即使精度大大提高,也可能不是理想的,因为它们不能提供一种将假阴性控制在一定阈值以下的方法。针对这一需求,提出了一种能将假阴性控制在一定阈值内的分类算法。该算法的理论基础是基于Neyman-Pearson (NP)引理,该引理用于构建一种新的基于树的分类器,实现非对称误差控制。该分类器是根据Framingham心脏研究获得的数据进行评估的,它预测十年心脏病的风险,不仅提高了准确性和F1分数,而且完全控制了假阴性的数量。这种具有非对称误差控制的基于树的分类器在预测心脏病的准确性方面有所提高,可以减轻人群的心脏病负担,并可能挽救许多人的生命。用于构建该分类器的方法可以扩展到医学疾病诊断中的更多用例。
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Asymmetric Error Control for Binary Classification in Medical Disease Diagnosis
In binary classification applications, such as medical disease diagnosis, the cost of one type of error could greatly outweigh the other enabling the need of asymmetric error control. Due to this unique nature of the problem, where one error greatly outweighs the other, traditional machine learning techniques, even with much improved accuracy, may not be ideal as they do not provide a way to control the false negatives below a certain threshold. To address this need, a classification algorithm that can control the false negatives to a certain threshold is proposed. The theoretical foundation for this algorithm is based on Neyman-Pearson (NP) Lemma, which is used to construct a novel tree-based classifier that enables asymmetric error control. This classifier is evaluated on the data obtained from the Framingham heart study and it predicts the risk of a ten-year cardiac disease, not only with improved accuracy and F1 score but also with full control over the number of false negatives. With an improved accuracy in predicting cardiac disease, this tree-based classifier with asymmetric error control can reduce the burden of cardiac disease in populations and potentially save a lot of human lives. The methodology used to construct this classifier can be expanded to many more use cases in medical disease diagnosis.
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