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Variable selection using the optimal ROC curve: An application to a traditional Chinese medicine study on osteoporosis disease

机译:使用最佳ROC曲线进行变量选择:在骨质疏松症中药研究中的应用

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摘要

In biomedical studies, there are multiple sources of information available of which only a small number of them are associated with the diseases. It is of importance to select and combine these factors that are associated with the disease in order to predict the disease status of a new subject. The receiving operating characteristic (ROC) technique has been widely used in disease classification, and the classification accuracy can be measured with area under the ROC curve (AUC). In this article, we combine recent variable selection methods with AUC methods to optimize diagnostic accuracy of multiple risk factors. We first describe one new and some recent AUC-based methods for effectively combining multiple risk factors for disease classification. We then apply them to analyze the data from a new clinical study, investigating whether a combination of traditional Chinese medicine symptoms and standard Western medicine risk factors can increase discriminative accuracy in diagnosing osteoporosis (OP). Based on the results, we conclude that we can make a better diagnosis of primary OP by combining traditional Chinese medicine symptoms with Western medicine risk factors.
机译:在生物医学研究中,有多种可用的信息来源,其中只有少数与疾病有关。重要的是选择和组合与疾病相关的这些因素,以便预测新受试者的疾病状态。接收操作特征(ROC)技术已广泛用于疾病分类中,并且分类精度可以使用ROC曲线(AUC)下的面积进行测量。在本文中,我们将最新的变量选择方法与AUC方法相结合,以优化多种风险因素的诊断准确性。我们首先描述一种新的和一些最近的基于AUC的方法,以有效地组合多种疾病分类的危险因素。然后,我们将它们应用于一项新的临床研究中的数据分析,以研究中医症状和标准西药危险因素的组合是否可以提高诊断骨质疏松症(OP)的判别准确性。根据结果​​,我们得出结论,通过将中医症状与西医危险因素结合起来,可以更好地诊断原发性OP。

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