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Use of the recursive-rule extraction algorithm with continuous attributes to improve diagnostic accuracy in thyroid disease

机译:具有连续属性的递归规则提取算法的使用可提高甲状腺疾病的诊断准确性

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摘要

Thyroid diseases, which often lead to thyroid dysfunction involving either hypo- or hyperthyroidism, affect hundreds of millions of people worldwide, many of whom remain undiagnosed; however, diagnosis is difficult because symptoms are similar to those seen in a number of other conditions. The objective of this study was to assess the effectiveness of the Recursive-Rule Extraction (Re-RX) algorithm with continuous attributes (Continuous Re-RX) in extracting highly accurate, concise, and interpretable classification rules for the diagnosis of thyroid disease. We used the 7200-sample Thyroid dataset from the University of California Irvine Machine Learning Repository, a large and highly imbalanced dataset that comprises both discrete and continuous attributes. We trained the dataset using Continuous Re-RX, and after obtaining the maximum training and test accuracies, the number of extracted rules, and the average number of antecedents, we compared the results with those of other extraction methods. Our results suggested that Continuous Re-RX not only achieved the highest accuracy for diagnosing thyroid disease compared with the other methods, but also provided simple, concise, and interpretable rules. Based on these results, we believe that the use of Continuous Re-RX in machine learning may assist healthcare professionals in the diagnosis of thyroid disease. Highlights ? Proposed a Recursive-Rule Extraction algorithm with continuous attributes. ? Extracting accurate, concise, and interpretable rules for thyroid disease diagnosis. ? Not only achieved very high accuracy, also extracted concise and interpretable rules. ? Highly accurate rules expected to assist physicians for thyroid dysfunction diagnosis.
机译:甲状腺疾病通常会导致甲状腺功能低下,涉及甲状腺功能低下或甲状腺功能亢进症,它影响着全世界成千上万的人,其中许多人仍未被诊断。然而,由于症状与在许多其他情况下所见相似,因此诊断很困难。这项研究的目的是评估具有连续属性的递归规则提取(Re-RX)算法(Continuous Re-RX)在提取高度准确,简洁且可解释的甲状腺疾病诊断分类规则中的有效性。我们使用了来自加州大学尔湾分校机器学习存储库的7200个样本的甲状腺数据集,这是一个大型且高度不平衡的数据集,包含离散和连续属性。我们使用连续Re-RX训练了数据集,并获得了最大的训练和测试精度,提取规则的数量以及平均先例数量后,我们将结果与其他提取方法进行了比较。我们的结果表明,与其他方法相比,Continuous Re-RX不仅在诊断甲状腺疾病方面获得了最高的准确性,而且还提供了简单,简明和可解释的规则。基于这些结果,我们认为在机器学习中使用连续Re-RX可能有助于医疗保健专业人员诊断甲状腺疾病。强调 ?提出了具有连续属性的递归规则提取算法。 ?提取准确,简明和可解释的甲状腺疾病诊断规则。 ?不仅获得了很高的准确性,而且提取了简明易懂的规则。 ?预计将有高度准确的规则可帮助医生诊断甲状腺功能障碍。

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