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Accuracy of rule extraction using a recursive-rule extraction algorithm with continuous attributes combined with a sampling selection technique for the diagnosis of liver disease

机译:使用具有连续属性的递归规则提取算法结合采样选择技术来诊断肝脏疾病的规则提取准确性

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Although liver cancer is the second most common cause of death from cancer worldwide, because of the limited accuracy and interpretability of extracted classification rules, the diagnosis of liver disease remains difficult. In addition, hepatitis, which is inflammation of the liver, can progress to fibrosis, cirrhosis, or even liver cancer. Numerous methods for diagnosing liver disease have been applied, but most current diagnostic methods are black box models that cannot adequately reveal information hidden in the data. In the medical setting, extracted rules must be not only highly accurate, but also highly interpretable. The Recursive-Rule eXtraction (Re-RX) algorithm is a white box model that generates highly accurate and interpretable classification rules on the basis of both discrete and continuous attributes; however, it tends to generate more rules than other rule extraction algorithms. The objectives of this study were to use a new rule extraction algorithm, Continuous Re-RX combined with sampling selection techniques (Sampling-Continuous Re-RX), to achieve highly accurate and interpretable diagnostic rules for the BUPA and Hepatitis datasets and to quantify the associations between the presence and severity of ascites and serum biomarkers with the risk of developing hepatitis in consideration of Child-Pugh scores. The performance of Sampling-Continuous Re-RX was compared with existing techniques, and as a result, it was found to extract more accurate, concise, and interpretable rules for the BUPA and Hepatitis datasets compared with previous extraction algorithms. In addition, the rules extracted using the proposed method were close to the trade-off curve, which indicated that they were more accurate and interpretable, and therefore more suitable in the medical setting. Highlights ? Proposed a sampling-continuous Re-RX algorithm. ? Extracted accurate and concise rules from BUPA dataset. ? Extracted accurate and concise rules from Hepatitis dataset. ? Showed a trade-off curve between accuracy and interpretability.
机译:尽管肝癌是全世界第二大最常见的癌症死因,但由于提取的分类规则的准确性和可解释性有限,肝病的诊断仍然很困难。另外,肝炎是肝的炎症,可发展为纤维化,肝硬化,甚至肝癌。已经应用了许多诊断肝脏疾病的方法,但是大多数当前的诊断方法是黑匣子模型,无法充分揭示数据中隐藏的信息。在医疗环境中,提取的规则不仅必须高度准确,而且必须具有高度的可解释性。递归规则提取(Re-RX)算法是一种白盒模型,可基于离散和连续属性生成高度准确且可解释的分类规则。但是,与其他规则提取算法相比,它倾向于生成更多规则。这项研究的目的是使用一种新的规则提取算法,Continuous Re-RX与采样选择技术(Sampling-Continuous Re-RX)相结合,以实现针对BUPA和肝炎数据集的高度准确且可解释的诊断规则并量化考虑到Child-Pugh评分,腹水和血清生物标志物的存在与严重程度与发生肝炎的风险之间的相关性。将采样连续Re-RX的性能与现有技术进行了比较,结果发现,与以前的提取算法相比,它可以为BUPA和肝炎数据集提取更准确,简洁和可解释的规则。另外,使用所提出的方法提取的规则接近权衡曲线,这表明它们更准确和可解释,因此更适合医疗环境。强调 ?提出了一种采样连续的Re-RX算法。 ?从BUPA数据集中提取准确而简洁的规则。 ?从肝炎数据集中提取准确简明的规则。 ?显示了准确性和可解释性之间的折衷曲线。

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