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Mining Data from a Knowledge Management Perspective: An Application to Outcome Prediction in Patients with Resectable Hepatocellular Carcinoma

机译:从知识管理的角度挖掘数据:可切除肝细胞癌患者预后的应用

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This paper presents the use of data mining tools to derive a prognostic model of the outcome of resectable hepatocellular carcinoma. The main goal of the study was to summarize the experience gained over more than 20 years by a surgical team. To this end, two decision trees have been induced from data: a model Ml that contains a full set of prognostic rules derived from the data on the basis of the 20 available factors, and a model M2 that considers only the two most relevant factors. M1 will be used to explicit the knowledge embedded in the data (externalization), while the model M2 will be used to extract operational rules (socialization). The models performance has been compared with the one of a Naive Bayes classifier and have been validated by the expert physicians. The paper concludes that a knowledge management perspective improves the validity of data mining techniques in presence of small data sets, coming from severe pathologies with relative low incidence. In these cases, it is more crucial the quality of the extracted knowledge than the predictive accuracy gained.
机译:本文介绍了使用数据挖掘工具来得出可切除的肝细胞癌预后的预后模型。该研究的主要目的是总结外科团队在20多年中获得的经验。为此,已经从数据中得出了两个决策树:模型M1,其包含基于20个可用因素从数据中得出的完整的预后规则集;以及模型M2,其仅考虑了两个最相关的因素。 M1将用于显露嵌入在数据中的知识(外部化),而模型M2将用于提取操作规则(社会化)。该模型的性能已与朴素贝叶斯分类器之一进行了比较,并已通过专家医师的验证。本文得出的结论是,知识管理的观点提高了在存在小数据集的情况下数据挖掘技术的有效性,这些数据集来自发生率相对较低的严重病理情况。在这些情况下,提取的知识的质量比获得的预测准确性更为关键。

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