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Expert knowledge integration in the data mining process with application to cardiovascular risk assessment

机译:数据挖掘过程中的专家知识集成,可应用于心血管疾病风险评估

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The data mining process, when applied to clinical databases, suffers from critical data problems, from noisy acquisitions to missing or incomplete data points. Expert knowledge, in the form of practitioners' experience and clinical guidelines, is already used to manually correct some of these problems, while enhancing expert's confidence in such systems. In this work, we propose the Knowledge-Biased Tree (KB3), a knowledge biased decision tree inducer that is able to exploit IF THEN rules to guide the tree inducing process. The KB3 approach was tested against its unbiased counterpart, the C5.0 algorithm in the cardiovascular risk assessment task. Using a clinical dataset provided by the hospital of Sta Cruz (Lisbon, Portugal) the performance of the proposed algorithm is compared against the unbiased C5.0 and the state of the art risk score used in clinical practice (GRACE risk score).
机译:数据挖掘过程在应用于临床数据库时会遇到严重的数据问题,从嘈杂的采集到丢失或不完整的数据点。以从业者的经验和临床指南的形式提供的专家知识已被用于手动纠正其中的一些问题,同时增强了专家对此类系统的信心。在这项工作中,我们提出了知识偏向树(KB3),这是一种知识偏向的决策树归纳器,能够利用IF THEN规则来指导树的归纳过程。针对心血管疾病评估任务中的无偏见C5.0算法,对KB3方法进行了测试。使用由Sta Cruz医院(葡萄牙里斯本)提供的临床数据集,将提出的算法的性能与无偏C5.0和临床实践中使用的最新风险评分(GRACE风险评分)进行比较。

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