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Mining Diagnostic Taxonomy Using Interval-Based Similarity from Clinical Databases

机译:使用基于间隔的相似度从临床数据库中挖掘诊断分类法

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摘要

Experts' reasoning in which selects the final diagnosis from many candidates consists of hierarchical differential diagnosis. In other words, candidates gives a sophisticated hiearchical taxonomy, usally described as a tree. In this paper, the characteristics of experts' rules are closely examined from the viewpoint of hiearchical decision steps and and a new approach to rule mining with extraction of diagnostic taxonomy from medical datasets is introduced. The key elements of this approach are calculation of the characterization set of each decision attribute (a given class) and the similarities between characterization sets. From the relations between similarities, tree-based taxonomy is obtained, which includes enough information for diagnostic rules.
机译:专家从许多候选者中选择最终诊断的推理包括分层差异诊断。换句话说,候选人给出了复杂的等级分类法,通常被称为一棵树。本文从分层决策步骤的角度对专家规则的特征进行了深入研究,并提出了一种从医学数据集中提取诊断分类法的规则挖掘新方法。该方法的关键要素是计算每个决策属性(给定类别)的特征集以及特征集之间的相似性。从相似性之间的关系中,可以获得基于树的分类法,其中包括了足够的诊断规则信息。

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