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Mining Association Rules on Qing Court Medical Records: Semantic Abstraction and Standardization

机译:矿业协会关于清廷病历的规定:语义抽象和标准化

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摘要

To explore the association relations among disease, pathogenesis, physician, symptoms and drug, we adapt a variational Apriori algorithm for discovering association rules on a dataset of the Qing Court Medical Records. There are five types of semantic associations we intend to discover, including Disease-Pathogenesis-Drug set(DPaD), Disease-Symptoms-Drug set (DSyD), Disease-Drug set (DD), Disease-Physician-Drug set (DPhD) and Disease-Drug Category Set (DDC). To solve the synonymity problem and the data sparseness problem, we give a mapping strategy which maps pathogenesis to standardized forms and maps drugs to drug categories. With the mapping strategy the number of frequent drug sets rises from 287 to 1184. The experimental results indicate that our method with the mapping strategy is an effective way to acquire valuable semantic association rules.
机译:为了探索疾病,发病机理,医师,症状和药物之间的关联关系,我们采用变分Apriori算法来发现清宫病历数据集上的关联规则。我们打算发现五种类型的语义关联,包括疾病-发病机制-药物组(DPaD),疾病-症状-药物组(DSyD),疾病-药物组(DD),疾病-医师-药物组(DPhD)和疾病药物分类集(DDC)。为了解决同义词问题和数据稀疏问题,我们提供了一种映射策略,该映射策略将发病机制映射为标准化形式,并将药物映射为药物类别。使用映射策略,频繁使用的毒品集数量从287个增加到1184个。实验结果表明,我们的映射策略方法是获取有价值的语义关联规则的有效方法。

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