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Clustering WHO-ART Terms Using Semantic Distance and Machine Learning Algorithms

机译:使用语义距离和机器学习算法对WHO-ART术语进行聚类

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摘要

WHO-ART was developed by the WHO collaborating centre for international drug monitoring in order to code adverse drug reactions. We assume that computation of semantic distance between WHO-ART terms may be an efficient way to group related medical conditions in the WHO database in order to improve signal detection. Our objective was to develop a method for clustering WHO-ART terms according to some proximity of their meanings. Our material comprises 758 WHO-ART terms. A formal definition was acquired for each term as a list of elementary concepts belonging to SNOMED international axes and characterized by modifier terms in some cases. Clustering was implemented as a terminology service on a J2EE server. Two different unsupervised machine learning algorithms (KMeans, Pvclust) clustered WHO-ART terms according to a semantic distance operator previously described. Pvclust grouped 51% of WHO-ART terms. K-Means grouped 100% of WHO-ART terms but 25% clusters were heterogeneous with k = 180 clusters and 6% clusters were heterogeneous with k = 32 clusters. Clustering algorithms associated to semantic distance could suggest potential groupings of WHO-ART terms that need validation according to the user’s requirements.
机译:WHO-ART由WHO国际药物监测合作中心开发,用于编码不良药物反应。我们假设计算WHO-ART术语之间的语义距离可能是在WHO数据库中对相关医学状况进行分组以改善信号检测的有效方法。我们的目标是开发一种根据其含义的近似性将WHO-ART术语聚类的方法。我们的材料包含758个WHO-ART术语。每个术语都获得了一个正式定义,作为属于SNOMED国际坐标轴的基本概念的列表,在某些情况下还带有修饰语。集群被实现为J2EE服务器上的术语服务。根据先前描述的语义距离算子,两种不同的无监督机器学习算法(KMeans,Pvclust)将WHO-ART术语聚类。 Pvclust对WHO-ART条款中的51%进行了分组。 K-均值对WHO-ART术语进行了100%分组,但是25%的聚类是k = 180聚类,而6%的聚类是k = 32聚类。与语义距离相关的聚类算法可能会建议需要根据用户要求进行验证的WHO-ART术语的潜在分组。

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