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Summarizing and Visualizing Structural Changes during the Evolution of Biomedical Ontologies Using a Diff Abstraction Network

机译:使用Diff抽象网络总结和可视化生物医学本体演化过程中的结构变化

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摘要

Biomedical ontologies are a critical component in biomedical research and practice. As an ontology evolves, its structure and content change in response to additions, deletions and updates. When editing a biomedical ontology, small local updates may affect large portions of the ontology, leading to unintended and potentially erroneous changes. Such unwanted side effects often go unnoticed since biomedical ontologies are large and complex knowledge structures. Abstraction networks, which provide compact summaries of an ontology’s content and structure, have been used to uncover structural irregularities, inconsistencies and errors in ontologies. In this paper, we introduce Diff Abstraction Networks (“Diff AbNs”), compact networks that summarize and visualize global structural changes due to ontology editing operations that result in a new ontology release. A Diff AbN can be used to support curators in identifying unintended and unwanted ontology changes. The derivation of two Diff AbNs, the Diff Area Taxonomy and the Diff Partial-area Taxonomy, is explained and Diff Partial-area Taxonomies are derived and analyzed for the Ontology of Clinical Research, Sleep Domain Ontology, and Eagle-I Research Resource Ontology. Diff Taxonomy usage for identifying unintended erroneous consequences of quality assurance and ontology merging are demonstrated.
机译:生物医学本体论是生物医学研究和实践中的关键组成部分。随着本体的发展,其结构和内容随添加,删除和更新而变化。在编辑生物医学本体时,小的局部更新可能会影响本体的大部分,从而导致意外的和潜在的错误更改。由于生物医学本体是庞大而复杂的知识结构,因此通常不会引起人们的注意。抽象网络提供了本体的内容和结构的紧凑摘要,已被用来发现本体中的结构不规则,不一致和错误。在本文中,我们介绍了Diff抽象网络(“ Diff AbNs”),这些紧凑的网络总结和可视化了由于本体编辑操作导致的新本体发布而导致的全局结构变化。 Diff AbN可用于支持策展人识别意外的和不想要的本体更改。解释了两个Diff AbN的推导:Diff区域分类法和Diff局部区域分类法,并推导并分析了Diff局部区域分类法用于临床研究,睡眠域本体和Eagle-I研究资源本体。演示了区分分类法用于识别质量保证和本体合并的意外错误后果的方法。

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