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首页> 外文期刊>Journal of Biomedical Semantics >Tackling the challenges of matching biomedical ontologies
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Tackling the challenges of matching biomedical ontologies

机译:应对匹配生物医学本体的挑战

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BackgroundBiomedical ontologies pose several challenges to ontology matching due both to the complexity of the biomedical domain and to the characteristics of the ontologies themselves. The biomedical tracks in the Ontology Matching Evaluation Initiative (OAEI) have spurred the development of matching systems able to tackle these challenges, and benchmarked their general performance. In this study, we dissect the strategies employed by matching systems to tackle the challenges of matching biomedical ontologies and gauge the impact of the challenges themselves on matching performance, using the AgreementMakerLight (AML) system as the platform for this study. ResultsWe demonstrate that the linear complexity of the hash-based searching strategy implemented by most state-of-the-art ontology matching systems is essential for matching large biomedical ontologies efficiently. We show that accounting for all lexical annotations (e.g., labels and synonyms) in biomedical ontologies leads to a substantial improvement in F-measure over using only the primary name, and that accounting for the reliability of different types of annotations generally also leads to a marked improvement. Finally, we show that cross-references are a reliable source of information and that, when using biomedical ontologies as background knowledge, it is generally more reliable to use them as mediators than to perform lexical expansion. ConclusionsWe anticipate that translating traditional matching algorithms to the hash-based searching paradigm will be a critical direction for the future development of the field. Improving the evaluation carried out in the biomedical tracks of the OAEI will also be important, as without proper reference alignments there is only so much that can be ascertained about matching systems or strategies. Nevertheless, it is clear that, to tackle the various challenges posed by biomedical ontologies, ontology matching systems must be able to efficiently combine multiple strategies into a mature matching approach.
机译:背景技术由于生物医学领域的复杂性和本体本身的特征,生物医学本体对本体匹配提出了若干挑战。本体匹配评估计划(OAEI)中的生物医学足迹刺激了能够应对这些挑战的匹配系统的开发,并确定了它们的总体性能。在这项研究中,我们使用AgreementMakerLight(AML)系统作为本研究的平台,剖析了匹配系统采用的策略来应对匹配生物医学本体的挑战,并评估挑战本身对匹配性能的影响。结果我们证明,由大多数最新的本体匹配系统实现的基于哈希的搜索策略的线性复杂性对于有效匹配大型生物医学本体至关重要。我们表明,考虑到生物医学本体中的所有词法注释(例如标签和同义词),与仅使用主名相比,F度量得到了显着改善,并且考虑到不同类型注释的可靠性通常也导致了明显改善。最后,我们证明了交叉引用是可靠的信息来源,并且当使用生物医学本体作为背景知识时,通常将它们用作中介而不是进行词法扩展更可靠。结论我们预期将传统的匹配算法转换为基于哈希的搜索范例将是该领域未来发展的关键方向。改进在OAEI的生物医学领域中进行的评估也很重要,因为如果没有正确的参考比对,就只能确定有关匹配系统或策略的太多信息。然而,很明显,为了解决生物医学本体提出的各种挑战,本体匹配系统必须能够有效地将多种策略组合成成熟的匹配方法。

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