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Evaluating Large-Scale Biomedical Ontology Matching Over Parallel Platforms

机译:评估并行平台上的大规模生物医学本体匹配

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摘要

Biomedical systems have been using ontology matching as a primary technique for heterogeneity resolution. However, the natural intricacy and vastness of biomedical data have compelled biomedical ontologies to become large-scale and complex; consequently, biomedical ontology matching has become a computationally intensive task. Our parallel heterogeneity resolution system, i.e., SPHeRe, is built to cater the performance needs of ontology matching by exploiting the parallelism-enabled multicore nature of today's desktop PC and cloud infrastructure. In this paper, we present the execution and evaluation results of SPHeRe over large-scale biomedical ontologies. We evaluate our system by integrating it with the interoperability engine of a clinical decision support system (CDSS), which generates matching requests for large-scale NCI, FMA, and SNOMED-CT biomedical ontologies. Results demonstrate that our methodology provides an impressive performance speedup of 4.8 and 9.5times over a quad-core desktop PC and a four virtual machine (VM) cloud platform, respectively.
机译:生物医学系统已经使用本体匹配作为解决异质性的主要技术。然而,生物医学数据的自然复杂性和巨大性迫使生物医学本体论变得大规模和复杂。因此,生物医学本体匹配已成为计算密集型任务。我们的并行异质性解析系统SPHeRe通过利用当今台式机PC和云基础架构的支持并行性的多核特性来满足本体匹配的性能需求。在本文中,我们介绍了SPHeRe在大规模生物医学本体上的执行和评估结果。我们通过将其与临床决策支持系统(CDSS)的互操作性引擎集成来评估我们的系统,该引擎会生成针对大型NCI,FMA和SNOMED-CT生物医学本体的匹配请求。结果表明,我们的方法在四核台式机和四个虚拟机(VM)云平台上分别提供了令人印象深刻的4.8和9.5倍的性能加速。

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