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Improved ontology-based similarity calculations using a study-wise annotation model

机译:使用研究式注释模型的改进的基于本体的相似度计算

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摘要

A typical use case of ontologies is the calculation of similarity scores between items that are annotated with classes of the ontology. For example, in differential diagnostics and disease gene prioritization, the human phenotype ontology (HPO) is often used to compare a query phenotype profile against gold-standard phenotype profiles of diseases or genes. The latter have long been constructed as flat lists of ontology classes, which, as we show in this work, can be improved by exploiting existing structure and information in annotation datasets or full text disease descriptions. We derive a study-wise annotation model of diseases and genes and show that this can improve the performance of semantic similarity measures. Inferred weights of individual annotations are one reason for this improvement, but more importantly using the study-wise structure further boosts the results of the algorithms according to precision-recall analyses. We test the study-wise annotation model for diseases annotated with classes from the HPO and for genes annotated with gene ontology (GO) classes. We incorporate this annotation model into similarity algorithms and show how this leads to improved performance. This work adds weight to the need for enhancing simple list-based representations of disease or gene annotations. We show how study-wise annotations can be automatically derived from full text summaries of disease descriptions and from the annotation data provided by the GO Consortium and how semantic similarity measure can utilize this extended annotation model. >Database URL:
机译:本体的一个典型用例是用本体的类注释的项目之间的相似性分数的计算。例如,在差异诊断和疾病基因优先排序中,人类表型本体(HPO)通常用于比较查询表型图与疾病或基因的金标准表型图。后者长期以来被构造为本体类的平面列表,正如我们在本文中所显示的,可以通过利用注释数据集中或全文疾病描述中的现有结构和信息来进行改进。我们推导了疾病和基因的研究性注释模型,并表明这可以提高语义相似性度量的性能。单个注释的推断权重是实现此改进的原因之一,但更重要的是,根据精确调用分析,使用研究型结构进一步提高了算法的结果。我们针对HPO类注释的疾病和基因本体论(GO)类注释的基因测试了研究性注释模型。我们将此注释模型合并到相似性算法中,并说明了它如何导致性能提高。这项工作增加了对增强疾病或基因注释的基于列表的简单表示的需求。我们展示了如何从疾病描述的全文摘要以及GO联合会提供的注释数据中自动得出研究型注释,以及语义相似性度量如何利用此扩展注释模型。 >数据库网址

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