Improving the classification of cardinality phenotypes using collections.

IF 1.6 3区 工程技术 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Journal of Biomedical Semantics Pub Date : 2023-08-07 DOI:10.1186/s13326-023-00290-y
Sarah M Alghamdi, Robert Hoehndorf
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Abstract

Motivation: Phenotypes are observable characteristics of an organism and they can be highly variable. Information about phenotypes is collected in a clinical context to characterize disease, and is also collected in model organisms and stored in model organism databases where they are used to understand gene functions. Phenotype data is also used in computational data analysis and machine learning methods to provide novel insights into disease mechanisms and support personalized diagnosis of disease. For mammalian organisms and in a clinical context, ontologies such as the Human Phenotype Ontology and the Mammalian Phenotype Ontology are widely used to formally and precisely describe phenotypes. We specifically analyze axioms pertaining to phenotypes of collections of entities within a body, and we find that some of the axioms in phenotype ontologies lead to inferences that may not accurately reflect the underlying biological phenomena.

Results: We reformulate the phenotypes of collections of entities using an ontological theory of collections. By reformulating phenotypes of collections in phenotypes ontologies, we avoid potentially incorrect inferences pertaining to the cardinality of these collections. We apply our method to two phenotype ontologies and show that the reformulation not only removes some problematic inferences but also quantitatively improves biological data analysis.

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利用集合改进基数表型的分类。
动机:表型是生物体的可观察特征,它们可以是高度可变的。在临床环境中收集有关表型的信息以表征疾病,也在模式生物中收集并存储在模式生物数据库中,用于了解基因功能。表型数据也用于计算数据分析和机器学习方法,为疾病机制提供新的见解,并支持疾病的个性化诊断。对于哺乳动物有机体和在临床环境中,本体,如人类表型本体和哺乳动物表型本体被广泛用于正式和精确地描述表型。我们特别分析了与身体内实体集合的表型有关的公理,我们发现表型本体论中的一些公理导致的推论可能不能准确反映潜在的生物现象。结果:我们使用集合的本体论理论重新制定实体集合的表型。通过在表型本体论中重新制定集合的表型,我们避免了与这些集合的基数性有关的潜在错误推论。我们将我们的方法应用于两种表型本体论,并表明重新表述不仅消除了一些有问题的推论,而且在定量上提高了生物学数据分析。
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来源期刊
Journal of Biomedical Semantics
Journal of Biomedical Semantics MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
4.20
自引率
5.30%
发文量
28
审稿时长
30 weeks
期刊介绍: Journal of Biomedical Semantics addresses issues of semantic enrichment and semantic processing in the biomedical domain. The scope of the journal covers two main areas: Infrastructure for biomedical semantics: focusing on semantic resources and repositories, meta-data management and resource description, knowledge representation and semantic frameworks, the Biomedical Semantic Web, and semantic interoperability. Semantic mining, annotation, and analysis: focusing on approaches and applications of semantic resources; and tools for investigation, reasoning, prediction, and discoveries in biomedicine.
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