An ontology network for Diabetes Mellitus in Mexico.

IF 1.6 3区 工程技术 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Cecilia Reyes-Peña, Mireya Tovar, Maricela Bravo, Regina Motz
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引用次数: 4

Abstract

Background: Medical experts in the domain of Diabetes Mellitus (DM) acquire specific knowledge from diabetic patients through monitoring and interaction. This allows them to know the disease and information about other conditions or comorbidities, treatments, and typical consequences of the Mexican population. This indicates that an expert in a domain knows technical information about the domain and contextual factors that interact with it in the real world, contributing to new knowledge generation. For capturing and managing information about the DM, it is necessary to design and implement techniques and methods that allow: determining the most relevant conceptual dimensions and their correct organization, the integration of existing medical and clinical information from different resources, and the generation of structures that represent the deduction process of the doctor. An Ontology Network is a collection of ontologies of diverse knowledge domains which can be interconnected by meta-relations. This article describes an Ontology Network for representing DM in Mexico, designed by a proposed methodology. The information used for Ontology Network building include the ontological resource reuse and non-ontological resource transformation for ontology design and ontology extending by natural language processing techniques. These are medical information extracted from vocabularies, taxonomies, medical dictionaries, ontologies, among others. Additionally, a set of semantic rules has been defined within the Ontology Network to derive new knowledge.

Results: An Ontology Network for DM in Mexico has been built from six well-defined domains, resulting in new classes, using ontological and non-ontological resources to offer a semantic structure for assisting in the medical diagnosis process. The network comprises 1367 classes, 20 object properties, 63 data properties, and 4268 individuals from seven different ontologies. Ontology Network evaluation was carried out by verifying the purpose for its design and some quality criteria.

Conclusions: The composition of the Ontology Network offers a set of well-defined ontological modules facilitating the reuse of one or more of them. The inclusion of international vocabularies as SNOMED CT or ICD-10 reinforces the representation by international standards. It increases the semantic interoperability of the network, providing the opportunity to integrate other ontologies with the same vocabularies. The ontology network design methodology offers a guide for ontology developers about how to use ontological and non-ontological resources in order to exploit the maximum of information and knowledge from a set of domains that share or not information.

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墨西哥糖尿病本体网络。
背景:糖尿病领域的医学专家通过监测和互动从糖尿病患者那里获得特定的知识。这使他们能够了解墨西哥人口的疾病和其他条件或合并症、治疗和典型后果的信息。这表明某一领域的专家了解有关该领域的技术信息,以及在现实世界中与之交互的上下文因素,有助于新知识的产生。为了获取和管理关于DM的信息,有必要设计和实现以下技术和方法:确定最相关的概念维度及其正确组织,整合来自不同资源的现有医学和临床信息,以及生成代表医生演绎过程的结构。本体网络是不同知识领域的本体的集合,这些本体可以通过元关系相互连接。本文描述了一个用于表示墨西哥DM的本体网络,该网络由一种提出的方法设计。构建本体网络所使用的信息包括本体资源重用和非本体资源转换,用于本体设计和利用自然语言处理技术对本体进行扩展。这些是从词汇表、分类法、医学词典、本体论等中提取的医学信息。此外,在本体网络中定义了一套语义规则来派生新的知识。结果:墨西哥DM的本体网络已经从六个定义良好的领域建立起来,产生了新的类,使用本体和非本体资源提供了一个语义结构,以协助医疗诊断过程。该网络包括来自7个不同本体的1367个类、20个对象属性、63个数据属性和4268个个体。通过验证本体网络的设计目的和一些质量标准,对本体网络进行评价。结论:本体网络的组成提供了一组定义良好的本体模块,便于其中一个或多个模块的重用。包括国际词汇,如SNOMED CT或ICD-10,加强了国际标准的表示。它增加了网络的语义互操作性,提供了将具有相同词汇表的其他本体集成的机会。本体网络设计方法为本体开发人员提供了如何使用本体和非本体资源的指导,以便从一组共享或不共享信息的领域中最大限度地利用信息和知识。
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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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