A Semantic Approach to Describe Social and Economic Characteristics That Impact Health Outcomes (Social Determinants of Health): Ontology Development Study.

Daniela Dally, Muhammad Amith, Rebecca L Mauldin, Latisha Thomas, Yifang Dang, Cui Tao
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Abstract

Background: Social determinants of health (SDoH) have been described by the World Health Organization as the conditions in which individuals are born, live, work, and age. These conditions can be grouped into 3 interrelated levels known as macrolevel (societal), mesolevel (community), and microlevel (individual) determinants. The scope of SDoH expands beyond the biomedical level, and there remains a need to connect other areas such as economics, public policy, and social factors.

Objective: Providing a computable artifact that can link health data to concepts involving the different levels of determinants may improve our understanding of the impact SDoH have on human populations. Modeling SDoH may help to reduce existing gaps in the literature through explicit links between the determinants and biological factors. This in turn can allow researchers and clinicians to make better sense of data and discover new knowledge through the use of semantic links.

Methods: An experimental ontology was developed to represent knowledge of the social and economic characteristics of SDoH. Information from 27 literature sources was analyzed to gather concepts and encoded using Web Ontology Language, version 2 (OWL2) and Protégé. Four evaluators independently reviewed the ontology axioms using natural language translation. The analyses from the evaluations and selected terminologies from the Basic Formal Ontology were used to create a revised ontology with a broad spectrum of knowledge concepts ranging from the macrolevel to the microlevel determinants.

Results: The literature search identified several topics of discussion for each determinant level. Publications for the macrolevel determinants centered around health policy, income inequality, welfare, and the environment. Articles relating to the mesolevel determinants discussed work, work conditions, psychosocial factors, socioeconomic position, outcomes, food, poverty, housing, and crime. Finally, sources found for the microlevel determinants examined gender, ethnicity, race, and behavior. Concepts were gathered from the literature and used to produce an ontology consisting of 383 classes, 109 object properties, and 748 logical axioms. A reasoning test revealed no inconsistent axioms.

Conclusions: This ontology models heterogeneous social and economic concepts to represent aspects of SDoH. The scope of SDoH is expansive, and although the ontology is broad, it is still in its early stages. To our current understanding, this ontology represents the first attempt to concentrate on knowledge concepts that are currently not covered by existing ontologies. Future direction will include further expanding the ontology to link with other biomedical ontologies, including alignment for granular semantics.

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描述影响健康结果的社会和经济特征(健康的社会决定因素)的语义方法:本体开发研究。
背景:世界卫生组织将健康的社会决定因素(SDoH)描述为个人出生、生活、工作和衰老的条件。这些条件可分为三个相互关联的层面,即宏观层面(社会)、中观层面(社区)和微观层面(个人)的决定因素。SDoH 的范围超出了生物医学层面,仍然需要将经济、公共政策和社会因素等其他领域联系起来:提供一种可计算的工具,将健康数据与涉及不同层面决定因素的概念联系起来,可以提高我们对 SDoH 对人群影响的理解。通过将决定因素与生物因素明确联系起来,建立 SDoH 模型可有助于缩小文献中的现有差距。这反过来又能让研究人员和临床医生更好地理解数据,并通过使用语义链接发现新知识:方法:开发了一个实验性本体论,用于表示有关 SDoH 的社会和经济特征的知识。我们分析了 27 篇文献来源的信息以收集概念,并使用网络本体语言第 2 版(OWL2)和 Protégé 进行编码。四名评估员使用自然语言翻译对本体公理进行了独立审查。评估分析结果和从基本形式本体中选取的术语被用于创建一个经过修订的本体,其中包含从宏观层面到微观层面决定因素的广泛知识概念:文献检索为每个决定因素层次确定了几个讨论主题。有关宏观决定因素的文献主要集中在卫生政策、收入不平等、福利和环境方面。与中观决定因素有关的文章讨论了工作、工作条件、社会心理因素、社会经济地位、结果、食品、贫困、住房和犯罪。最后,微观决定因素的资料来源包括性别、民族、种族和行为。从文献中收集的概念被用于创建本体论,本体论由 383 个类、109 个对象属性和 748 个逻辑公理组成。推理测试表明没有不一致的公理:本体对不同的社会和经济概念进行了建模,以表示 SDoH 的各个方面。SDoH 的范围很广,虽然本体很宽泛,但仍处于早期阶段。就我们目前的理解而言,本体论代表了对现有本体论未涵盖的知识概念的首次集中尝试。未来的发展方向将包括进一步扩展本体,与其他生物医学本体建立联系,包括细粒度语义的对齐。
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