Implications of mappings between International Classification of Diseases clinical diagnosis codes and Human Phenotype Ontology terms.

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES JAMIA Open Pub Date : 2024-11-18 eCollection Date: 2024-12-01 DOI:10.1093/jamiaopen/ooae118
Amelia L M Tan, Rafael S Gonçalves, William Yuan, Gabriel A Brat, Robert Gentleman, Isaac S Kohane
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Abstract

Objective: Integrating electronic health record (EHR) data with other resources is essential in rare disease research due to low disease prevalence. Such integration is dependent on the alignment of ontologies used for data annotation. The international classification of diseases (ICD) is used to annotate clinical diagnoses, while the human phenotype ontology (HPO) is used to annotate phenotypes. Although these ontologies overlap in the biomedical entities they describe, the extent to which they are interoperable is unknown. We investigate how well aligned these ontologies are and whether such alignments facilitate EHR data integration.

Materials and methods: We conducted an empirical analysis of the coverage of mappings between ICD and HPO. We interpret this mapping coverage as a proxy for how easily clinical data can be integrated with research ontologies such as HPO. We quantify how exhaustively ICD codes are mapped to HPO by analyzing mappings in the unified medical language system (UMLS) Metathesaurus. We analyze the proportion of ICD codes mapped to HPO within a real-world EHR dataset.

Results and discussion: Our analysis revealed that only 2.2% of ICD codes have direct mappings to HPO in UMLS. Within our EHR dataset, less than 50% of ICD codes have mappings to HPO terms. ICD codes that are used frequently in EHR data tend to have mappings to HPO; ICD codes that represent rarer medical conditions are seldom mapped.

Conclusion: We find that interoperability between ICD and HPO via UMLS is limited. While other mapping sources could be incorporated, there are no established conventions for what resources should be used to complement UMLS.

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国际疾病分类临床诊断代码与人类表型本体术语之间映射的意义。
目的:由于罕见病发病率低,将电子健康记录(EHR)数据与其他资源整合起来对罕见病研究至关重要。这种整合取决于用于数据注释的本体的一致性。国际疾病分类 (ICD) 用于注释临床诊断,而人类表型本体 (HPO) 则用于注释表型。虽然这些本体在描述生物医学实体方面存在重叠,但它们之间的互操作性尚不清楚。我们研究了这些本体的一致性如何,以及这种一致性是否有助于电子病历数据的整合:我们对 ICD 和 HPO 之间的映射覆盖范围进行了实证分析。我们将这种映射覆盖率解释为临床数据与 HPO 等研究本体集成的难易程度。我们通过分析统一医学语言系统(UMLS)元词库(Metathesaurus)中的映射,量化了 ICD 代码与 HPO 之间映射的详尽程度。我们分析了现实世界电子病历数据集中映射到 HPO 的 ICD 代码比例:我们的分析表明,在 UMLS 中,只有 2.2% 的 ICD 代码与 HPO 有直接映射关系。在我们的电子病历数据集中,只有不到 50% 的 ICD 代码与 HPO 术语有映射关系。在电子病历数据中经常使用的 ICD 代码往往与 HPO 有映射关系;而代表罕见病症的 ICD 代码则很少有映射关系:我们发现,通过 UMLS 实现 ICD 和 HPO 之间的互操作性是有限的。结论:我们发现,通过 UMLS 实现 ICD 和 HPO 之间的互操作性是有限的。虽然可以纳入其他映射源,但对于应使用哪些资源来补充 UMLS,还没有既定的惯例。
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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
期刊最新文献
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