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疾病术语系统在欧盟中对罕见病和指定孤儿药治疗适应症进行映射的可行性研究。

Feasibility of disease terminology systems for mapping orphan conditions and therapeutic indications of designated orphan medicines in the European Union.

机构信息

Dutch Medicines Evaluation Board, Utrecht, the Netherlands.

National IT Institute for Healthcare (Nictiz), the Hague, the Netherlands.

出版信息

Eur J Pharm Sci. 2024 Nov 1;202:106871. doi: 10.1016/j.ejps.2024.106871. Epub 2024 Aug 5.

Abstract

BACKGROUND

In the European Union, rare diseases are defined as diseases that affect maximum 5 in 10,000 citizens. These diseases are typically associated with a high unmet medical need. To stimulate development and authorisation of medicines for rare diseases ('orphan conditions'), the European Commission (EC) can grant orphan designations. In order to enable systematic evaluation and communication of the diseases for which designated orphan medicines have (not) been developed and authorised, we aimed to investigate the feasibility of important disease terminology systems for mapping orphan conditions and therapeutic indications.

METHODS

We selected all designated orphan medicines that were authorised by the EC during 2022-2023 from the EC's Union Register of medicinal products. For these medicines, we extracted orphan conditions and associated therapeutic indications at initial marketing authorisation. The orphan conditions and separate elements of therapeutic indications such as target disease or condition, severity criteria and target population were assessed for availability in six major disease terminology systems: ICD-10, ICD-11, MedDRA, MeSH, Orphanet nomenclature of rare diseases, and SNOMED CT. Descriptive statistics were used to describe the ability of each disease terminology system to map orphan conditions and elements of therapeutic indications.

RESULTS

During 2022-2023, 37 designated orphan medicines were authorised that were designated for 40 orphan conditions (of which 37 unique) and granted 39 therapeutic indications (of which 37 unique). Overall, SNOMED CT covered most descriptions of orphan conditions (33/37, 89 %) and target diseases or conditions within therapeutic indications (28/37, 76 %). However, when allowing descriptions to be partly included and/or complemented by additional words, SNOMED CT, the Orphanet nomenclature, ICD-11 and MedDRA all had high coverage (92-97 %). Other elements than target diseases or conditions within therapeutic indications were mostly lacking.

CONCLUSIONS

Regulatory data concerning orphan conditions and therapeutic indications of designated orphan medicines seem to be best covered by SNOMED CT. However, which disease terminology system best facilitates systematic evaluation and communication about development and authorisation of designated orphan medicines also depends on the specific use case. Given the frequent use of SNOMED CT in healthcare settings, it may also facilitate interoperability between regulatory and healthcare data, while for example ICD-11 may be better suited to generate statistics concerning drug development for rare diseases.

摘要

背景

在欧盟,罕见病被定义为影响每 10000 人中最多 5 人的疾病。这些疾病通常与未满足的高医疗需求有关。为了刺激罕见病药物(“孤儿药”)的开发和授权,欧盟委员会 (EC) 可以授予孤儿药称号。为了能够系统地评估和交流已开发和授权指定孤儿药的疾病,我们旨在研究重要疾病术语系统对映射孤儿病和治疗适应症的可行性。

方法

我们从欧盟委员会的药品统一注册处选择了 2022-2023 年期间由欧盟委员会授权的所有指定孤儿药。对于这些药物,我们在初始营销授权时提取了孤儿病和相关治疗适应症。评估了孤儿病和治疗适应症的单独元素,如目标疾病或病症、严重程度标准和目标人群,以评估它们在六个主要疾病术语系统中的可用性:ICD-10、ICD-11、MedDRA、MeSH、Orphanet 罕见病命名法和 SNOMED CT。使用描述性统计来描述每个疾病术语系统映射孤儿病和治疗适应症元素的能力。

结果

在 2022-2023 年期间,有 37 种指定的孤儿药被授权,这些药物被指定用于 40 种孤儿病(其中 37 种是独特的)和 39 种治疗适应症(其中 37 种是独特的)。总体而言,SNOMED CT 涵盖了大多数孤儿病(33/37,89%)和治疗适应症内的目标疾病或病症(28/37,76%)的描述。然而,当允许描述部分包含和/或由其他词补充时,SNOMED CT、Orphanet 命名法、ICD-11 和 MedDRA 都具有很高的覆盖率(92-97%)。治疗适应症内的目标疾病或病症以外的其他元素大多缺乏。

结论

关于指定孤儿药的孤儿病和治疗适应症的监管数据似乎最好由 SNOMED CT 覆盖。然而,哪种疾病术语系统最能促进指定孤儿药的开发和授权的系统评估和交流,也取决于具体的使用情况。鉴于 SNOMED CT 在医疗保健环境中的频繁使用,它可能有助于监管和医疗保健数据之间的互操作性,而例如 ICD-11 可能更适合生成有关罕见病药物开发的统计数据。

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