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国际疾病分类本体(ICDO)的开发及其在 COVID-19 诊断数据分析中的应用。

Development of the International Classification of Diseases Ontology (ICDO) and its application for COVID-19 diagnostic data analysis.

机构信息

University of Michigan Medical School, Ann Arbor, MI, 48109, USA.

OntoWise, Nanjing, Jiangsu, China.

出版信息

BMC Bioinformatics. 2021 Oct 18;22(Suppl 6):508. doi: 10.1186/s12859-021-04402-2.

Abstract

BACKGROUND

The 10th and 9th revisions of the International Statistical Classification of Diseases and Related Health Problems (ICD10 and ICD9) have been adopted worldwide as a well-recognized norm to share codes for diseases, signs and symptoms, abnormal findings, etc. The international Consortium for Clinical Characterization of COVID-19 by EHR (4CE) website stores diagnosis COVID-19 disease data using ICD10 and ICD9 codes. However, the ICD systems are difficult to decode due to their many shortcomings, which can be addressed using ontology.

METHODS

An ICD ontology (ICDO) was developed to logically and scientifically represent ICD terms and their relations among different ICD terms. ICDO is also aligned with the Basic Formal Ontology (BFO) and reuses terms from existing ontologies. As a use case, the ICD10 and ICD9 diagnosis data from the 4CE website were extracted, mapped to ICDO, and analyzed using ICDO.

RESULTS

We have developed the ICDO to ontologize the ICD terms and relations. Different from existing disease ontologies, all ICD diseases in ICDO are defined as disease processes to describe their occurrence with other properties. The ICDO decomposes each disease term into different components, including anatomic entities, process profiles, etiological causes, output phenotype, etc. Over 900 ICD terms have been represented in ICDO. Many ICDO terms are presented in both English and Chinese. The ICD10/ICD9-based diagnosis data of over 27,000 COVID-19 patients from 5 countries were extracted from the 4CE. A total of 917 COVID-19-related disease codes, each of which were associated with 1 or more cases in the 4CE dataset, were mapped to ICDO and further analyzed using the ICDO logical annotations. Our study showed that COVID-19 targeted multiple systems and organs such as the lung, heart, and kidney. Different acute and chronic kidney phenotypes were identified. Some kidney diseases appeared to result from other diseases, such as diabetes. Some of the findings could only be easily found using ICDO instead of ICD9/10.

CONCLUSIONS

ICDO was developed to ontologize ICD10/10 codes and applied to study COVID-19 patient diagnosis data. Our findings showed that ICDO provides a semantic platform for more accurate detection of disease profiles.

摘要

背景

国际疾病分类(ICD)第 10 次和第 9 次修订版已在全球范围内被采纳为一种公认的规范,用于共享疾病、体征和症状、异常发现等的代码。国际临床特征化 COVID-19 电子健康记录联盟(4CE)网站使用 ICD10 和 ICD9 代码存储 COVID-19 疾病诊断数据。然而,由于 ICD 系统存在许多缺陷,因此难以对其进行解码,这些缺陷可以通过本体论来解决。

方法

开发了 ICD 本体(ICDO)来逻辑和科学地表示 ICD 术语及其在不同 ICD 术语之间的关系。ICDO 还与基本形式本体(BFO)对齐,并重用现有本体中的术语。作为一个用例,从 4CE 网站提取 ICD10 和 ICD9 诊断数据,将其映射到 ICDO,并使用 ICDO 进行分析。

结果

我们开发了 ICDO 来对 ICD 术语和关系进行本体化。与现有的疾病本体不同,ICDO 中的所有 ICD 疾病都被定义为疾病过程,以描述它们与其他属性一起发生的情况。ICDO 将每个疾病术语分解为不同的组件,包括解剖实体、过程特征、病因、输出表型等。ICDO 中已表示超过 900 个 ICD 术语。许多 ICDO 术语同时以英文和中文呈现。从 4CE 中提取了来自 5 个国家的超过 27000 名 COVID-19 患者的基于 ICD10/ICD9 的诊断数据。共提取了 917 个与 COVID-19 相关的疾病代码,每个代码都与 4CE 数据集中的 1 个或多个病例相关联,将其映射到 ICDO 并使用 ICDO 逻辑注释进一步分析。我们的研究表明,COVID-19 靶向多个系统和器官,如肺、心脏和肾脏。确定了不同的急性和慢性肾脏表型。一些肾脏疾病似乎是由其他疾病引起的,如糖尿病。有些发现只能使用 ICDO 而不是 ICD9/10 才能轻松找到。

结论

开发了 ICDO 来对 ICD10/10 代码进行本体化,并将其应用于研究 COVID-19 患者诊断数据。我们的研究结果表明,ICDO 为更准确地检测疾病谱提供了一个语义平台。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3a60/8524793/50d427eb52b2/12859_2021_4402_Fig1_HTML.jpg

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