首页> 外文期刊>Drug safety: An international journal of medical toxicology and drug experience >An Evaluation of the THIN Database in the OMOP Common Data Model for Active Drug Safety Surveillance.
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An Evaluation of the THIN Database in the OMOP Common Data Model for Active Drug Safety Surveillance.

机译:主动药物安全监控的OMOP通用数据模型中的THIN数据库评估。

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There has been increased interest in using multiple observational databases to understand the safety profile of medical products during the postmarketing period. However, it is challenging to perform analyses across these heterogeneous data sources. The Observational Medical Outcome Partnership (OMOP) provides a Common Data Model (CDM) for organizing and standardizing databases. OMOP's work with the CDM has primarily focused on US databases. As a participant in the OMOP Extended Consortium, we implemented the OMOP CDM on the UK Electronic Healthcare Record database-The Health Improvement Network (THIN).The aim of the study was to evaluate the implementation of the THIN database in the OMOP CDM and explore its use for active drug safety surveillance.Following the OMOP CDM specification, the raw THIN database was mapped into a CDM THIN database. Ten Drugs of Interest (DOI) and nine Health Outcomes of Interest (HOI), defined and focused by the OMOP, were created using the CDM THIN database. Quantitative comparison of raw THIN to CDM THIN was performed by execution and analysis of OMOP standardized reports and additional analyses. The practical value of CDM THIN for drug safety and pharmacoepidemiological research was assessed by implementing three analysis methods: Proportional Reporting Ratio (PRR), Univariate Self-Case Control Series (USCCS) and High-Dimensional Propensity Score (HDPS). A published study using raw THIN data was selected to examine the external validity of CDM THIN.Overall demographic characteristics were the same in both databases. Mapping medical and drug codes into the OMOP terminology dictionary was incomplete: 25?% medical codes and 55?% drug codes in raw THIN were not listed in the OMOP terminology dictionary, representing 6?% condition occurrence counts, 4?% procedure occurrence counts and 7?% drug exposure counts in raw THIN. Seven DOIs had <0.3?% and three DOIs had 1?% of unmapped drug exposure counts; each HOI had at least one definition with no or minimal (≤0.2?%) issues with unmapped condition occurrence counts, except for the upper gastrointestinal (UGI) ulcer hospitalization cohort. The application of PRR, USCCS and HDPS found, respectively, a sensitivity of 67, 78 and 50?%, and a specificity of 68, 59 and 76?%, suggesting that safety issues defined as known by the OMOP could be identified in CDM THIN, with imperfect performance. Similar PRR scores were produced using both CDM THIN and raw THIN, while the execution time was twice as fast on CDM THIN. There was close replication of demographic distribution, death rate and prescription pattern and trend in the published study population and the cohort of CDM THIN.This research demonstrated that information loss due to incomplete mapping of medical and drug codes as well as data structure in the current CDM THIN limits its use for all possible epidemiological evaluation studies. Current HOIs and DOIs predefined by the OMOP were constructed with minimal loss of information and can be used for active surveillance methodological research. The OMOP CDM THIN can be a valuable tool for multiple aspects of pharmacoepidemiological research when the unique features of UK Electronic Health Records are incorporated in the OMOP library.
机译:在上市后期间,越来越需要使用多个观察性数据库来了解医疗产品的安全性。但是,跨这些异构数据源执行分析具有挑战性。观察性医疗成果合作伙伴关系(OMOP)提供了用于组织和标准化数据库的通用数据模型(CDM)。 OMOP与CDM的合作主要集中在美国数据库上。作为OMOP扩展联盟的参与者,我们在英国电子医疗记录数据库-健康改善网络(THIN)上实施了OMOP CDM。该研究的目的是评估OMOP CDM中THIN数据库的实施并探索按照OMOP CDM规范,原始THIN数据库映射到CDM THIN数据库。使用CDM THIN数据库创建了由OMOP定义和关注的十种感兴趣的药物(DOI)和九种感兴趣的健康结果(HOI)。通过执行和分析OMOP标准化报告以及进行其他分析,对原始THIN与CDM THIN进行了定量比较。通过实施三种分析方法,对CDM THIN在药物安全性和药物流行病学研究中的实用价值进行了评估:比例报告率(PRR),单变量自病例对照系列(USCCS)和高维度倾向得分(HDPS)。选择了使用原始THIN数据的已发表研究来检查CDM THIN的外部有效性。两个数据库的总体人口统计学特征相同。将医学和药品代码映射到OMOP术语词典中是不完整的:原始THIN中未列出25%的医学代码和55%的药物代码在OMOP术语词典中未列出,代表6%的情况发生计数,4%的过程发生计数原始THIN中有7%的药物暴露量。未映射的药物暴露计数中有7个DOI占<0.3%,而3个DOI占1%。除了上消化道(UGI)溃疡住院队列外,每个HOI至少具有一个定义,没有或没有最小(≤0.2%%)的问题发生情况。 PRR,USCCS和HDPS的应用分别发现灵敏度为67%,78%和50%,特异性为68%,59%和76%,这表明可以在CDM中识别OMOP定义的安全问题。薄,性能欠佳。使用CDM THIN和原始THIN可以产生相似的PRR分数,而执行时间是CDM THIN的两倍。在已发表的研究人群和CDM THIN队列中,人口分布,死亡率,处方模式和趋势有着密切的重复性。这项研究表明,由于当前医学和药物代码以及数据结构的不完整映射,导致信息丢失CDM THIN限制了其在所有可能的流行病学评估研究中的使用。 OMOP预先定义的当前HOI和DOI的构建,信息丢失最少,可用于主动监视方法学研究。如果将英国电子健康记录的独特功能合并到OMOP库中,那么OMOP CDM THIN可以成为药物流行病学研究多个方面的宝贵工具。

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