Leveraging SNOMED CT for patient cohort identification over heterogeneous EHR data.

Xubing Hao, Yan Huang, Licong Cui, Xiaojin Li
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Abstract

SNOMED CT is extensively employed to standardize data across diverse patient datasets and support cohort identification, with studies revealing its benefits and challenges. In this work, we developed a SNOMED CT-driven cohort query system over a heterogeneous Optum® de-identified COVID-19 Electronic Health Record dataset leveraging concept mappings between ICD-9-CM/ICD-10-CM and SNOMED CT. We evaluated the benefits and challenges of using SNOMED CT to perform cohort queries based on both query code sets and actual patients retrieved from the database, leveraging the original ICD-9-CM and ICD-10-CM as baselines. Manual review of 80 random cases revealed 65 cases containing 148 true positive codes and 25 cases containing 63 false positive codes. The manual evaluation also revealed issues in code naming, mappings, and hierarchical relations. Overall, our study indicates that while the SNOMED CT-driven query system holds considerable promise for comprehensive cohort queries, careful attention must be given to the challenges offalsely included codes and patients.

利用SNOMED CT对异构EHR数据进行患者队列识别。
SNOMED CT被广泛用于标准化不同患者数据集的数据,并支持队列识别,研究揭示了它的好处和挑战。在这项工作中,我们利用ICD-9-CM/ICD-10-CM与SNOMED CT之间的概念映射,在异构Optum®去识别的COVID-19电子健康记录数据集上开发了SNOMED CT驱动的队列查询系统。我们利用原始ICD-9-CM和ICD-10-CM作为基线,基于查询代码集和从数据库检索的实际患者,评估了使用SNOMED CT进行队列查询的好处和挑战。对80个随机病例进行人工审查,发现65个病例包含148个真阳性码,25个病例包含63个假阳性码。手工评估还揭示了代码命名、映射和层次关系中的问题。总的来说,我们的研究表明,尽管SNOMED ct驱动的查询系统对于全面的队列查询具有相当大的前景,但必须仔细注意错误包含代码和患者的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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