Computational Phenotyping of OMOP CDM Normalized EHR for Prenatal and Postpartum Episodes: An Informatics Framework and Clinical Implementation on All of Us.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Tianchu Lyu, Chen Liang
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Abstract

The use of Electronic Health Records (EHR) in pregnancy care and obstetrics-gynecology (OB/GYN) research has increased in recent years. In pregnancy, timing is important because clinical characteristics, risks, and patient management are different in each stage of pregnancy. However, the difficulty of accurately differentiating pregnancy episodes and temporal information of clinical events presents unique challenges for EHR phenotyping. In this work, we introduced the concept of time relativity and proposed a comprehensive framework of computational phenotyping for prenatal and postpartum episodes based on the Observational Medical Outcomes Partnership (OMOP) Common Data Model (CDM). We implemented it on the All of Us national EHR database and identified 6,280 pregnancies with accurate start and end dates among 5,399 female patients. With the ability to identify different episodes in pregnancy care, this framework provides new opportunities for phenotyping complex clinical events and gestational morbidities for pregnant women, thus improving maternal and infant health.

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产前和产后发作的 OMOP CDM 归一化电子病历的计算表型:我们所有人的信息学框架和临床实施。
近年来,电子健康记录(EHR)在孕期保健和妇产科(OB/GYN)研究中的应用越来越多。在孕期,由于每个阶段的临床特征、风险和患者管理都不同,因此时间安排非常重要。然而,难以准确区分妊娠发作和临床事件的时间信息给电子病历表型带来了独特的挑战。在这项工作中,我们引入了时间相对性的概念,并基于观察性医疗结果合作组织(OMOP)通用数据模型(CDM)提出了产前和产后事件计算表型的综合框架。我们在 All of Us 国家电子病历数据库中实施了这一方法,并在 5399 名女性患者中识别出了 6280 例具有准确开始和结束日期的妊娠。该框架能够识别孕期护理的不同阶段,为孕妇复杂临床事件和妊娠期疾病的表型分析提供了新的机会,从而改善了母婴健康。
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