谁怀孕了?在国家新冠肺炎队列协作组织(N3C)中定义基于真实世界数据的妊娠事件。

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES
JAMIA Open Pub Date : 2023-08-16 eCollection Date: 2023-10-01 DOI:10.1093/jamiaopen/ooad067
Sara E Jones, Katie R Bradwell, Lauren E Chan, Julie A McMurry, Courtney Olson-Chen, Jessica Tarleton, Kenneth J Wilkins, Victoria Ly, Saad Ljazouli, Qiuyuan Qin, Emily Groene Faherty, Yan Kwan Lau, Catherine Xie, Yu-Han Kao, Michael N Liebman, Federico Mariona, Anup P Challa, Li Li, Sarah J Ratcliffe, Melissa A Haendel, Rena C Patel, Elaine L Hill
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引用次数: 0

摘要

目的:在国家新冠肺炎队列协作组织(N3C)的电子健康记录(EHR)数据中定义妊娠事件并估计胎龄。材料和方法:我们开发了一种综合方法,命名为层次结构和基于规则的妊娠事件推断与妊娠进展特征(HIPPS)相结合,并将其应用于N3C中的EHR数据(2018年1月1日至2022年4月7日)。HIPPS结合了:(1)先前发表的妊娠发作算法的扩展,(2)检测进展中妊娠的妊娠年龄特异性特征以获得进一步发作支持的新算法,以及(3)妊娠开始日期推断。临床医生对一部分发作进行了HIPPS验证。然后,我们根据胎龄精度和妊娠结果生成妊娠队列,以评估准确性并比较新冠肺炎和其他特征。结果:我们确定了628 165名孕妇816人 471次妊娠,其中52.3%为活产,24.4%为其他结局(死胎、异位妊娠、堕胎),23.3%的结局未知。临床医生的验证结果表明,98.8%的患者符合HIPPS确定的发作。我们能够在1周内准确估计475的开始日期 433次(58.2%)。62 540例(7.7%)妊娠期发生新冠肺炎事件。讨论:HIPPS根据N3C数据为妊娠相关变量(如胎龄和妊娠结局)提供支持措施。妊娠年龄的精确性使研究人员能够以合理的信心找到事件的时间。结论:我们开发了一种新的、稳健的方法来推断妊娠事件和胎龄,以解决EHR数据中的数据不一致和缺失问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Who is pregnant? Defining real-world data-based pregnancy episodes in the National COVID Cohort Collaborative (N3C).

Who is pregnant? Defining real-world data-based pregnancy episodes in the National COVID Cohort Collaborative (N3C).

Who is pregnant? Defining real-world data-based pregnancy episodes in the National COVID Cohort Collaborative (N3C).

Who is pregnant? Defining real-world data-based pregnancy episodes in the National COVID Cohort Collaborative (N3C).

Objectives: To define pregnancy episodes and estimate gestational age within electronic health record (EHR) data from the National COVID Cohort Collaborative (N3C).

Materials and methods: We developed a comprehensive approach, named Hierarchy and rule-based pregnancy episode Inference integrated with Pregnancy Progression Signatures (HIPPS), and applied it to EHR data in the N3C (January 1, 2018-April 7, 2022). HIPPS combines: (1) an extension of a previously published pregnancy episode algorithm, (2) a novel algorithm to detect gestational age-specific signatures of a progressing pregnancy for further episode support, and (3) pregnancy start date inference. Clinicians performed validation of HIPPS on a subset of episodes. We then generated pregnancy cohorts based on gestational age precision and pregnancy outcomes for assessment of accuracy and comparison of COVID-19 and other characteristics.

Results: We identified 628 165 pregnant persons with 816 471 pregnancy episodes, of which 52.3% were live births, 24.4% were other outcomes (stillbirth, ectopic pregnancy, abortions), and 23.3% had unknown outcomes. Clinician validation agreed 98.8% with HIPPS-identified episodes. We were able to estimate start dates within 1 week of precision for 475 433 (58.2%) episodes. 62 540 (7.7%) episodes had incident COVID-19 during pregnancy.

Discussion: HIPPS provides measures of support for pregnancy-related variables such as gestational age and pregnancy outcomes based on N3C data. Gestational age precision allows researchers to find time to events with reasonable confidence.

Conclusion: We have developed a novel and robust approach for inferring pregnancy episodes and gestational age that addresses data inconsistency and missingness in EHR data.

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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
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