Development and Validation of Case-Ascertainment Algorithms for Hypertensive Disorders of Pregnancy Using Longitudinal Electronic Health Records Data.

IF 5.2 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Yeyi Zhu, Emily Z Wang, Amanda N Ngo, Mara B Greenberg, Assiamira Ferrara
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引用次数: 0

Abstract

Objectives: Hypertensive disorders of pregnancy (HDP), including chronic hypertension, gestational hypertension, and preeclampsia/eclampsia, is a leading cause of maternal and perinatal morbidity. Accurate identification of individual HDP subtypes in electronic health records (EHRs) is critical for research and surveillance but remains a challenge. We aimed to develop and validate EHR-based case-ascertainment algorithms for individual HDP conditions using medical chart review.

Study design and setting: We conducted a validation study within the Blood Pressure in Pregnancy, Obesity, Diabetes and Perinatal Outcomes (BIPOD) cohort at Kaiser Permanente Northern California, comprising 441,147 singleton pregnancies from 2011 to 2021. Using a stratified sampling approach, we selected 980 pregnancies for medical chart review: 200 chronic hypertension, 280 gestational hypertension, 300 preeclampsia/eclampsia, and 200 normotensive pregnancies. Following the American College of Obstetricians and Gynecologists diagnosis criteria, we developed HDP case-ascertainment algorithms incorporating clinician diagnosis codes, antihypertensive medications, systolic/diastolic blood pressure, and laboratory test results. Normotension was defined as not meeting HDP definitions throughout pregnancy. Positive predictive value (PPV), negative predictive value (NPV), sensitivity, and specificity were calculated, with weighting to account for sampling design. Minimum validity thresholds were set as 80% PPV, 90% NPV, 80% sensitivity, and 90% specificity.

Results: Algorithms for chronic and gestational hypertension demonstrated high diagnostic validity across all definitions, with all performance statistics exceeding the minimum thresholds. All definitions were retained in the final algorithms for chronic hypertension [weighted PPV: 87.0% (95% CI 86.4%-87.6%), NPV: 99.5% (99.5%-99.5%); sensitivity: 84.9% (84.2%-85.5%); specificity 99.6% (99.6%-99.6%)] and gestational hypertension [weighted PPV 91.4% (91.1%-91.7%); NPV: 99.5% (99.5%-99.5%); sensitivity: 94.0% (93.7%-94.2%); specificity: 99.3% (99.2%-99.3%)]. For preeclampsia/eclampsia, only the definition using inpatient diagnosis had acceptable validity (PPV: 94.9%), while definitions using outpatient diagnoses or laboratory results had poor PPV (0.0%-8.0%). Weighted performance for the preeclampsia/eclampsia final algorithm using inpatient diagnosis was high: PPV 94.9% (94.5%-95.2%); NPV 99.5% (99.5%-99.5%); sensitivity 88.8% (88.3%-89.3%); specificity 99.8% (99.8%-99.8%). Similarly, normotensive had high validation performance: PPV 99.5% (99.5%-99.5%); NPV 91.4% (91.2%-91.7%); sensitivity 98.6% (98.6%-98.7%); specificity 96.7% (96.5%-96.8%).

Conclusion: EHR-based case-ascertainment algorithms for HDP demonstrated high validity in a large, diverse population. These algorithms can facilitate accurate HDP phenotyping in population-based studies.

基于纵向电子健康记录数据的妊娠期高血压疾病病例确定算法的开发和验证。
目的:妊娠期高血压疾病(HDP),包括慢性高血压、妊娠期高血压和先兆子痫/子痫,是孕产妇和围产期发病的主要原因。在电子健康记录(EHRs)中准确识别单个HDP亚型对研究和监测至关重要,但仍然是一个挑战。我们的目的是开发和验证基于ehr的病例确定算法,用于使用医疗图表审查单个HDP条件。研究设计和环境:我们在Kaiser Permanente北加州的妊娠、肥胖、糖尿病和围产期结局中的血压(BIPOD)队列中进行了一项验证研究,包括2011年至2021年的441147例单胎妊娠。采用分层抽样方法,我们选择980例妊娠进行病历回顾:200例慢性高血压,280例妊娠高血压,300例先兆子痫/子痫,200例正常妊娠。根据美国妇产科医师学会的诊断标准,我们开发了HDP病例确定算法,结合临床医生诊断代码、抗高血压药物、收缩压/舒张压和实验室检测结果。妊娠期间血压正常者定义为不符合HDP定义。计算阳性预测值(PPV)、阴性预测值(NPV)、敏感性和特异性,并对抽样设计进行加权。最低效度阈值设定为80% PPV、90% NPV、80%敏感性和90%特异性。结果:慢性和妊娠高血压的算法在所有定义中都显示出很高的诊断有效性,所有性能统计都超过了最低阈值。慢性高血压的最终算法保留了所有定义[加权PPV: 87.0% (95% CI: 86.4%-87.6%), NPV: 99.5% (99.5%-99.5%);灵敏度:84.9% (84.2% ~ 85.5%);特异性99.6%(99.6% ~ 99.6%)]和妊娠期高血压[加权PPV 91.4% (91.1% ~ 91.7%)];净现值:99.5% (99.5% ~ 99.5%);灵敏度:94.0% (93.7% ~ 94.2%);特异性:99.3%(99.2% ~ 99.3%)。对于子痫前期/子痫,只有使用住院诊断的定义具有可接受的效度(PPV: 94.9%),而使用门诊诊断或实验室结果的定义PPV较差(0.0%-8.0%)。采用住院诊断的子痫前期/子痫最终算法的加权表现较高:PPV为94.9% (94.5%-95.2%);净现值99.5% (99.5% ~ 99.5%);敏感性88.8% (88.3% ~ 89.3%);特异性99.8%(99.8% ~ 99.8%)。同样,normmotensive具有较高的验证性能:PPV为99.5% (99.5%-99.5%);净现值91.4% (91.2%-91.7%);灵敏度98.6% (98.6% ~ 98.7%);特异性96.7%(96.5% ~ 96.8%)。结论:基于ehr的HDP病例确定算法在大量不同人群中显示出高有效性。这些算法可以在基于人群的研究中促进准确的HDP表型。
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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来源期刊
Journal of Clinical Epidemiology
Journal of Clinical Epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
12.00
自引率
6.90%
发文量
320
审稿时长
44 days
期刊介绍: The Journal of Clinical Epidemiology strives to enhance the quality of clinical and patient-oriented healthcare research by advancing and applying innovative methods in conducting, presenting, synthesizing, disseminating, and translating research results into optimal clinical practice. Special emphasis is placed on training new generations of scientists and clinical practice leaders.
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