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医院出院数据中的种族和民族分类错误及其对佛罗里达州严重产妇发病率差异的影响。

Race and Ethnicity Misclassification in Hospital Discharge Data and the Impact on Differences in Severe Maternal Morbidity Rates in Florida.

机构信息

Chiles Center, College of Public Health, University of South Florida, Tampa, FL 33612, USA.

Department of Obstetrics & Gynecology, Morsani College of Medicine, University of South Florida, Tampa, FL 33612, USA.

出版信息

Int J Environ Res Public Health. 2023 Apr 30;20(9):5689. doi: 10.3390/ijerph20095689.

Abstract

Hospital discharge (HD) records contain important information that is used in public health and health care sectors. It is becoming increasingly common to rely mostly or exclusively on HD data to assess and monitor severe maternal morbidity (SMM) overall and by sociodemographic characteristics, including race and ethnicity. Limited studies have validated race and ethnicity in HD or provided estimates on the impact of assessing health differences in maternity populations. This study aims to determine the differences in race and ethnicity reporting between HD and birth certificate (BC) data for maternity hospitals in Florida and to estimate the impact of race and ethnicity misclassification on state- and hospital-specific SMM rates. We conducted a population-based retrospective study of live births using linked BC and HD records from 2016 to 2019 ( = 783,753). BC data were used as the gold standard. Race and ethnicity were categorized as non-Hispanic (NH)-White, NH-Black, Hispanic, NH-Asian Pacific Islander (API), and NH-American Indian or Alaskan Native (AIAN). Overall, race and ethnicity misclassification and its impact on SMM at the state- and hospital levels were estimated. At the state level, NH-AIAN women were the most misclassified (sensitivity: 28.2%; positive predictive value (PPV): 25.2%) and were commonly classified as NH-API (30.3%) in HD records. NH-API women were the next most misclassified (sensitivity: 57.3%; PPV: 85.4%) and were commonly classified as NH-White (5.8%) or NH-other (5.5%). At the hospital level, wide variation in sensitivity and PPV with negative skewing was identified, particularly for NH-White, Hispanic, and NH-API women. Misclassification did not result in large differences in SMM rates at the state level for all race and ethnicity categories except for NH-AIAN women (% difference 78.7). However, at the hospital level, Hispanic women had wide variability of a percent difference in SMM rates and were more likely to have underestimated SMM rates. Reducing race and ethnicity misclassification on HD records is key in assessing and addressing SMM differences and better informing surveillance, research, and quality improvement efforts.

摘要

医院出院(HD)记录包含用于公共卫生和医疗保健部门的重要信息。越来越常见的是,主要或完全依赖 HD 数据来评估和监测整体严重产妇发病率(SMM),并按社会人口特征(包括种族和族裔)进行监测。有限的研究已经验证了 HD 中的种族和族裔,或者提供了评估产妇人群健康差异的影响的估计。本研究旨在确定佛罗里达州产妇医院的 HD 和出生证明(BC)数据中种族和族裔报告之间的差异,并估计种族和族裔分类错误对州和医院特定 SMM 率的影响。我们对 2016 年至 2019 年的活产进行了基于人群的回顾性研究,使用了链接的 BC 和 HD 记录(n=783753)。BC 数据被用作金标准。种族和族裔被归类为非西班牙裔(NH)-白人、NH-黑人、西班牙裔、NH-亚太裔(API)和 NH-美洲印第安人或阿拉斯加原住民(AIAN)。总体而言,估计了州和医院级别种族和族裔分类错误及其对 SMM 的影响。在州一级,NH-AIAN 妇女的分类错误最多(敏感性:28.2%;阳性预测值(PPV):25.2%),在 HD 记录中通常被归类为 NH-API(30.3%)。NH-API 妇女的分类错误位居第二(敏感性:57.3%;PPV:85.4%),通常被归类为 NH-白人(5.8%)或 NH-其他(5.5%)。在医院一级,发现敏感性和 PPV 存在广泛的差异,呈负偏态分布,尤其是 NH-白人、西班牙裔和 NH-API 妇女。除了 NH-AIAN 妇女(差异百分比 78.7%)外,所有种族和族裔类别的 SMM 率差异都没有因分类错误而产生很大差异。然而,在医院一级,西班牙裔妇女的 SMM 率差异百分比变化很大,并且更有可能低估 SMM 率。减少 HD 记录中的种族和族裔分类错误是评估和解决 SMM 差异并更好地为监测、研究和质量改进工作提供信息的关键。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8c9/10178402/a6608ce4ba17/ijerph-20-05689-g001.jpg

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