Cory Hussain, Laura J Podewils, Nancy Wittmer, Ann Boyer, Maria C Marin, Rebecca L Hanratty, Romana Hasnain-Wynia
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引用次数: 0
摘要
导言:由于上游无法收集高质量和准确的种族、民族和语言(REaL)数据,医疗差距可能会加剧。我们有机会弥补这些数据障碍。我们介绍了 2021 年实施的丹佛健康(DH)REaL 计划:丹佛健康是一个大型安全网医疗系统。在评估了丹佛健康的 REaL 数据状况后,我们开发了一个标准脚本,开展了培训,并调整了我们的电子健康记录,以收集这些信息,首先是个人的种族背景,然后是种族、民族和首选语言等问题。我们对 REaL 实施后的数据进行了完整性分析:在卫生部实施 REaL 之前和之后,共有 207490 名患者进行了至少一次亲自登记,我们对这些患者进行了分析。实施后,种族(7.9%-0.5%,p < .001)和民族(7.6%-0.3%,p < .001)数据的缺失率明显下降。语言数据的完整性也有所改善(3%-1.6%,p < .001)。实施一年后,我们对队列中超过 99% 的自认种族和民族有了了解:通过成功利用种族背景作为 REaL 数据收集的起点,我们的举措大大减少了数据缺失。
Leveraging Ethnic Backgrounds to Improve Collection of Race, Ethnicity, and Language Data.
Introduction: Healthcare disparities may be exacerbated by upstream incapacity to collect high-quality and accurate race, ethnicity, and language (REaL) data. There are opportunities to remedy these data barriers. We present the Denver Health (DH) REaL initiative, which was implemented in 2021.
Methods: Denver Health is a large safety net health system. After assessing the state of REaL data at DH, we developed a standard script, implemented training, and adapted our electronic health record to collect this information starting with an individual's ethnic background followed by questions on race, ethnicity, and preferred language. We analyzed the data for completeness after REaL implementation.
Results: A total of 207,490 patients who had at least one in-person registration encounter before and after the DH REaL implementation were included in our analysis. There was a significant decline in missing values for race (7.9%-0.5%, p < .001) and for ethnicity (7.6%-0.3%, p < .001) after implementation. Completely of language data also improved (3%-1.6%, p < .001). A year after our implementation, we knew over 99% of our cohort's self-identified race and ethnicity.
Conclusions: Our initiative significantly reduced missing data by successfully leveraging ethnic background as the starting point of our REaL data collection.
期刊介绍:
The Journal for Healthcare Quality (JHQ), a peer-reviewed journal, is an official publication of the National Association for Healthcare Quality. JHQ is a professional forum that continuously advances healthcare quality practice in diverse and changing environments, and is the first choice for creative and scientific solutions in the pursuit of healthcare quality. It has been selected for coverage in Thomson Reuter’s Science Citation Index Expanded, Social Sciences Citation Index®, and Current Contents®.
The Journal publishes scholarly articles that are targeted to leaders of all healthcare settings, leveraging applied research and producing practical, timely and impactful evidence in healthcare system transformation. The journal covers topics such as:
Quality Improvement • Patient Safety • Performance Measurement • Best Practices in Clinical and Operational Processes • Innovation • Leadership • Information Technology • Spreading Improvement • Sustaining Improvement • Cost Reduction • Payment Reform