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方法学:回顾性提高种族/民族数据质量:范围综述。

Methods for retrospectively improving race/ethnicity data quality: a scoping review.

机构信息

Section for Health Equity, Department of Population Health, NYU Grossman School of Medicine, New York, NY 10016, United States.

NYU Langone Health Sciences Library, NYU Grossman School of Medicine New York, NY 10016, United States.

出版信息

Epidemiol Rev. 2023 Dec 20;45(1):127-139. doi: 10.1093/epirev/mxad002.

Abstract

Improving race and ethnicity (hereafter, race/ethnicity) data quality is imperative to ensure underserved populations are represented in data sets used to identify health disparities and inform health care policy. We performed a scoping review of methods that retrospectively improve race/ethnicity classification in secondary data sets. Following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines, searches were conducted in the MEDLINE, Embase, and Web of Science Core Collection databases in July 2022. A total of 2 441 abstracts were dually screened, 453 full-text articles were reviewed, and 120 articles were included. Study characteristics were extracted and described in a narrative analysis. Six main method types for improving race/ethnicity data were identified: expert review (n = 9; 8%), name lists (n = 27, 23%), name algorithms (n = 55, 46%), machine learning (n = 14, 12%), data linkage (n = 9, 8%), and other (n = 6, 5%). The main racial/ethnic groups targeted for classification were Asian (n = 56, 47%) and White (n = 51, 43%). Some form of validation evaluation was included in 86 articles (72%). We discuss the strengths and limitations of different method types and potential harms of identified methods. Innovative methods are needed to better identify racial/ethnic subgroups and further validation studies. Accurately collecting and reporting disaggregated data by race/ethnicity are critical to address the systematic missingness of relevant demographic data that can erroneously guide policymaking and hinder the effectiveness of health care practices and intervention.

摘要

提高种族和族裔(以下简称种族/族裔)数据质量对于确保服务不足的人群在用于识别健康差距和为医疗保健政策提供信息的数据集中得到代表至关重要。我们对回顾性改进二级数据集种族/族裔分类的方法进行了范围界定审查。根据系统评价和荟萃分析的首选报告项目指南,于 2022 年 7 月在 MEDLINE、Embase 和 Web of Science 核心合集数据库中进行了搜索。对 2441 篇摘要进行了双重筛选,对 453 篇全文文章进行了审查,共纳入 120 篇文章。研究特征以叙述性分析的形式提取并描述。确定了六种主要的改进种族/族裔数据的方法类型:专家审查(n=9;8%)、名称列表(n=27,23%)、名称算法(n=55,46%)、机器学习(n=14,12%)、数据链接(n=9,8%)和其他(n=6,5%)。主要针对分类的种族/族裔群体是亚裔(n=56,47%)和白人(n=51,43%)。有 86 篇文章(72%)包含某种形式的验证评估。我们讨论了不同方法类型的优缺点以及已确定方法的潜在危害。需要创新的方法来更好地识别种族/族裔亚群,并进一步进行验证研究。准确收集和报告按种族/族裔分类的细分数据对于解决相关人口数据的系统缺失至关重要,这些数据可能会错误地指导决策制定,并阻碍医疗保健实践和干预措施的有效性。

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