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理解基于出生国家和语言数据的 COVID-19 健康差异。

Understanding COVID-19 Health Disparities With Birth Country and Language Data.

机构信息

Division of Epidemiology & Community Health, School of Public Health, University of Minnesota, Minneapolis, Minnesota.

HealthPartners Institute, Bloomington, Minnesota.

出版信息

Am J Prev Med. 2023 Dec;65(6):993-1002. doi: 10.1016/j.amepre.2023.06.018. Epub 2023 Jul 4.

Abstract

INTRODUCTION

Understanding of COVID-19-related disparities in the U.S. is largely informed by traditional race/ethnicity categories that mask important social group differences. This analysis utilizes granular information on patients' country of birth and preferred language from a large health system to provide more nuanced insights into health disparities.

METHODS

Data from patients seeking care from a large Midwestern health system between January 1, 2019 and July 31, 2021 and COVID-19-related events occurring from March 18, 2020 to July 31, 2021 were used to describe COVID-19 disparities. Statistics were performed between January 1, 2022 and March 15, 2023. Age-adjusted generalized linear models estimated RR across race/ethnicity, country of birth grouping, preferred language, and multiple stratified groups.

RESULTS

The majority of the 1,114,895 patients were born in western advanced economies (58.6%). Those who were Hispanic/Latino, were born in Latin America and the Caribbean, and preferred Spanish language had highest RRs of infection and hospitalization. Black-identifying patients born in sub-Saharan African countries had a higher risk of infection than their western advanced economies counterparts. Subanalyses revealed elevated hospitalization and death risk for White-identifying patients from Eastern Europe and Central Asia and Asian-identifying patients from Southeast Asia and the Pacific. All non-English languages had a higher risk of all COVID-19 outcomes, most notably Hmong and languages from Burma/Myanmar.

CONCLUSIONS

Stratifications by country of birth grouping and preferred language identified culturally distinct groups whose vulnerability to COVID-19 would have otherwise been masked by traditional racial/ethnic labels. Routine collection of these data is critical for identifying social groups at high risk and for informing linguistically and culturally relevant interventions.

摘要

简介

美国对 COVID-19 相关差异的理解在很大程度上依赖于传统的种族/族裔类别,这些类别掩盖了重要的社会群体差异。本分析利用来自大型医疗系统的患者出生国和首选语言的详细信息,提供更细致入微的健康差异洞察。

方法

使用 2019 年 1 月 1 日至 2021 年 7 月 31 日期间从一家大型中西部医疗系统寻求护理的患者的数据,以及 2020 年 3 月 18 日至 2021 年 7 月 31 日发生的与 COVID-19 相关的事件,来描述 COVID-19 差异。统计数据于 2023 年 1 月 1 日至 3 月 15 日之间进行。年龄调整的广义线性模型估计了种族/族裔、出生国分组、首选语言和多个分层群体之间的 RR。

结果

1114895 名患者中,大多数(58.6%)出生于西方发达经济体。那些西班牙裔/拉丁裔、出生于拉丁美洲和加勒比地区、并首选西班牙语的人,感染和住院的 RR 最高。出生于撒哈拉以南非洲国家的黑人患者比出生于西方发达经济体的黑人患者感染的风险更高。亚组分析显示,来自东欧和中亚的白人患者以及来自东南亚和太平洋地区的亚裔患者的住院和死亡风险更高。所有非英语语言的 COVID-19 结局风险更高,尤以苗族和缅甸/缅甸语为甚。

结论

按出生国分组和首选语言进行分层,确定了具有文化差异的群体,如果仅依赖传统的种族/族裔标签,这些群体的 COVID-19 易感性可能会被掩盖。常规收集这些数据对于确定高风险社会群体以及为语言和文化相关干预措施提供信息至关重要。

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