在美国邮政编码地区一级确定与阿片类药物相关和丙型肝炎病毒相关的住院治疗的相关因素:一项生态和建模研究。

IF 25.4 1区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Lancet Public Health Pub Date : 2024-06-01 DOI:10.1016/S2468-2667(24)00076-8
Fatih Gezer, Kerry A Howard, Alain H Litwin, Natasha K Martin, Lior Rennert
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引用次数: 0

摘要

背景:阿片类药物过量及相关疾病仍是美国日益严重的公共卫生危机。需要确定与不良健康结果相关的社会结构和其他背景因素,以改进预测模型,为政策和干预措施提供依据。我们旨在确定高风险社区,以便有针对性地提供阿片类药物使用障碍和丙型肝炎病毒(HCV)筛查和预防干预措施:在这项生态和建模研究中,我们拟合了混合效应负二项回归模型,以确定美国南卡罗来纳州邮政编码表区(ZCTA)中与阿片类药物相关和丙型肝炎病毒相关的住院治疗的相关因素,并对其进行预测。研究纳入了 2016 年 1 月 1 日至 2021 年 12 月 31 日期间居住在南卡罗来纳州的所有 18 岁或以上的人。与阿片类药物相关和与丙型肝炎病毒相关的住院治疗数据以及其他个人层面的变量数据均来自医疗索赔记录,这些记录来自南卡罗来纳州收入和财政事务办公室。人口和社会经济变量来自美国人口普查局(2021 年美国社区调查),其他结构性医疗保健障碍数据来自南卡罗来纳州农村和初级医疗保健中心以及美国医院目录:2016年1月1日至2021年12月31日期间,41 691人因滥用阿片类药物住院,26 860人因丙型肝炎病毒住院。每个 ZCTA 的阿片类药物相关住院病例中位数为 80 例(IQR 24-213 例),HCV 相关住院病例中位数为 61 例(21-196 例)。ZCTA 级无保险率(相对风险 1-24 [95% CI 1-17-1-31])、贫困率(1-24 [1-17-1-31])、死亡率(1-18 [1-12-1-25])和社会脆弱性指数(1-17 [1-10-1-24])的标准差增加与阿片类相关住院率和 HCV 相关住院率的增加显著相关。ZCTA水平收入(0-79 [0-75-0-84])和失业率(0-87 [0-82-0-93])的标准差增加与阿片类相关和HCV相关综合住院率的降低显著相关。使用 2016-20 年住院病例作为训练数据,我们的模型预测 2021 年 ZCTA 级阿片类药物相关住院病例的准确率中位数为 80-4%(IQR 66-8-91-1),预测 2021 年 HCV 相关住院病例的准确率中位数为 75-2%(61-2-87-7)。我们还确定了几个服务不足的高风险地区,以便采取有针对性的干预措施:我们的研究结果表明,来自经济条件较差和医疗资源不足社区的个人更有可能发生与阿片类药物或丙型肝炎病毒相关的住院治疗。结合住院预测,我们的结果可用于识别高风险、服务不足的社区,并将其列为优先事项,以便提供实地干预:南卡罗来纳州农村和初级医疗保健中心、美国国家药物滥用研究所和美国国家医学图书馆。
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Identification of factors associated with opioid-related and hepatitis C virus-related hospitalisations at the ZIP code area level in the USA: an ecological and modelling study.

Background: Opioid overdose and related diseases remain a growing public health crisis in the USA. Identifying sociostructural and other contextual factors associated with adverse health outcomes is needed to improve prediction models to inform policy and interventions. We aimed to identify high-risk communities for targeted delivery of screening and prevention interventions for opioid use disorder and hepatitis C virus (HCV).

Methods: In this ecological and modelling study, we fit mixed-effects negative binomial regression models to identify factors associated with, and predict, opioid-related and HCV-related hospitalisations for ZIP code tabulation areas (ZCTAs) in South Carolina, USA. All individuals aged 18 years or older living in South Carolina from Jan 1, 2016, to Dec 31, 2021, were included. Data on opioid-related and HCV-related hospitalisations, as well as data on additional individual-level variables, were collected from medical claims records, which were obtained from the South Carolina Revenue and Fiscal Affairs Office. Demographic and socioeconomic variables were obtained from the United States Census Bureau (American Community Survey, 2021) with additional structural health-care barrier data obtained from South Carolina's Center for Rural and Primary Health Care, and the American Hospital Directory.

Findings: Between Jan 1, 2016, and Dec 31, 2021, 41 691 individuals were hospitalised for opioid misuse and 26 860 were hospitalised for HCV. There were a median of 80 (IQR 24-213) opioid-related hospitalisations and 61 (21-196) HCV-related hospitalisations per ZCTA. A standard deviation increase in ZCTA-level uninsured rate (relative risk 1·24 [95% CI 1·17-1·31]), poverty rate (1·24 [1·17-1·31]), mortality (1·18 [1·12-1·25]), and social vulnerability index (1·17 [1·10-1·24]) was significantly associated with increased combined opioid-related and HCV-related hospitalisation rates. A standard deviation increase in ZCTA-level income (0·79 [0·75-0·84]) and unemployment rate (0·87 [0·82-0·93]) was significantly associated with decreased combined opioid-related and HCV-related hospitalisations. Using 2016-20 hospitalisations as training data, our models predicted ZCTA-level opioid-related hospitalisations in 2021 with a median of 80·4% (IQR 66·8-91·1) accuracy and HCV-related hospitalisations in 2021 with a median of 75·2% (61·2-87·7) accuracy. Several underserved high-risk ZCTAs were identified for delivery of targeted interventions.

Interpretation: Our results suggest that individuals from economically disadvantaged and medically under-resourced communities are more likely to have an opioid-related or HCV-related hospitalisation. In conjunction with hospitalisation forecasts, our results could be used to identify and prioritise high-risk, underserved communities for delivery of field-level interventions.

Funding: South Carolina Center for Rural and Primary Healthcare, National Institute on Drug Abuse, and National Library of Medicine.

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来源期刊
Lancet Public Health
Lancet Public Health Medicine-Public Health, Environmental and Occupational Health
CiteScore
55.60
自引率
0.80%
发文量
305
审稿时长
8 weeks
期刊介绍: The Lancet Public Health is committed to tackling the most pressing issues across all aspects of public health. We have a strong commitment to using science to improve health equity and social justice. In line with the values and vision of The Lancet, we take a broad and inclusive approach to public health and are interested in interdisciplinary research. We publish a range of content types that can advance public health policies and outcomes. These include Articles, Review, Comment, and Correspondence. Learn more about the types of papers we publish.
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