开发一个框架,用于识别风险因素和估算可归因于医疗相关感染的疾病直接经济负担:中国结核病医院案例研究。

IF 4 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Nili Ren, Xinliang Liu, Yi Luo, Guofei Li, Ying Huang, Desheng Ji, Cheng Peng, Jing Sun, Hao Li
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引用次数: 0

摘要

医疗相关感染(HAIs)是一项重大的全球健康负担,需要有效的框架来识别潜在的风险因素并估算相应的直接经济疾病负担。在本文中,我们通过在中国湖北省一家结核病(TB)医院开展的案例研究,利用 2018 年至 2019 年的数据,提出了一个旨在满足这些需求的框架。我们制定了一个全面的多步骤程序,包括伦理申请、纳入参与者、风险因素识别和直接经济疾病负担估算。在案例研究中,获得了伦理批准,并对患者数据进行了匿名处理,以确保隐私。研究期间的所有肺结核住院患者均被纳入研究范围,并在筛选纳入和排除标准后被分为有 HAIs 和无 HAIs 两组。通过单变量和多变量分析确定关键风险因素,包括性别、年龄和侵入性手术。然后,采用倾向得分匹配法选出特征相似的平衡组。平衡组之间医疗支出(总医疗支出、药品支出和抗生素支出)和住院天数的比较被计算为 HAIs 造成的额外直接经济疾病负担指标。这一框架不仅可以作为医院管理和政策制定的工具,还可以作为实施有针对性的感染预防和控制措施的工具。此外,该框架还可应用于地方、地区、国家和国际层面的各种医疗环境,以确定高风险领域、优化资源分配、改善医院管理和治理以及组织间学习。同时也提出了实施该框架所面临的挑战,如数据质量、监管合规性、传染病和其他疾病的独特性考虑以及专业人员培训需求等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a framework for identifying risk factors and estimating direct economic disease burden attributable to healthcare-associated infections: a case study of a Chinese Tuberculosis hospital.

Healthcare-associated infections (HAIs) represent a major global health burden, which necessitate effective frameworks to identify potential risk factors and estimate the corresponding direct economic disease burden. In this article, we proposed a framework designed to address these needs through a case study conducted in a Tuberculosis (TB) hospital in Hubei Province, China, using data from 2018 to 2019. A comprehensive multistep procedure was developed, including ethical application, participant inclusion, risk factor identification, and direct economic disease burden estimation. In the case study, ethical approval was obtained, and patient data were anonymized to ensure privacy. All TB hospitalized patients over the study period were included and classified into groups with and without HAIs after screening the inclusion and exclusion criteria. Key risk factors, including gender, age, and invasive procedure were identified through univariate and multivariate analyses. Then, propensity score matching was employed to select the balanced groups with similar characteristics. Comparisons of medical expenditures (total medical expenditure, medicine expenditure, and antibiotics expenditure) and hospitalization days between the balanced groups were calculated as the additional direct economic disease burden measures caused by HAIs. This framework can serve as a tool for not only hospital management and policy-making, but also implementation of targeted infection prevention and control measures. Moreover, it has the potential to be applied in various healthcare settings at local, regional, national, and international levels to identify high-risk areas, optimize resource allocation, and improve hospital management and governance, as well as inter-organizational learning. Challenges to implement the framework are also raised, such as data quality, regulatory compliance, considerations on unique nature of communicable diseases and other diseases, and training need for professionals.

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来源期刊
Global Health Research and Policy
Global Health Research and Policy Social Sciences-Health (social science)
CiteScore
12.00
自引率
1.10%
发文量
43
审稿时长
5 weeks
期刊介绍: Global Health Research and Policy, an open-access, multidisciplinary journal, publishes research on various aspects of global health, addressing topics like health equity, health systems and policy, social determinants of health, disease burden, population health, and other urgent global health issues. It serves as a forum for high-quality research focused on regional and global health improvement, emphasizing solutions for health equity.
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