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一种评估亚洲人群抗生素耐药性获得风险的 One-Health 定量模型:通过食物、水、牲畜和人类接触的暴露影响。

A One-Health Quantitative Model to Assess the Risk of Antibiotic Resistance Acquisition in Asian Populations: Impact of Exposure Through Food, Water, Livestock and Humans.

机构信息

Institut Pasteur, Epidemiology and Modelling of Antibiotic Evasion (EMAE), Paris, France.

UVSQ, Inserm, CESP, Anti-infective evasion and pharmacoepidemiology team, Université Paris-Saclay, Montigny-Le-Bretonneux, France.

出版信息

Risk Anal. 2021 Aug;41(8):1427-1446. doi: 10.1111/risa.13618. Epub 2020 Oct 30.

DOI:10.1111/risa.13618
PMID:33128307
Abstract

Antimicrobial resistance (AMR) has become a major threat worldwide, especially in countries with inadequate sanitation and low antibiotic regulation. However, adequately prioritizing AMR interventions in such settings requires a quantification of the relative impacts of environmental, animal, and human sources in a One-Health perspective. Here, we propose a stochastic quantitative risk assessment model for the different components at interplay in AMR selection and spread. The model computes the incidence of AMR colonization in humans from five different sources: water or food consumption, contacts with livestock, and interhuman contacts in hospitals or the community, and combines these incidences into a per-year acquisition risk. Using data from the literature and Monte-Carlo simulations, we apply the model to hypothetical Asian-like settings, focusing on resistant bacteria that may cause infections in humans. In both scenarios A, illustrative of low-income countries, and B, illustrative of high-income countries, the overall individual risk of becoming colonized with resistant bacteria at least once per year is high. However, the average predicted incidence of colonization was lower in scenario B at 0.82 (CrI [0.13, 5.1]) acquisitions/person/year, versus 1.69 (CrI [0.66, 11.13]) acquisitions/person/year for scenario A. A high percentage of population with no access to improved water on premises and a high percentage of population involved in husbandry are shown to strongly increase the AMR acquisition risk. The One-Health AMR risk assessment framework we developed may prove useful to policymakers throughout Asia, as it can easily be parameterized to realistically reproduce conditions in a given country, provided data are available.

摘要

抗微生物药物耐药性(AMR)已成为全球范围内的主要威胁,尤其是在卫生条件不足且抗生素管理水平较低的国家。然而,要在这种情况下充分优先考虑 AMR 干预措施,就需要从“同一健康”的角度量化环境、动物和人类来源的相对影响。在这里,我们提出了一种随机定量风险评估模型,用于分析 AMR 选择和传播中相互作用的不同因素。该模型计算了人类从五个不同来源接触 AMR 定植的发生率:水或食物摄入、与牲畜接触、医院或社区中的人际接触,并将这些发生率结合起来形成每年获得的风险。使用来自文献和蒙特卡罗模拟的数据,我们将模型应用于假设的亚洲环境中,重点关注可能导致人类感染的耐药细菌。在代表低收入国家的情景 A 和代表高收入国家的情景 B 中,每年至少发生一次耐药菌定植的个体总风险均较高。然而,在情景 B 中,预计平均定植率较低,为 0.82(CrI [0.13, 5.1])次/人/年,而情景 A 为 1.69(CrI [0.66, 11.13])次/人/年。无安全饮用水供应和大量人口从事畜牧业的情况被证明会极大地增加 AMR 获得风险。我们开发的“同一健康”AMR 风险评估框架可能对整个亚洲的决策者有用,因为只要提供数据,它就可以轻松地进行参数化,以真实地再现给定国家的情况。

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