Association of health, nutrition, and socioeconomic variables with global antimicrobial resistance: a modelling study

IF 24.1 1区 医学 Q1 ENVIRONMENTAL SCIENCES
Patrick Murigu Kamau Njage PhD , Bram van Bunnik PhD , Patrick Munk PhD , Ana Rita Pinheiro Marques PhD , Prof Frank M Aarestrup PhD
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引用次数: 0

Abstract

Background

Although antimicrobial use is a key selector for antimicrobial resistance, recent studies have suggested that the ecological context in which antimicrobials are used might provide important factors for the prediction of the emergence and spread of antimicrobial resistance.

Methods

We used 1547 variables from the World Bank dataset consisting of socioeconomic, developmental, health, and nutritional indicators; data from a global sewage-based study on antimicrobial resistance (abundance of antimicrobial resistance genes [ARGs]); and data on antimicrobial usage computed from the ECDC database and the IQVIA database. We characterised and built models predicting the global resistome at an antimicrobial class level. We used a generalised linear mixed-effects model to estimate the association between antimicrobial usage and ARG abundance in the sewage samples; a multivariate random forest model to build predictive models for each antimicrobial resistance class and to select the most important variables for ARG abundance; logistic regression models to test the association between the predicted country-level antimicrobial resistance abundance and the country-level proportion of clinical resistant bacterial isolates; finite mixture models to investigate geographical heterogeneities in the abundance of ARGs; and multivariate finite mixture models with covariates to investigate the effect of heterogeneity in the association between the most important variables and the observed ARG abundance across the different country subgroups. We compared our predictions with available clinical phenotypic data from the SENTRY Antimicrobial Surveillance Program from eight antimicrobial classes and 12 genera from 56 countries.

Findings

Using antimicrobial use data from between Jan 1, 2016, and Dec 31, 2019, we found that antimicrobial usage was not significantly associated with the global ARG abundance in sewage (p=0·72; incidence rate ratio 1·02 [95% CI 0·92–1·13]), whereas country-specific World Bank's variables explained a large amount of variation. The importance of the World Bank variables differed between antimicrobial classes and countries. Generally, the estimated global ARG abundance was positively associated with the prevalence of clinical phenotypic resistance, with a strong association for bacterial groups in the human gut. The associations between bacterial groups and ARG abundance were positive and significantly different from zero for the aminoglycosides (three of the four of the taxa tested), β-lactam (all the six microbial groups), fluoroquinolones (seven of nine of the microbial groups), glycopeptide (one microbial group tested), folate pathway antagonists (four of five microbial groups), and tetracycline (two of nine microbial groups).

Interpretation

Metagenomic analysis of sewage is a robust approach for the surveillance of antimicrobial resistance in pathogens, especially for bacterial groups associated with the human gut. Additional studies on the associations between important socioeconomic, nutritional, and health factors and antimicrobial resistance should consider the variation in these associations between countries and antimicrobial classes.

Funding

EU Horizon 2020 and Novo Nordisk Foundation.

健康、营养和社会经济变量与全球抗微生物耐药性的关系:一项模型研究。
背景:尽管抗菌药物的使用是抗菌药物耐药性的关键选择因素,但最近的研究表明,使用抗菌药物的生态环境可能为预测抗菌药物耐药性出现和传播提供重要因素。方法:我们使用了世界银行数据集中的1547个变量,包括社会经济、发展、健康和营养指标;来自一项基于污水的全球抗微生物耐药性研究的数据(抗微生物耐药性基因的丰度[ARGs]);以及从ECDC数据库和IQVIA数据库计算的抗微生物剂使用的数据。我们在抗微生物类别水平上描述并建立了预测全球耐药性的模型。我们使用广义线性混合效应模型来估计污水样本中抗菌药物使用与ARG丰度之间的关系;多元随机森林模型,用于建立每个抗微生物耐药性类别的预测模型,并选择ARG丰度的最重要变量;检验预测的国家级抗菌药物耐药性丰度与国家级临床耐药菌株比例之间相关性的逻辑回归模型;研究ARGs丰度的地理异质性的有限混合模型;以及具有协变量的多元有限混合模型,以研究不同国家亚组中最重要变量与观察到的ARG丰度之间相关性的异质性影响。我们将我们的预测与SENTRY抗菌药物监测计划的可用临床表型数据进行了比较,这些数据来自56个国家的8个抗菌类别和12个属。研究结果:使用2016年1月1日至2019年12月31日期间的抗菌药物使用数据,我们发现抗菌药物的使用与全球污水中ARG的丰度没有显著相关性(p=0.72;发病率比1.02[95%CI 0.92-1.13]),而世界银行针对具体国家的变量解释了大量变化。世界银行变量的重要性因抗菌药物类别和国家而异。一般来说,估计的全球ARG丰度与临床表型耐药性的流行率呈正相关,与人类肠道中的细菌群有很强的相关性。细菌群与ARG丰度之间的相关性是阳性的,氨基糖苷类(测试的四个分类群中的三个)、β-内酰胺类(所有六个微生物群)、氟喹诺酮类(九个微生物群中的七个)、糖肽类(一个测试的微生物群),和四环素(九个微生物群中的两个)。解释:污水的宏基因组分析是监测病原体抗微生物耐药性的有力方法,尤其是对与人类肠道相关的细菌群。关于重要的社会经济、营养和健康因素与抗菌药物耐药性之间关系的其他研究应考虑国家和抗菌药物类别之间这些关系的差异。资助:欧盟地平线2020和诺和诺德基金会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
28.40
自引率
2.30%
发文量
272
审稿时长
8 weeks
期刊介绍: The Lancet Planetary Health is a gold Open Access journal dedicated to investigating and addressing the multifaceted determinants of healthy human civilizations and their impact on natural systems. Positioned as a key player in sustainable development, the journal covers a broad, interdisciplinary scope, encompassing areas such as poverty, nutrition, gender equity, water and sanitation, energy, economic growth, industrialization, inequality, urbanization, human consumption and production, climate change, ocean health, land use, peace, and justice. With a commitment to publishing high-quality research, comment, and correspondence, it aims to be the leading journal for sustainable development in the face of unprecedented dangers and threats.
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