Department of Statistics, Iowa State University, Ames, United States of America.
Department of Veterinary Diagnostic and Production Animal Medicine, Iowa State University, Ames, United States of America.
BMC Med Res Methodol. 2021 Sep 20;21(1):186. doi: 10.1186/s12874-021-01384-w.
The emergence of antimicrobial resistance across populations is a global threat to public health. Surveillance programs often monitor human and animal populations to evaluate trends of emergence in these populations. Many national level antibiotic resistance surveillance programs quantify the proportion of resistant bacteria as a means of monitoring emergence and control measures. The reason for monitoring these different populations are many, including interest in similar changes in resistance which might provide insight into emergence and control options.
In this research, we developed a method to quantify the correlation in antimicrobial resistance across populations, for the conventionally unnoticed mean shift of the susceptible bacteria. With the proposed Bayesian latent class mixture model with censoring and multivariate normal hierarchy, we address several challenges associated with analyzing the minimum inhibitory concentration data.
Application of this approach to the surveillance data from National Antimicrobial Resistance Monitoring System led to a detection of positive correlation in the central tendency of azithromycin resistance of the susceptible populations from Salmonella serotype Typhimurium across food animal and human populations.
Our proposed approach has been shown to be accurate and superior to the commonly used naïve estimation by simulation studies. Further implementation of this Bayesian model could serve as a useful tool to indicate the co-existence of antimicrobial resistance, and potentially a need of clinical intervention.
抗菌药物耐药性在人群中的出现是对全球公共卫生的一个威胁。监测计划通常监测人类和动物群体,以评估这些群体中出现的趋势。许多国家层面的抗生素耐药性监测计划将耐药细菌的比例量化,作为监测出现和控制措施的一种手段。监测这些不同群体的原因有很多,包括对耐药性相似变化的兴趣,这可能为出现和控制选择提供见解。
在这项研究中,我们开发了一种方法来量化人群之间抗菌药物耐药性的相关性,用于检测易感细菌的常规未被注意到的均值偏移。通过提出的具有删失和多元正态层次结构的贝叶斯潜在类别混合模型,我们解决了与分析最小抑菌浓度数据相关的几个挑战。
将该方法应用于国家抗菌药物耐药性监测系统的监测数据,导致在食源性动物和人群中沙门氏菌 Typhimurium 血清型的敏感人群中,阿奇霉素耐药性的中心趋势存在正相关。
通过模拟研究,我们证明了所提出的方法具有准确性和优于常用的简单估计方法。进一步实施这种贝叶斯模型可以作为一种有用的工具,表明抗菌药物耐药性的共存,以及潜在的临床干预需求。